Detailed description of the image analysis workflow, including machine learning model training dataset, for the article: "Phosphate starvation decouples cell differentiation from DNA replication control in the dimorphic bacterium Caulobacter crescentus", Hallgren et al. (2023; PLOS Genetics).
SND-ID: 2023-202. Version: 1. DOI: https://doi.org/10.58141/wfc6-qh32
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Alternative title
Ilastik image analysis pipeline for Caulobacter crescentus
Creator/Principal investigator(s)
Joel Hallgren - Stockholm University, Department of Molecular Biosciences
Research principal
Stockholm University - Department of Molecular Biosciences, The Wenner-Gren Institute (MBW)
Description
This dataset contains a detailed description of the image analysis procedure used in Hallgren et al. (2023; PLOS Genetics) to perform single-cell measurements of the bacterium Caulobacter crescentus. More specifically, the procedure identifies individual C. crescentus cells in phase-contrast microscopy pictures, annotates their cell type, as well as their size and basic morphological features. The procedure can for example be used to quantify the proportion of swarmer cells to stalked cells in a population, to measure the size of cells and their stalks, and to determine the fraction of constricted predivisional cells in a population.
The dataset includes: (1) ilastik project files, (2) custom Python scripts and ImageJ macros used for data processing, (3) settings for batch processing of images with the ImageJ plugin ‘MicrobeJ’, and (4) example data that can be used to run the image analysis pipeline from start to finish. The ilastik project files (.ilp) contain the random forest machine learning models used for their analysis, as well as the training dataset used to generate those models. The
The dataset includes: (1) ilastik project files, (2) custom Python scripts and ImageJ macros used for data processing, (3) settings for batch processing of images with the ImageJ plugin ‘MicrobeJ’, and (4) example data that can be used to run the image analysis pipeline from start to finish. The ilastik project files (.ilp) contain the random forest machine learning models used for their analysis, as well as the training dataset used to generate those models. The README file contains instructions on how to run the image analysis pipeline from start to finish.
Although the machine learning models are trained specifically on images taken using our specific microscopy setup, the information and code present in this dataset can be used to easily set up a corresponding image analysis pipeline for a new laboratory, essentially by training new ilastik models and tweaking the MicrobeJ settings. Show less..
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Data format / data structure
Responsible department/unit
Department of Molecular Biosciences, The Wenner-Gren Institute (MBW)
Research area
Natural sciences (Standard för svensk indelning av forskningsämnen 2011)
Biological sciences (Standard för svensk indelning av forskningsämnen 2011)
Cell biology (Standard för svensk indelning av forskningsämnen 2011)
Microbiology (Standard för svensk indelning av forskningsämnen 2011)
Cell and molecular biology (Standard för svensk indelning av forskningsämnen 2011)
Keywords
Microbiology, Microscopy, Bacterial growth, Bacteria, Heterotrophic bacteria, Bacterial community composition, Image analysis, Optical microscopy, Microbiology, Machine learning, Microscopy, Python (programming languages), Image analysis, Bacteria, Bacteria, Image analysis, Machine learning, Microbiology, Caulobacter, Ilastik, Microbej, Imagej, Caulobacter crescentus
Joel Hallgren, Kira Koonce, Michele Felletti, Julien Mortier, Eloisa Turco, Kristina Jonas (2023) Phosphate starvation decouples cell differentiation from DNA replication control in the dimorphic bacterium Caulobacter crescentus. PLOS Genetics.
Joel Hallgren, Kira Koonce, Michele Felletti, Julien Mortier, Eloisa Turco, Kristina Jonas. Phosphate starvation decouples cell differentiation from DNA replication control in the dimorphic bacterium Caulobacter crescentus. bioRxiv 2023.07.26.550773 [preprint]
DOI:
https://doi.org/10.1101/2023.07.26.550773
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