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Enlightening discriminative network functional modules behind Principal Component Analysis separation in differential-omic science studies

Omic science is rapidly growing and one of the most employed techniques to explore differential patterns in omic datasets is principal component analysis (PCA). However, a method to enlighten the network of omic features that mostly contribute to the sample separation obtained by PCA is missing. An...

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Autores principales: Ciucci, Sara, Ge, Yan, Durán, Claudio, Palladini, Alessandra, Jiménez-Jiménez, Víctor, Martínez-Sánchez, Luisa María, Wang, Yuting, Sales, Susanne, Shevchenko, Andrej, Poser, Steven W., Herbig, Maik, Otto, Oliver, Androutsellis-Theotokis, Andreas, Guck, Jochen, Gerl, Mathias J., Cannistraci, Carlo Vittorio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5347127/
https://www.ncbi.nlm.nih.gov/pubmed/28287094
http://dx.doi.org/10.1038/srep43946
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author Ciucci, Sara
Ge, Yan
Durán, Claudio
Palladini, Alessandra
Jiménez-Jiménez, Víctor
Martínez-Sánchez, Luisa María
Wang, Yuting
Sales, Susanne
Shevchenko, Andrej
Poser, Steven W.
Herbig, Maik
Otto, Oliver
Androutsellis-Theotokis, Andreas
Guck, Jochen
Gerl, Mathias J.
Cannistraci, Carlo Vittorio
author_facet Ciucci, Sara
Ge, Yan
Durán, Claudio
Palladini, Alessandra
Jiménez-Jiménez, Víctor
Martínez-Sánchez, Luisa María
Wang, Yuting
Sales, Susanne
Shevchenko, Andrej
Poser, Steven W.
Herbig, Maik
Otto, Oliver
Androutsellis-Theotokis, Andreas
Guck, Jochen
Gerl, Mathias J.
Cannistraci, Carlo Vittorio
author_sort Ciucci, Sara
collection PubMed
description Omic science is rapidly growing and one of the most employed techniques to explore differential patterns in omic datasets is principal component analysis (PCA). However, a method to enlighten the network of omic features that mostly contribute to the sample separation obtained by PCA is missing. An alternative is to build correlation networks between univariately-selected significant omic features, but this neglects the multivariate unsupervised feature compression responsible for the PCA sample segregation. Biologists and medical researchers often prefer effective methods that offer an immediate interpretation to complicated algorithms that in principle promise an improvement but in practice are difficult to be applied and interpreted. Here we present PC-corr: a simple algorithm that associates to any PCA segregation a discriminative network of features. Such network can be inspected in search of functional modules useful in the definition of combinatorial and multiscale biomarkers from multifaceted omic data in systems and precision biomedicine. We offer proofs of PC-corr efficacy on lipidomic, metagenomic, developmental genomic, population genetic, cancer promoteromic and cancer stem-cell mechanomic data. Finally, PC-corr is a general functional network inference approach that can be easily adopted for big data exploration in computer science and analysis of complex systems in physics.
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spelling pubmed-53471272017-03-14 Enlightening discriminative network functional modules behind Principal Component Analysis separation in differential-omic science studies Ciucci, Sara Ge, Yan Durán, Claudio Palladini, Alessandra Jiménez-Jiménez, Víctor Martínez-Sánchez, Luisa María Wang, Yuting Sales, Susanne Shevchenko, Andrej Poser, Steven W. Herbig, Maik Otto, Oliver Androutsellis-Theotokis, Andreas Guck, Jochen Gerl, Mathias J. Cannistraci, Carlo Vittorio Sci Rep Article Omic science is rapidly growing and one of the most employed techniques to explore differential patterns in omic datasets is principal component analysis (PCA). However, a method to enlighten the network of omic features that mostly contribute to the sample separation obtained by PCA is missing. An alternative is to build correlation networks between univariately-selected significant omic features, but this neglects the multivariate unsupervised feature compression responsible for the PCA sample segregation. Biologists and medical researchers often prefer effective methods that offer an immediate interpretation to complicated algorithms that in principle promise an improvement but in practice are difficult to be applied and interpreted. Here we present PC-corr: a simple algorithm that associates to any PCA segregation a discriminative network of features. Such network can be inspected in search of functional modules useful in the definition of combinatorial and multiscale biomarkers from multifaceted omic data in systems and precision biomedicine. We offer proofs of PC-corr efficacy on lipidomic, metagenomic, developmental genomic, population genetic, cancer promoteromic and cancer stem-cell mechanomic data. Finally, PC-corr is a general functional network inference approach that can be easily adopted for big data exploration in computer science and analysis of complex systems in physics. Nature Publishing Group 2017-03-13 /pmc/articles/PMC5347127/ /pubmed/28287094 http://dx.doi.org/10.1038/srep43946 Text en Copyright © 2017, The Author(s) http://creativecommons.org/licenses/by/4.0/ This work is licensed under a Creative Commons Attribution 4.0 International License. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in the credit line; if the material is not included under the Creative Commons license, users will need to obtain permission from the license holder to reproduce the material. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/
spellingShingle Article
Ciucci, Sara
Ge, Yan
Durán, Claudio
Palladini, Alessandra
Jiménez-Jiménez, Víctor
Martínez-Sánchez, Luisa María
Wang, Yuting
Sales, Susanne
Shevchenko, Andrej
Poser, Steven W.
Herbig, Maik
Otto, Oliver
Androutsellis-Theotokis, Andreas
Guck, Jochen
Gerl, Mathias J.
Cannistraci, Carlo Vittorio
Enlightening discriminative network functional modules behind Principal Component Analysis separation in differential-omic science studies
title Enlightening discriminative network functional modules behind Principal Component Analysis separation in differential-omic science studies
title_full Enlightening discriminative network functional modules behind Principal Component Analysis separation in differential-omic science studies
title_fullStr Enlightening discriminative network functional modules behind Principal Component Analysis separation in differential-omic science studies
title_full_unstemmed Enlightening discriminative network functional modules behind Principal Component Analysis separation in differential-omic science studies
title_short Enlightening discriminative network functional modules behind Principal Component Analysis separation in differential-omic science studies
title_sort enlightening discriminative network functional modules behind principal component analysis separation in differential-omic science studies
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5347127/
https://www.ncbi.nlm.nih.gov/pubmed/28287094
http://dx.doi.org/10.1038/srep43946
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