TAMMiCol: Tool for analysis of the morphology of microbial colonies.

Many microbes are studied by examining colony morphology via two-dimensional top-down images. The quantification of such images typically requires each pixel to be labelled as belonging to either the colony or background, producing a binary image. While this may be achieved manually for a single col...

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Main Authors: Hayden Tronnolone, Jennifer M Gardner, Joanna F Sundstrom, Vladimir Jiranek, Stephen G Oliver, Benjamin J Binder
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-12-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1006629
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spelling doaj-28270257ca1b45c7872c38ad4f418d052021-04-21T15:43:50ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582018-12-011412e100662910.1371/journal.pcbi.1006629TAMMiCol: Tool for analysis of the morphology of microbial colonies.Hayden TronnoloneJennifer M GardnerJoanna F SundstromVladimir JiranekStephen G OliverBenjamin J BinderMany microbes are studied by examining colony morphology via two-dimensional top-down images. The quantification of such images typically requires each pixel to be labelled as belonging to either the colony or background, producing a binary image. While this may be achieved manually for a single colony, this process is infeasible for large datasets containing thousands of images. The software Tool for Analysis of the Morphology of Microbial Colonies (TAMMiCol) has been developed to efficiently and automatically convert colony images to binary. TAMMiCol exploits the structure of the images to choose a thresholding tolerance and produce a binary image of the colony. The images produced are shown to compare favourably with images processed manually, while TAMMiCol is shown to outperform standard segmentation methods. Multiple images may be imported together for batch processing, while the binary data may be exported as a CSV or MATLAB MAT file for quantification, or analysed using statistics built into the software. Using the in-built statistics, it is found that images produced by TAMMiCol yield values close to those computed from binary images processed manually. Analysis of a new large dataset using TAMMiCol shows that colonies of Saccharomyces cerevisiae reach a maximum level of filamentous growth once the concentration of ammonium sulfate is reduced to 200 μM. TAMMiCol is accessed through a graphical user interface, making it easy to use for those without specialist knowledge of image processing, statistical methods or coding.https://doi.org/10.1371/journal.pcbi.1006629
collection DOAJ
language English
format Article
sources DOAJ
author Hayden Tronnolone
Jennifer M Gardner
Joanna F Sundstrom
Vladimir Jiranek
Stephen G Oliver
Benjamin J Binder
spellingShingle Hayden Tronnolone
Jennifer M Gardner
Joanna F Sundstrom
Vladimir Jiranek
Stephen G Oliver
Benjamin J Binder
TAMMiCol: Tool for analysis of the morphology of microbial colonies.
PLoS Computational Biology
author_facet Hayden Tronnolone
Jennifer M Gardner
Joanna F Sundstrom
Vladimir Jiranek
Stephen G Oliver
Benjamin J Binder
author_sort Hayden Tronnolone
title TAMMiCol: Tool for analysis of the morphology of microbial colonies.
title_short TAMMiCol: Tool for analysis of the morphology of microbial colonies.
title_full TAMMiCol: Tool for analysis of the morphology of microbial colonies.
title_fullStr TAMMiCol: Tool for analysis of the morphology of microbial colonies.
title_full_unstemmed TAMMiCol: Tool for analysis of the morphology of microbial colonies.
title_sort tammicol: tool for analysis of the morphology of microbial colonies.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2018-12-01
description Many microbes are studied by examining colony morphology via two-dimensional top-down images. The quantification of such images typically requires each pixel to be labelled as belonging to either the colony or background, producing a binary image. While this may be achieved manually for a single colony, this process is infeasible for large datasets containing thousands of images. The software Tool for Analysis of the Morphology of Microbial Colonies (TAMMiCol) has been developed to efficiently and automatically convert colony images to binary. TAMMiCol exploits the structure of the images to choose a thresholding tolerance and produce a binary image of the colony. The images produced are shown to compare favourably with images processed manually, while TAMMiCol is shown to outperform standard segmentation methods. Multiple images may be imported together for batch processing, while the binary data may be exported as a CSV or MATLAB MAT file for quantification, or analysed using statistics built into the software. Using the in-built statistics, it is found that images produced by TAMMiCol yield values close to those computed from binary images processed manually. Analysis of a new large dataset using TAMMiCol shows that colonies of Saccharomyces cerevisiae reach a maximum level of filamentous growth once the concentration of ammonium sulfate is reduced to 200 μM. TAMMiCol is accessed through a graphical user interface, making it easy to use for those without specialist knowledge of image processing, statistical methods or coding.
url https://doi.org/10.1371/journal.pcbi.1006629
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