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A Geometric Clustering Tool (AGCT) to robustly unravel the inner cluster structures of time-series gene expressions

Systems biology aims at holistically understanding the complexity of biological systems. In particular, nowadays with the broad availability of gene expression measurements, systems biology challenges the deciphering of the genetic cell machinery from them. In order to help researchers, reverse engi...

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Detalles Bibliográficos
Autores principales: Nock, Richard, Polouliakh, Natalia, Nielsen, Frank, Oka, Keigo, Connell, Carlin R., Heimhofer, Cedric, Shibanai, Kazuhiro, Ghosh, Samik, Aisaki, Ken-ichi, Kitajima, Satoshi, Kanno, Jun, Akama, Taketo, Kitano, Hiroaki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7337352/
https://www.ncbi.nlm.nih.gov/pubmed/32628677
http://dx.doi.org/10.1371/journal.pone.0233755
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author Nock, Richard
Polouliakh, Natalia
Nielsen, Frank
Oka, Keigo
Connell, Carlin R.
Heimhofer, Cedric
Shibanai, Kazuhiro
Ghosh, Samik
Aisaki, Ken-ichi
Kitajima, Satoshi
Kanno, Jun
Akama, Taketo
Kitano, Hiroaki
author_facet Nock, Richard
Polouliakh, Natalia
Nielsen, Frank
Oka, Keigo
Connell, Carlin R.
Heimhofer, Cedric
Shibanai, Kazuhiro
Ghosh, Samik
Aisaki, Ken-ichi
Kitajima, Satoshi
Kanno, Jun
Akama, Taketo
Kitano, Hiroaki
author_sort Nock, Richard
collection PubMed
description Systems biology aims at holistically understanding the complexity of biological systems. In particular, nowadays with the broad availability of gene expression measurements, systems biology challenges the deciphering of the genetic cell machinery from them. In order to help researchers, reverse engineer the genetic cell machinery from these noisy datasets, interactive exploratory clustering methods, pipelines and gene clustering tools have to be specifically developed. Prior methods/tools for time series data, however, do not have the following four major ingredients in analytic and methodological view point: (i) principled time-series feature extraction methods, (ii) variety of manifold learning methods for capturing high-level view of the dataset, (iii) high-end automatic structure extraction, and (iv) friendliness to the biological user community. With a view to meet the requirements, we present AGCT (A Geometric Clustering Tool), a software package used to unravel the complex architecture of large-scale, non-necessarily synchronized time-series gene expression data. AGCT capture signals on exhaustive wavelet expansions of the data, which are then embedded on a low-dimensional non-linear map using manifold learning algorithms, where geometric proximity captures potential interactions. Post-processing techniques, including hard and soft information geometric clustering algorithms, facilitate the summarizing of the complete map as a smaller number of principal factors which can then be formally identified using embedded statistical inference techniques. Three-dimension interactive visualization and scenario recording over the processing helps to reproduce data analysis results without additional time. Analysis of the whole-cell Yeast Metabolic Cycle (YMC) moreover, Yeast Cell Cycle (YCC) datasets demonstrate AGCT's ability to accurately dissect all stages of metabolism and the cell cycle progression, independently of the time course and the number of patterns related to the signal. Analysis of Pentachlorophenol iduced dataset demonstrat how AGCT dissects data to identify two networks: Interferon signaling and NRF2-signaling networks.
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spelling pubmed-73373522020-07-16 A Geometric Clustering Tool (AGCT) to robustly unravel the inner cluster structures of time-series gene expressions Nock, Richard Polouliakh, Natalia Nielsen, Frank Oka, Keigo Connell, Carlin R. Heimhofer, Cedric Shibanai, Kazuhiro Ghosh, Samik Aisaki, Ken-ichi Kitajima, Satoshi Kanno, Jun Akama, Taketo Kitano, Hiroaki PLoS One Research Article Systems biology aims at holistically understanding the complexity of biological systems. In particular, nowadays with the broad availability of gene expression measurements, systems biology challenges the deciphering of the genetic cell machinery from them. In order to help researchers, reverse engineer the genetic cell machinery from these noisy datasets, interactive exploratory clustering methods, pipelines and gene clustering tools have to be specifically developed. Prior methods/tools for time series data, however, do not have the following four major ingredients in analytic and methodological view point: (i) principled time-series feature extraction methods, (ii) variety of manifold learning methods for capturing high-level view of the dataset, (iii) high-end automatic structure extraction, and (iv) friendliness to the biological user community. With a view to meet the requirements, we present AGCT (A Geometric Clustering Tool), a software package used to unravel the complex architecture of large-scale, non-necessarily synchronized time-series gene expression data. AGCT capture signals on exhaustive wavelet expansions of the data, which are then embedded on a low-dimensional non-linear map using manifold learning algorithms, where geometric proximity captures potential interactions. Post-processing techniques, including hard and soft information geometric clustering algorithms, facilitate the summarizing of the complete map as a smaller number of principal factors which can then be formally identified using embedded statistical inference techniques. Three-dimension interactive visualization and scenario recording over the processing helps to reproduce data analysis results without additional time. Analysis of the whole-cell Yeast Metabolic Cycle (YMC) moreover, Yeast Cell Cycle (YCC) datasets demonstrate AGCT's ability to accurately dissect all stages of metabolism and the cell cycle progression, independently of the time course and the number of patterns related to the signal. Analysis of Pentachlorophenol iduced dataset demonstrat how AGCT dissects data to identify two networks: Interferon signaling and NRF2-signaling networks. Public Library of Science 2020-07-06 /pmc/articles/PMC7337352/ /pubmed/32628677 http://dx.doi.org/10.1371/journal.pone.0233755 Text en © 2020 Nock et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Nock, Richard
Polouliakh, Natalia
Nielsen, Frank
Oka, Keigo
Connell, Carlin R.
Heimhofer, Cedric
Shibanai, Kazuhiro
Ghosh, Samik
Aisaki, Ken-ichi
Kitajima, Satoshi
Kanno, Jun
Akama, Taketo
Kitano, Hiroaki
A Geometric Clustering Tool (AGCT) to robustly unravel the inner cluster structures of time-series gene expressions
title A Geometric Clustering Tool (AGCT) to robustly unravel the inner cluster structures of time-series gene expressions
title_full A Geometric Clustering Tool (AGCT) to robustly unravel the inner cluster structures of time-series gene expressions
title_fullStr A Geometric Clustering Tool (AGCT) to robustly unravel the inner cluster structures of time-series gene expressions
title_full_unstemmed A Geometric Clustering Tool (AGCT) to robustly unravel the inner cluster structures of time-series gene expressions
title_short A Geometric Clustering Tool (AGCT) to robustly unravel the inner cluster structures of time-series gene expressions
title_sort geometric clustering tool (agct) to robustly unravel the inner cluster structures of time-series gene expressions
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7337352/
https://www.ncbi.nlm.nih.gov/pubmed/32628677
http://dx.doi.org/10.1371/journal.pone.0233755
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