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Image analysis demos for Coiled benchmarking
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{
"cells": [
{
"cell_type": "markdown",
"id": "1e08db74-6832-4ba3-a2d2-c46d5e7099e8",
"metadata": {},
"source": [
"# Red flour beetle"
]
},
{
"cell_type": "markdown",
"id": "3ddb30af-7046-4b51-98b7-c752d38dc2ff",
"metadata": {},
"source": [
"## Dataset\n",
"\n",
"From the Cell Tracking Challenge: http://celltrackingchallenge.net/3d-datasets/\n",
"\n",
"### Developing Tribolium Castaneum embryo\n",
"\n",
"Dr. A. Jain. Max Planck Institute of Molecular Cell Biology and Genetics, Dresden, Germany\n",
"\n",
"* Training dataset: http://data.celltrackingchallenge.net/training-datasets/Fluo-N3DL-TRIF.zip (320 GB)\n",
"* Challenge dataset: http://data.celltrackingchallenge.net/challenge-datasets/Fluo-N3DL-TRIF.zip (467 GB)\n",
"\n",
"### Details\n",
"* Microscope: Zeiss LightSheet LZ.1\n",
"* Objective lens: Plan-Apochromat 20x/1.0 (water)\n",
"* Voxel size (microns): 0.38 x 0.38 x 0.38\n",
"* Time step (min): 1.5\n",
"\n",
"### Important note\n",
"Only the lineages of cells in the blastoderm of the beetle, which are at the border of the embryonic and extra embryonic tissues will be used for the evaluation of the detection, segmentation, and tracking accuracy. Those cells can be identified in the first frame of the provided gold reference tracking annotation. Be aware that any other cells segmented and tracked will be considered as errors by the evaluation software used for the Cell Tracking Benchmark. By contrast, all extra cells detected and segmented will automatically be filtered out by the evaluation software used for the Cell Segmentation Benchmark, and thus will not be penalized at all. Note that the image data was acquired using a light-sheet microscope and fused from multiple viewpoints. Some views may not be registered perfectly (resulting in display of clearly false, outstanding nuclei) or the views altogether do not have to cover the full volume (resulting in an artificial localized dark patch that stretches along one image axis). The cells to be tracked were chosen so that their lineages avoid the regions containing these artifacts.\n"
]
},
{
"cell_type": "markdown",
"id": "4d80a3cc-9219-45ac-9116-d3b84aff90c3",
"metadata": {},
"source": [
"## Imports "
]
},
{
"cell_type": "code",
"execution_count": 104,
"id": "83f986eb-540f-45c8-a05d-6bfeaad0a094",
"metadata": {},
"outputs": [],
"source": [
"import os"
]
},
{
"cell_type": "code",
"execution_count": 105,
"id": "1f7a2c00-4fd3-44fb-8d98-4892375b0ba0",
"metadata": {},
"outputs": [],
"source": [
"import dask.array as da\n",
"import numpy as np"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "663fdd93-5fad-4b37-907b-198b7355965a",
"metadata": {},
"outputs": [],
"source": [
"from dask_image.ndfilters import median_filter\n",
"import scipy.ndimage as ndi\n",
"from skimage.segmentation import watershed\n",
"from skimage.util import invert"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "67f49e75-3c49-45b7-a61b-2f22edfc3d3c",
"metadata": {},
"outputs": [],
"source": [
"import napari\n",
"from napari.utils import nbscreenshot"
]
},
{
"cell_type": "code",
"execution_count": 108,
"id": "f2ce28ad-1a4c-4771-ac16-8569745ea511",
"metadata": {},
"outputs": [],
"source": [
"import matplotlib.pyplot as plt\n",
"\n",
"%matplotlib inline"
]
},
{
"cell_type": "markdown",
"id": "252b1969-749c-403e-8447-cd0e04678ad6",
"metadata": {
"tags": []
},
"source": [
"## Dask dashboard"
]
},
{
"cell_type": "code",
"execution_count": 109,
"id": "d5f4cfb9-3d12-4e0b-b777-1211be65134d",
"metadata": {},
"outputs": [
{
"name": "stderr",
"output_type": "stream",
"text": [
"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\node.py:182: UserWarning: Port 8787 is already in use.\n",
"Perhaps you already have a cluster running?\n",
"Hosting the HTTP server on port 52563 instead\n",
" warnings.warn(\n"
]
},
{
"data": {
"text/html": [
"<div>\n",
" <div style=\"width: 24px; height: 24px; background-color: #e1e1e1; border: 3px solid #9D9D9D; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <h3 style=\"margin-bottom: 0px;\">Client</h3>\n",
" <p style=\"color: #9D9D9D; margin-bottom: 0px;\">Client-f63c910f-ddbf-11ed-9494-f46b8c6804e1</p>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
"\n",
" <tr>\n",
" \n",
" <td style=\"text-align: left;\"><strong>Connection method:</strong> Cluster object</td>\n",
" <td style=\"text-align: left;\"><strong>Cluster type:</strong> distributed.LocalCluster</td>\n",
" \n",
" </tr>\n",
"\n",
" \n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52563/status\" target=\"_blank\">http://127.0.0.1:52563/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" \n",
"\n",
" </table>\n",
"\n",
" \n",
" <button style=\"margin-bottom: 12px;\" data-commandlinker-command=\"dask:populate-and-launch-layout\" data-commandlinker-args='{\"url\": \"http://127.0.0.1:52563/status\" }'>\n",
" Launch dashboard in JupyterLab\n",
" </button>\n",
" \n",
"\n",
" \n",
" <details>\n",
" <summary style=\"margin-bottom: 20px;\"><h3 style=\"display: inline;\">Cluster Info</h3></summary>\n",
" <div class=\"jp-RenderedHTMLCommon jp-RenderedHTML jp-mod-trusted jp-OutputArea-output\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #e1e1e1; border: 3px solid #9D9D9D; border-radius: 5px; position: absolute;\">\n",
" </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <h3 style=\"margin-bottom: 0px; margin-top: 0px;\">LocalCluster</h3>\n",
" <p style=\"color: #9D9D9D; margin-bottom: 0px;\">31802628</p>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard:</strong> <a href=\"http://127.0.0.1:52563/status\" target=\"_blank\">http://127.0.0.1:52563/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Workers:</strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads:</strong> 64\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total memory:</strong> 511.63 GiB\n",
" </td>\n",
" </tr>\n",
" \n",
" <tr>\n",
" <td style=\"text-align: left;\"><strong>Status:</strong> running</td>\n",
" <td style=\"text-align: left;\"><strong>Using processes:</strong> True</td>\n",
"</tr>\n",
"\n",
" \n",
" </table>\n",
"\n",
" <details>\n",
" <summary style=\"margin-bottom: 20px;\">\n",
" <h3 style=\"display: inline;\">Scheduler Info</h3>\n",
" </summary>\n",
"\n",
" <div style=\"\">\n",
" <div>\n",
" <div style=\"width: 24px; height: 24px; background-color: #FFF7E5; border: 3px solid #FF6132; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <h3 style=\"margin-bottom: 0px;\">Scheduler</h3>\n",
" <p style=\"color: #9D9D9D; margin-bottom: 0px;\">Scheduler-21f8ec74-f877-44b5-ab7d-f4049efc327e</p>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm:</strong> tcp://127.0.0.1:52564\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Workers:</strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard:</strong> <a href=\"http://127.0.0.1:52563/status\" target=\"_blank\">http://127.0.0.1:52563/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads:</strong> 64\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Started:</strong> Just now\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total memory:</strong> 511.63 GiB\n",
" </td>\n",
" </tr>\n",
" </table>\n",
" </div>\n",
" </div>\n",
"\n",
" <details style=\"margin-left: 48px;\">\n",
" <summary style=\"margin-bottom: 20px;\">\n",
" <h3 style=\"display: inline;\">Workers</h3>\n",
" </summary>\n",
"\n",
" \n",
" <div style=\"margin-bottom: 20px;\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #DBF5FF; border: 3px solid #4CC9FF; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <details>\n",
" <summary>\n",
" <h4 style=\"margin-bottom: 0px; display: inline;\">Worker: 0</h4>\n",
" </summary>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm: </strong> tcp://127.0.0.1:52621\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads: </strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52622/status\" target=\"_blank\">http://127.0.0.1:52622/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Memory: </strong> 63.95 GiB\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Nanny: </strong> tcp://127.0.0.1:52567\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" <tr>\n",
" <td colspan=\"2\" style=\"text-align: left;\">\n",
" <strong>Local directory: </strong> C:\\Users\\SUPERV~1\\AppData\\Local\\Temp\\dask-worker-space\\worker-w4foad36\n",
" </td>\n",
" </tr>\n",
"\n",
" \n",
"\n",
" \n",
"\n",
" </table>\n",
" </details>\n",
" </div>\n",
" </div>\n",
" \n",
" <div style=\"margin-bottom: 20px;\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #DBF5FF; border: 3px solid #4CC9FF; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <details>\n",
" <summary>\n",
" <h4 style=\"margin-bottom: 0px; display: inline;\">Worker: 1</h4>\n",
" </summary>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm: </strong> tcp://127.0.0.1:52601\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads: </strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52609/status\" target=\"_blank\">http://127.0.0.1:52609/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Memory: </strong> 63.95 GiB\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Nanny: </strong> tcp://127.0.0.1:52568\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" <tr>\n",
" <td colspan=\"2\" style=\"text-align: left;\">\n",
" <strong>Local directory: </strong> C:\\Users\\SUPERV~1\\AppData\\Local\\Temp\\dask-worker-space\\worker-e4lydn0z\n",
" </td>\n",
" </tr>\n",
"\n",
" \n",
"\n",
" \n",
"\n",
" </table>\n",
" </details>\n",
" </div>\n",
" </div>\n",
" \n",
" <div style=\"margin-bottom: 20px;\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #DBF5FF; border: 3px solid #4CC9FF; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <details>\n",
" <summary>\n",
" <h4 style=\"margin-bottom: 0px; display: inline;\">Worker: 2</h4>\n",
" </summary>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm: </strong> tcp://127.0.0.1:52602\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads: </strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52611/status\" target=\"_blank\">http://127.0.0.1:52611/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Memory: </strong> 63.95 GiB\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Nanny: </strong> tcp://127.0.0.1:52569\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" <tr>\n",
" <td colspan=\"2\" style=\"text-align: left;\">\n",
" <strong>Local directory: </strong> C:\\Users\\SUPERV~1\\AppData\\Local\\Temp\\dask-worker-space\\worker-e75vjtlp\n",
" </td>\n",
" </tr>\n",
"\n",
" \n",
"\n",
" \n",
"\n",
" </table>\n",
" </details>\n",
" </div>\n",
" </div>\n",
" \n",
" <div style=\"margin-bottom: 20px;\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #DBF5FF; border: 3px solid #4CC9FF; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <details>\n",
" <summary>\n",
" <h4 style=\"margin-bottom: 0px; display: inline;\">Worker: 3</h4>\n",
" </summary>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm: </strong> tcp://127.0.0.1:52605\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads: </strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52617/status\" target=\"_blank\">http://127.0.0.1:52617/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Memory: </strong> 63.95 GiB\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Nanny: </strong> tcp://127.0.0.1:52570\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" <tr>\n",
" <td colspan=\"2\" style=\"text-align: left;\">\n",
" <strong>Local directory: </strong> C:\\Users\\SUPERV~1\\AppData\\Local\\Temp\\dask-worker-space\\worker-aeik5lm6\n",
" </td>\n",
" </tr>\n",
"\n",
" \n",
"\n",
" \n",
"\n",
" </table>\n",
" </details>\n",
" </div>\n",
" </div>\n",
" \n",
" <div style=\"margin-bottom: 20px;\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #DBF5FF; border: 3px solid #4CC9FF; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <details>\n",
" <summary>\n",
" <h4 style=\"margin-bottom: 0px; display: inline;\">Worker: 4</h4>\n",
" </summary>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm: </strong> tcp://127.0.0.1:52604\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads: </strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52615/status\" target=\"_blank\">http://127.0.0.1:52615/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Memory: </strong> 63.95 GiB\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Nanny: </strong> tcp://127.0.0.1:52571\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" <tr>\n",
" <td colspan=\"2\" style=\"text-align: left;\">\n",
" <strong>Local directory: </strong> C:\\Users\\SUPERV~1\\AppData\\Local\\Temp\\dask-worker-space\\worker-m2e9el5d\n",
" </td>\n",
" </tr>\n",
"\n",
" \n",
"\n",
" \n",
"\n",
" </table>\n",
" </details>\n",
" </div>\n",
" </div>\n",
" \n",
" <div style=\"margin-bottom: 20px;\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #DBF5FF; border: 3px solid #4CC9FF; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <details>\n",
" <summary>\n",
" <h4 style=\"margin-bottom: 0px; display: inline;\">Worker: 5</h4>\n",
" </summary>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm: </strong> tcp://127.0.0.1:52608\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads: </strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52619/status\" target=\"_blank\">http://127.0.0.1:52619/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Memory: </strong> 63.95 GiB\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Nanny: </strong> tcp://127.0.0.1:52572\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" <tr>\n",
" <td colspan=\"2\" style=\"text-align: left;\">\n",
" <strong>Local directory: </strong> C:\\Users\\SUPERV~1\\AppData\\Local\\Temp\\dask-worker-space\\worker-kmif1toe\n",
" </td>\n",
" </tr>\n",
"\n",
" \n",
"\n",
" \n",
"\n",
" </table>\n",
" </details>\n",
" </div>\n",
" </div>\n",
" \n",
" <div style=\"margin-bottom: 20px;\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #DBF5FF; border: 3px solid #4CC9FF; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <details>\n",
" <summary>\n",
" <h4 style=\"margin-bottom: 0px; display: inline;\">Worker: 6</h4>\n",
" </summary>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm: </strong> tcp://127.0.0.1:52603\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads: </strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52613/status\" target=\"_blank\">http://127.0.0.1:52613/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Memory: </strong> 63.95 GiB\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Nanny: </strong> tcp://127.0.0.1:52573\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" <tr>\n",
" <td colspan=\"2\" style=\"text-align: left;\">\n",
" <strong>Local directory: </strong> C:\\Users\\SUPERV~1\\AppData\\Local\\Temp\\dask-worker-space\\worker-4pl7wle8\n",
" </td>\n",
" </tr>\n",
"\n",
" \n",
"\n",
" \n",
"\n",
" </table>\n",
" </details>\n",
" </div>\n",
" </div>\n",
" \n",
" <div style=\"margin-bottom: 20px;\">\n",
" <div style=\"width: 24px; height: 24px; background-color: #DBF5FF; border: 3px solid #4CC9FF; border-radius: 5px; position: absolute;\"> </div>\n",
" <div style=\"margin-left: 48px;\">\n",
" <details>\n",
" <summary>\n",
" <h4 style=\"margin-bottom: 0px; display: inline;\">Worker: 7</h4>\n",
" </summary>\n",
" <table style=\"width: 100%; text-align: left;\">\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Comm: </strong> tcp://127.0.0.1:52600\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Total threads: </strong> 8\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Dashboard: </strong> <a href=\"http://127.0.0.1:52606/status\" target=\"_blank\">http://127.0.0.1:52606/status</a>\n",
" </td>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Memory: </strong> 63.95 GiB\n",
" </td>\n",
" </tr>\n",
" <tr>\n",
" <td style=\"text-align: left;\">\n",
" <strong>Nanny: </strong> tcp://127.0.0.1:52574\n",
" </td>\n",
" <td style=\"text-align: left;\"></td>\n",
" </tr>\n",
" <tr>\n",
" <td colspan=\"2\" style=\"text-align: left;\">\n",
" <strong>Local directory: </strong> C:\\Users\\SUPERV~1\\AppData\\Local\\Temp\\dask-worker-space\\worker-as0b85zp\n",
" </td>\n",
" </tr>\n",
"\n",
" \n",
"\n",
" \n",
"\n",
" </table>\n",
" </details>\n",
" </div>\n",
" </div>\n",
" \n",
"\n",
" </details>\n",
"</div>\n",
"\n",
" </details>\n",
" </div>\n",
"</div>\n",
" </details>\n",
" \n",
"\n",
" </div>\n",
"</div>"
],
"text/plain": [
"<Client: 'tcp://127.0.0.1:52564' processes=8 threads=64, memory=511.63 GiB>"
]
},
"execution_count": 109,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"from dask.distributed import Client\n",
"\n",
"client = Client()\n",
"client"
]
},
{
"cell_type": "markdown",
"id": "bcda0ab7-1a93-4494-824e-7c65b6e5aab8",
"metadata": {
"tags": []
},
"source": [
"## Load dataset"
]
},
{
"cell_type": "markdown",
"id": "7e0a81d0-225c-4630-93da-a55c29651907",
"metadata": {},
"source": [
"Juan was nice enough to give me a copy of this dataset he had already converted to (multiscale) zarr.\n",
"\n",
"You'll have to download the zip data (it's several folders full of tiffs). \n",
"Using either `dask.array.image.imread` or `dask_image.imread.imread` will let you load the tiff images into a single Dask array. You may find that converting this to zarr improves performance. Either way, you'll probably also need somewhere convenient to store the dataset so you can run the benchmarks."
]
},
{
"cell_type": "code",
"execution_count": 110,
"id": "637610a4-287a-4c63-b6f6-d9dde7dec3e9",
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"['.DS_Store', '._.DS_Store', '.zattrs', '.zgroup', '0', '1', '2']\n"
]
}
],
"source": [
"zarr_directory = r\"G:\\Fluo-N3DL-TRIF-01.ome.zarr\"\n",
"assert os.path.exists(zarr_directory)\n",
"zarr_contents = os.listdir(zarr_directory)\n",
"assert '.zattrs' in zarr_contents\n",
"assert '.zgroup' in zarr_contents\n",
"print(zarr_contents)"
]
},
{
"cell_type": "code",
"execution_count": 111,
"id": "359477cf-e828-490b-85a8-50b753ce65f8",
"metadata": {},
"outputs": [],
"source": [
"highest_resolution = os.path.join(zarr_directory, '0')\n",
"medium_resolution = os.path.join(zarr_directory, '1')\n",
"lowest_resolution = os.path.join(zarr_directory, '2')\n",
"\n",
"assert os.path.exists(highest_resolution)\n",
"assert os.path.exists(medium_resolution)\n",
"assert os.path.exists(lowest_resolution)"
]
},
{
"cell_type": "code",
"execution_count": 112,
"id": "a69fcce8-8515-40f7-92ef-acc03fe98b43",
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"dask.array<from-zarr, shape=(60, 988, 1868, 964), dtype=uint16, chunksize=(1, 64, 512, 512), chunktype=numpy.ndarray>\n"
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"source": [
"highres_data = da.from_zarr(highest_resolution)\n",
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},
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"execution_count": 13,
"metadata": {},
"output_type": "execute_result"
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],
"source": [
"mediumres_data = da.from_zarr(medium_resolution)\n",
"print(mediumres_data)\n",
"mediumres_data"
]
},
{
"cell_type": "code",
"execution_count": 14,
"id": "9b8aa8a0-d24e-44bb-a084-176cb889cc40",
"metadata": {},
"outputs": [
{
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"output_type": "stream",
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"text/plain": [
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]
},
"execution_count": 14,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"lowres_data = da.from_zarr(lowest_resolution)\n",
"print(lowres_data)\n",
"lowres_data"
]
},
{
"cell_type": "markdown",
"id": "ea615600-4dcc-417e-954e-efbf6f2b0760",
"metadata": {},
"source": [
"## Image processing"
]
},
{
"cell_type": "markdown",
"id": "3f8199d0-d07f-43da-bcf4-a56bedb500b9",
"metadata": {},
"source": [
"### Filter images"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "7a1c55ca-0e02-47ed-8004-26e7b3f30cd2",
"metadata": {},
"outputs": [],
"source": [
"# Filter images\n",
"kernel = (1, 3, 3, 3)\n",
"smoothed = median_filter(lowres_data, kernel)\n",
"smoothed_lowres = median_filter(lowres_data, kernel)\n",
"\n",
"smoothed"
]
},
{
"cell_type": "markdown",
"id": "ae6c6e8f-85ab-432f-ad10-6f0b85dffb53",
"metadata": {},
"source": [
"### Find image threshold for each timepoint"
]
},
{
"cell_type": "markdown",
"id": "0da832dc-c05f-40cd-9704-c286b6cd825f",
"metadata": {},
"source": [
"This bit is kind of a hack.\n",
"\n",
"I want to find the otsu threshold for each timepoint (timepoints are along dimension zero of the array), but each single timepoint might be too big to fit in memory.\n",
"\n",
"So, I tried pulling out the centre z-slice of each timepoint. I'd be in trouble if there was nothing but background image noise in these bits, but in this particular case I know that the sampl is pretty much in the middle of the volume, so I should get non-garbage results out.\n",
"\n",
"But, when I compared it to the threshold for the full volume of a single timepoint, my single slice threshold value was pretty different. That's a bad sign.\n",
"\n",
"So I've gone back, and decided that based on the chunking in the original images, I can probably fit about 100 z slices in memory for the lowest resolution version of the dataset - and that is what I'll use to calculate the threshold per image timepoint. I think that's a reasonable compromise."
]
},
{
"cell_type": "markdown",
"id": "e854df4c-9ebc-4473-8653-4bed4dc6087e",
"metadata": {},
"source": [
"I would always use the lowest resolution dataset to calculate the thresholds. I think it's better to get a wider field of view for this case."
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "cfd5d2ea-8dee-43e4-baaf-f2d0bceed2b4",
"metadata": {},
"outputs": [],
"source": [
"centre_slice = lowres_data.shape[1] // 2\n",
"central_slices = smoothed_lowres[:, centre_slice-50:centre_slice+50, ...]\n",
"central_slices = da.rechunk(central_slices, chunks=[1, 100, data.shape[-2], data.shape[-1]])\n",
"central_slices"
]
},
{
"cell_type": "markdown",
"id": "56ffa589-626d-47f0-9595-38061dc9bf72",
"metadata": {},
"source": [
"To be honest, this next bit is also kind of a trick. I'm using the dask `drop_axis` kwarg here to easily get the threshold for each timepoint without writing a loop.\n",
"\n",
"I don't think this is common knowledge (I certainly didn't know about it before [this blogpost](https://blog.dask.org/2021/07/02/ragged-output)). Will that be a problem for your benchmarks? On the other hand, perhaps more people should know that they can do this, it's kind of handy here.\n"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "8afa5deb-c33d-48c1-9cf4-c4c7d90a73f6",
"metadata": {},
"outputs": [],
"source": [
"# Find threshold for each timepoint\n",
"thresholds = central_slices.map_blocks(threshold_otsu, drop_axis=[1,2,3])\n",
"thresholds"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "ce486e4c-7d62-4a90-9fb6-bbb1365c6a54",
"metadata": {},
"outputs": [],
"source": [
"# expand dims for broadcasting trick in the next part\n",
"thresholds = da.expand_dims(thresholds, axis=[1,2,3])"
]
},
{
"cell_type": "markdown",
"id": "f370764d-1bbf-4fef-9c99-70b657f01787",
"metadata": {},
"source": [
"### Segment the nuclei"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "606eaa24-40a1-449d-b769-f9b2d4f06a20",
"metadata": {},
"outputs": [],
"source": [
"# Segment the nuclei\n",
"mask = smoothed > thresholds\n",
"edt = mask.map_overlap(ndi.distance_transform_edt, depth=(1,50,50,50))\n",
"inverted_edt = edt.map_blocks(invert)"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "c9940670-5740-4709-b1ef-bf4703626805",
"metadata": {},
"outputs": [
{
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"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570139' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570140' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
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"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570142' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570144' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570145' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570146' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570147' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570148' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
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"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
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" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
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" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
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" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570153' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570154' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570155' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570156' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570157' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570158' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570159' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570160' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570162' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570163' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570164' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570165' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570166' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570167' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570168' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570169' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570170' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570171' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570172' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570174' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570175' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570176' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570177' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570178' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570179' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570180' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570181' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570182' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570183' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570184' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570185' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570186' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570187' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570188' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570189' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570190' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570191' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570192' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570193' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570194' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570195' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570196' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570198' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570199' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570201' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570204' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570205' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570207' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570209' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570210' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570212' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570214' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570215' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570216' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570217' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570218' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570219' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570220' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570221' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570222' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570223' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570224' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570225' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570226' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570227' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570228' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570229' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570230' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570231' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570232' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570233' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570235' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570237' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570238' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570239' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570240' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570242' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570243' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570244' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570245' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570246' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570247' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570248' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570250' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570251' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570252' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570253' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570254' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570255' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570256' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"Task exception was never retrieved\n",
"future: <Task finished name='Task-4570258' coro=<Client._gather.<locals>.wait() done, defined at C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:2176> exception=AllExit()>\n",
"Traceback (most recent call last):\n",
" File \"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py\", line 2185, in wait\n",
" raise AllExit()\n",
"distributed.client.AllExit\n",
"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:3095: UserWarning: Sending large graph of size 14.67 MiB.\n",
"This may cause some slowdown.\n",
"Consider scattering data ahead of time and using futures.\n",
" warnings.warn(\n"
]
}
],
"source": [
"# We use a relatively high compactness number for this dataset\n",
"# because we know that the nuclei shape should be pretty spherical/compact\n",
"labels = inverted_edt.map_overlap(watershed,\n",
" depth=(1,50,50,50),\n",
" mask=mask,\n",
" compactness=10,\n",
" )\n",
"print(labels)\n",
"labels"
]
},
{
"cell_type": "markdown",
"id": "228207c7-f423-48f4-9377-b6412458eeca",
"metadata": {},
"source": [
"## View with napari"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "715480ea-7a01-4811-983a-76ead1683f10",
"metadata": {},
"outputs": [],
"source": [
"viewer = napari.Viewer()\n",
"viewer.add_image(data)\n",
"viewer.add_image(smoothed, visible=False)\n",
"viewer.add_labels(mask, visible=False)\n",
"viewer.add_labels(labels)"
]
},
{
"cell_type": "markdown",
"id": "abc4fb00-f334-4326-aa6b-1933841250a6",
"metadata": {},
"source": [
"## Notes\n",
"\n",
"The most interactive parts of this are:\n",
"* picking the right threshold method (I did lots of \n",
"* fiddling with the compactness value, and looking at how that affected the final labels"
]
},
{
"cell_type": "markdown",
"id": "1ddb695c-16d5-417a-92ce-f5a5c374f1ad",
"metadata": {},
"source": [
"## Testing"
]
},
{
"cell_type": "code",
"execution_count": 15,
"id": "78f553c2-80f1-4ab2-8f95-c7dc9634cfd2",
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"123\n"
]
},
{
"data": {
"text/html": [
"<table>\n",
" <tr>\n",
" <td>\n",
" <table style=\"border-collapse: collapse;\">\n",
" <thead>\n",
" <tr>\n",
" <td> </td>\n",
" <th> Array </th>\n",
" <th> Chunk </th>\n",
" </tr>\n",
" </thead>\n",
" <tbody>\n",
" \n",
" <tr>\n",
" <th> Bytes </th>\n",
" <td> 3.11 GiB </td>\n",
" <td> 29.07 MiB </td>\n",
" </tr>\n",
" \n",
" <tr>\n",
" <th> Shape </th>\n",
" <td> (60, 247, 467, 241) </td>\n",
" <td> (1, 247, 256, 241) </td>\n",
" </tr>\n",
" <tr>\n",
" <th> Dask graph </th>\n",
" <td colspan=\"2\"> 120 chunks in 6 graph layers </td>\n",
" </tr>\n",
" <tr>\n",
" <th> Data type </th>\n",
" <td colspan=\"2\"> uint16 numpy.ndarray </td>\n",
" </tr>\n",
" </tbody>\n",
" </table>\n",
" </td>\n",
" <td>\n",
" <svg width=\"367\" height=\"207\" style=\"stroke:rgb(0,0,0);stroke-width:1\" >\n",
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]
},
"execution_count": 15,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"from dask_image.ndfilters import median_filter\n",
"\n",
"data = lowres_data\n",
"centre_slice = data.shape[1] // 2\n",
"print(centre_slice)\n",
"\n",
"kernel = (1, 3, 3, 3)\n",
"smoothed = median_filter(data, kernel)\n",
"smoothed"
]
},
{
"cell_type": "code",
"execution_count": 38,
"id": "868ccb00-321e-4bb6-b096-7ce11b39240a",
"metadata": {},
"outputs": [
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},
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"metadata": {},
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}
],
"source": [
"central_slices = smoothed[:, centre_slice-50:centre_slice+50, ...]\n",
"central_slices = da.rechunk(central_slices, chunks=[1, 100, data.shape[-2], data.shape[-1]])\n",
"central_slices"
]
},
{
"cell_type": "code",
"execution_count": 42,
"id": "1c03635d-573a-432f-8aef-7387aa6cf80e",
"metadata": {},
"outputs": [
{
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"text/plain": [
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]
},
"execution_count": 42,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"from skimage.filters import threshold_otsu\n",
"\n",
"thresholds = central_slices.map_blocks(threshold_otsu, drop_axis=[1,2,3])\n",
"thresholds"
]
},
{
"cell_type": "code",
"execution_count": 43,
"id": "6532cb5e-6799-41d6-ad0a-f92c74a17cd4",
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"[1143 1157 1162 1158 1160 1122 1118 1119 1119 1117 1125 1124 1114 1128\n",
" 1097 1123 1126 1124 1125 1130 1123 1123 1129 1131 1129 1125 1129 1131\n",
" 1132 1128 1129 1128 1125 1128 1126 1126 1125 1124 1125 1103 1121 1120\n",
" 1114 1116 1106 1110 1108 1106 1106 1105 1100 1103 1099 1092 1097 1088\n",
" 1092 1083 1083 1082]\n"
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}
],
"source": [
"computed_thresholds = thresholds.compute()\n",
"print(computed_thresholds)"
]
},
{
"cell_type": "code",
"execution_count": 44,
"id": "097523ed-cbfa-4599-b222-a7b6b696eae7",
"metadata": {},
"outputs": [
{
"data": {
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",
"text/plain": [
"<Figure size 640x480 with 1 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"plt.plot(computed_thresholds)"
]
},
{
"cell_type": "code",
"execution_count": 45,
"id": "1765abb4-6777-4848-9a59-90cb57fc26d6",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"(array([ 3., 1., 2., 2., 2., 3., 4., 1., 4., 5., 13., 11., 4.,\n",
" 0., 0., 1., 0., 0., 1., 3.]),\n",
" array([1082., 1086., 1090., 1094., 1098., 1102., 1106., 1110., 1114.,\n",
" 1118., 1122., 1126., 1130., 1134., 1138., 1142., 1146., 1150.,\n",
" 1154., 1158., 1162.]),\n",
" <BarContainer object of 20 artists>)"
]
},
"execution_count": 45,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": "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",
"text/plain": [
"<Figure size 640x480 with 1 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"plt.hist(computed_thresholds, bins=20)"
]
},
{
"cell_type": "code",
"execution_count": 40,
"id": "bf571f20-03e8-426e-8bfa-311f7d1fd460",
"metadata": {},
"outputs": [],
"source": [
"# single_slice_computed_thresholds = computed_thresholds"
]
},
{
"cell_type": "code",
"execution_count": 20,
"id": "12b4d7de-107e-46e4-ab28-646f8a1f4edb",
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"[1103 1151 1145 1165 1171 1111 1130 1126 1137 1118 1120 1121 1086 1146\n",
" 1089 1153 1139 1169 1161 1146 1125 1144 1156 1146 1121 1122 1123 1150\n",
" 1140 1132 1143 1128 1124 1121 1125 1095 1108 1119 1104 1100 1113 1123\n",
" 1119 1116 1114 1113 1114 1114 1134 1115 1105 1111 1109 1096 1111 1108\n",
" 1122 1106 1097 1095]\n"
]
}
],
"source": [
"# computed_thresholds = thresholds.compute()\n",
"# print(computed_thresholds)"
]
},
{
"cell_type": "code",
"execution_count": 21,
"id": "cbbf145f-d1e6-4c14-a65c-cb5f22deb5a8",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"[<matplotlib.lines.Line2D at 0x26bd1e7dde0>]"
]
},
"execution_count": 21,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": 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",
"text/plain": [
"<Figure size 640x480 with 1 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"# plt.plot(computed_thresholds)"
]
},
{
"cell_type": "code",
"execution_count": 26,
"id": "f6a8f076-0d3f-46d3-bfec-10c78fa82b98",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"(array([2., 0., 4., 1., 4., 6., 6., 4., 9., 4., 2., 1., 3., 3., 3., 3., 1.,\n",
" 1., 1., 2.]),\n",
" array([1086. , 1090.25, 1094.5 , 1098.75, 1103. , 1107.25, 1111.5 ,\n",
" 1115.75, 1120. , 1124.25, 1128.5 , 1132.75, 1137. , 1141.25,\n",
" 1145.5 , 1149.75, 1154. , 1158.25, 1162.5 , 1166.75, 1171. ]),\n",
" <BarContainer object of 20 artists>)"
]
},
"execution_count": 26,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": 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",
"text/plain": [
"<Figure size 640x480 with 1 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"# plt.hist(computed_thresholds, bins=20)"
]
},
{
"cell_type": "markdown",
"id": "b1649f24-a10a-452a-ae95-cf43f29752d7",
"metadata": {},
"source": [
"Let's look at the threshold for a full timepoint (will it crash? We'll find out)"
]
},
{
"cell_type": "code",
"execution_count": 34,
"id": "0aa7502f-c66e-4da0-b9c8-ba754039e4a8",
"metadata": {},
"outputs": [
{
"name": "stderr",
"output_type": "stream",
"text": [
"C:\\Users\\Supervisor\\mambaforge\\envs\\dask\\lib\\site-packages\\distributed\\client.py:3095: UserWarning: Sending large graph of size 13.18 MiB.\n",
"This may cause some slowdown.\n",
"Consider scattering data ahead of time and using futures.\n",
" warnings.warn(\n"
]
},
{
"name": "stdout",
"output_type": "stream",
"text": [
"1071\n"
]
}
],
"source": [
"# single_timepoint = smoothed[30, ...]\n",
"# thresh = threshold_otsu(single_timepoint)\n",
"# print(thresh)"
]
},
{
"cell_type": "code",
"execution_count": 35,
"id": "6ae4dff0-2c8a-47e3-93b9-bcbbbdafa6c1",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"1143"
]
},
"execution_count": 35,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"computed_thresholds[30]"
]
},
{
"attachments": {
"f95fbeb8-73a1-4856-9b0a-549381e894d2.png": {
"image/png": 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}
},
"cell_type": "markdown",
"id": "f4789971-864a-43ea-8f0e-65de2ab7322c",
"metadata": {},
"source": [
"\n",
"Ok yeah, it is horribly inefficient trying to do that. We'll stick with my hack using just a single image slice to find a good image threshold.\n",
"\n",
"![image.png](attachment:f95fbeb8-73a1-4856-9b0a-549381e894d2.png)"
]
},
{
"cell_type": "markdown",
"id": "78dd9a3c-5275-4256-a924-c8961d7b904e",
"metadata": {},
"source": [
"What is more worrying is that the threshold values for a single slice, and for the whole volume are quite different. So we may be compromising quality with this hack.\n",
"\n",
"```python\n",
"threshold_otsu(smoothed[30, ...] # = 1071 (volume at a single timepoint)\n",
"threshold_otsu(smoothed[30,123,...] # = 1143 (single slice from image centre)\n",
"```"
]
},
{
"cell_type": "code",
"execution_count": 46,
"id": "eb373f82-a0ae-4cb7-bc46-8ef95264a768",
"metadata": {},
"outputs": [
{
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"</svg>\n",
" </td>\n",
" </tr>\n",
"</table>"
],
"text/plain": [
"dask.array<gt, shape=(60, 247, 467, 241), dtype=bool, chunksize=(1, 247, 256, 241), chunktype=numpy.ndarray>"
]
},
"execution_count": 46,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"mask = smoothed > np.expand_dims(computed_thresholds, axis=[1,2,3])\n",
"mask"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "096376f0-4f08-4133-9825-b4c55b6950e2",
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": null,
"id": "4a250096-99e6-40ed-a11c-f2ad421e2b72",
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": 59,
"id": "a9ce3264-c78e-405b-821c-c79bc07afc45",
"metadata": {},
"outputs": [
{
"data": {
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",
"text/plain": [
"<Figure size 1000x800 with 8 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"from skimage.filters import try_all_threshold\n",
"\n",
"fig, ax = try_all_threshold(crop[50], figsize=(10, 8), verbose=False)\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": 61,
"id": "752612d0-ab13-402e-ba34-237d912c0cac",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"1129"
]
},
"execution_count": 61,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"threshold_otsu(crop)"
]
},
{
"cell_type": "code",
"execution_count": 63,
"id": "68c833f1-b58a-4185-8c2f-5219e3102e3a",
"metadata": {},
"outputs": [],
"source": [
"\n",
"mask_crop = crop > 1129"
]
},
{
"cell_type": "code",
"execution_count": 65,
"id": "feff20d7-0c82-4a8b-b209-91915ca3d079",
"metadata": {},
"outputs": [],
"source": [
"edt_crop = ndi.distance_transform_edt(mask_crop)\n"
]
},
{
"cell_type": "code",
"execution_count": 64,
"id": "7ab1198b-b968-4904-ab28-dacba811caa0",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<Image layer 'edt_crop' at 0x26ba114c8b0>"
]
},
"execution_count": 64,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"v = napari.Viewer()\n",
"v.add_image(crop)\n",
"v.add_image(edt_crop)\n"
]
},
{
"cell_type": "code",
"execution_count": 66,
"id": "8254f18b-0676-4269-b422-59e97a630bff",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<Image layer 'edt_crop [1]' at 0x26bdd867df0>"
]
},
"execution_count": 66,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"v.add_labels(mask_crop)\n",
"v.add_image(edt_crop)"
]
},
{
"cell_type": "code",
"execution_count": 82,
"id": "791d5833-b0a2-416e-a1c0-3aa3d317a2ea",
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"714\n",
"[[ 48 58 111]\n",
" [ 74 62 133]\n",
" [ 62 62 138]\n",
" ...\n",
" [ 12 432 118]\n",
" [ 90 294 182]\n",
" [ 4 390 114]]\n"
]
}
],
"source": [
"peak_coords = peak_local_max(edt_crop, min_distance=4, labels=mask_crop)\n",
"print(len(peak_coords))\n",
"print(peak_coords)"
]
},
{
"cell_type": "code",
"execution_count": 84,
"id": "3d2bfa92-059c-4f8c-aea0-fe2ccd99ee29",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<Points layer 'peak_coords' at 0x26be1807d30>"
]
},
"execution_count": 84,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"v.add_points(peak_coords, size=2)"
]
},
{
"cell_type": "code",
"execution_count": 95,
"id": "a2572229-72af-43f0-83d4-0d8bcf02e027",
"metadata": {},
"outputs": [],
"source": [
"from skimage.util import invert\n",
"\n",
"labels_crop = watershed(invert(edt_crop), mask=mask_crop, compactness=10)\n"
]
},
{
"cell_type": "code",
"execution_count": 97,
"id": "cb74dcfc-5549-469b-9318-1780659d331b",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<Labels layer 'labels_crop [2]' at 0x26b92b8fb50>"
]
},
"execution_count": 97,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"v.add_labels(labels_crop)"
]
},
{
"cell_type": "code",
"execution_count": 96,
"id": "f5675068-1af0-4714-8c7f-7f7bc4e7cc49",
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"array([ 0, 1, 2, ..., 6997, 6998, 6999])"
]
},
"execution_count": 96,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"np.unique(labels_crop)"
]
},
{
"cell_type": "code",
"execution_count": 100,
"id": "1aa466dd-e2b6-4dc9-8d84-fe3116463953",
"metadata": {},
"outputs": [
{
"data": {
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@GenevieveBuckley
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Here we go, perhaps this will be the fix for the dask problem

https://forum.image.sc/t/doing-watershed-with-large-image/77283/2

use dask.array.map_overlap 2 with scikit-image watershed using watershed_lines=True. This makes sure that each segment is separated from its neighbors by black/background pixels. Where the overlaps end, your segments will be cut by a vertical line, but not by the background.
then, use dask_image.ndmeasure.label 1 to label the connected components. This should unify the segments at the window boundary, but not the ones that are separated by the watershed line.

I don't like having to use watershed_lines=True on the red flour beetle data (the nuclei are packed pretty tightly and they're not that big). But if it's the easiest way to get a result, we might just go with it.

@GenevieveBuckley
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Link to issue discussion: coiled/benchmarks#751

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