Shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.

With the ever-increasing quality and quantity of imaging data in biomedical research comes the demand for computational methodologies that enable efficient and reliable automated extraction of the quantitative information contained within these images. One of the challenges in providing such methodo...

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Main Authors: William Pilcher, Xingyu Yang, Anastasia Zhurikhina, Olga Chernaya, Yinghan Xu, Peng Qiu, Denis Tsygankov
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-09-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1007758
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spelling doaj-4c7c03022c484510a614dcdfa24ac4622021-04-21T15:17:35ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582020-09-01169e100775810.1371/journal.pcbi.1007758Shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.William PilcherXingyu YangAnastasia ZhurikhinaOlga ChernayaYinghan XuPeng QiuDenis TsygankovWith the ever-increasing quality and quantity of imaging data in biomedical research comes the demand for computational methodologies that enable efficient and reliable automated extraction of the quantitative information contained within these images. One of the challenges in providing such methodology is the need for tailoring algorithms to the specifics of the data, limiting their areas of application. Here we present a broadly applicable approach to quantification and classification of complex shapes and patterns in biological or other multi-component formations. This approach integrates the mapping of all shape boundaries within an image onto a global information-rich graph and machine learning on the multidimensional measures of the graph. We demonstrated the power of this method by (1) extracting subtle structural differences from visually indistinguishable images in our phenotype rescue experiments using the endothelial tube formations assay, (2) training the algorithm to identify biophysical parameters underlying the formation of different multicellular networks in our simulation model of collective cell behavior, and (3) analyzing the response of U2OS cell cultures to a broad array of small molecule perturbations.https://doi.org/10.1371/journal.pcbi.1007758
collection DOAJ
language English
format Article
sources DOAJ
author William Pilcher
Xingyu Yang
Anastasia Zhurikhina
Olga Chernaya
Yinghan Xu
Peng Qiu
Denis Tsygankov
spellingShingle William Pilcher
Xingyu Yang
Anastasia Zhurikhina
Olga Chernaya
Yinghan Xu
Peng Qiu
Denis Tsygankov
Shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.
PLoS Computational Biology
author_facet William Pilcher
Xingyu Yang
Anastasia Zhurikhina
Olga Chernaya
Yinghan Xu
Peng Qiu
Denis Tsygankov
author_sort William Pilcher
title Shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.
title_short Shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.
title_full Shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.
title_fullStr Shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.
title_full_unstemmed Shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.
title_sort shape-to-graph mapping method for efficient characterization and classification of complex geometries in biological images.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2020-09-01
description With the ever-increasing quality and quantity of imaging data in biomedical research comes the demand for computational methodologies that enable efficient and reliable automated extraction of the quantitative information contained within these images. One of the challenges in providing such methodology is the need for tailoring algorithms to the specifics of the data, limiting their areas of application. Here we present a broadly applicable approach to quantification and classification of complex shapes and patterns in biological or other multi-component formations. This approach integrates the mapping of all shape boundaries within an image onto a global information-rich graph and machine learning on the multidimensional measures of the graph. We demonstrated the power of this method by (1) extracting subtle structural differences from visually indistinguishable images in our phenotype rescue experiments using the endothelial tube formations assay, (2) training the algorithm to identify biophysical parameters underlying the formation of different multicellular networks in our simulation model of collective cell behavior, and (3) analyzing the response of U2OS cell cultures to a broad array of small molecule perturbations.
url https://doi.org/10.1371/journal.pcbi.1007758
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