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Independent Component Analysis for Unraveling the Complexity of Cancer Omics Datasets

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dc.contributor.author Sompairac, Nicolas
dc.contributor.author Nazarov, Petr V.
dc.contributor.author Czerwinska, Urszula
dc.contributor.author Cantini, Laura
dc.contributor.author Biton, Anne
dc.contributor.author Molkenov, Askhat
dc.contributor.author Zhumadilov, Zhaxybay
dc.contributor.author Barillot, Emmanuel
dc.contributor.author Radvanyi, Francois
dc.contributor.author Gorban, Alexander
dc.contributor.author Kairov, Ulykbek
dc.contributor.author Zinovyev, Andrei
dc.date.accessioned 2019-12-12T05:04:46Z
dc.date.available 2019-12-12T05:04:46Z
dc.date.issued 2019-09-02
dc.identifier.citation Sompairac, N.; Nazarov, P.V.; Czerwinska, U.; Cantini, L.; Biton, A.; Molkenov, A.; Zhumadilov, Z.; Barillot, E.; Radvanyi, F.; Gorban, A.; Kairov, U.; Zinovyev, A. Independent Component Analysis for Unraveling the Complexity of Cancer Omics Datasets. Int. J. Mol. Sci. 2019, 20, 4414. en_US
dc.identifier.uri http://nur.nu.edu.kz/handle/123456789/4417
dc.description.abstract Independent component analysis (ICA) is a matrix factorization approach where the signals captured by each individual matrix factors are optimized to become as mutually independent as possible. Initially suggested for solving source blind separation problems in various fields, ICA was shown to be successful in analyzing functional magnetic resonance imaging (fMRI) and other types of biomedical data. In the last twenty years, ICA became a part of the standard machine learning toolbox, together with other matrix factorization methods such as principal component analysis (PCA) and non-negative matrix factorization (NMF). Here, we review a number of recent works where ICA was shown to be a useful tool for unraveling the complexity of cancer biology from the analysis of different types of omics data, mainly collected for tumoral samples. Such works highlight the use of ICA in dimensionality reduction, deconvolution, data pre-processing, meta-analysis, and others applied to different data types (transcriptome, methylome, proteome, single-cell data). We particularly focus on the technical aspects of ICA application in omics studies such as using different protocols, determining the optimal number of components, assessing and improving reproducibility of the ICA results, and comparison with other popular matrix factorization techniques. We discuss the emerging ICA applications to the integrative analysis of multi-level omics datasets and introduce a conceptual view on ICA as a tool for defining functional subsystems of a complex biological system and their interactions under various conditions. Our review is accompanied by a Jupyter notebook which illustrates the discussed concepts and provides a practical tool for applying ICA to the analysis of cancer omics datasets. en_US
dc.language.iso en en_US
dc.publisher MDPI en_US
dc.rights Attribution-NonCommercial-ShareAlike 3.0 United States *
dc.rights.uri http://creativecommons.org/licenses/by-nc-sa/3.0/us/ *
dc.title Independent Component Analysis for Unraveling the Complexity of Cancer Omics Datasets en_US
dc.type Article en_US
workflow.import.source science


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