IN SILICO PATHWAY ACTIVATION NETWORK DECOMPOSITION ANALYSIS (IPANDA) AS A METHOD FOR BIOMARKER DEVELOPMENTстатья
Статья опубликована в высокорейтинговом журнале
Информация о цитировании статьи получена из
Web of Science,
Scopus
Статья опубликована в журнале из списка Web of Science и/или Scopus
Дата последнего поиска статьи во внешних источниках: 11 марта 2017 г.
Авторы:
Ozerov Iv,
Lezhnina Kv,
Izumchenko E.,
Artemov Av,
Medintsev S.,
Vanhaelen Q.,
Aliper A.,
Vijg J.,
Osipov An,
Labat I.,
West Md,
Buzdin A.,
Cantor Cr,
Nikolsky Y.,
Borisov N.,
Irincheeva I.,
Khokhlovich E.,
Sidransky D.,
Camargo Ml,
Zhavoronkov A.
Аннотация:Signalling pathway activation analysis is a powerful approach for extracting biologically relevant features from large-scale transcriptomic and proteomic data. However, modern pathway-based methods often fail to provide stable pathway signatures of a specific phenotype or reliable disease biomarkers. In the present study, we introduce the in silico Pathway Activation Network Decomposition Analysis (iPANDA) as a scalable robust method for biomarker identification using gene expression data. The iPANDA method combines precalculated gene coexpression data with gene importance factors based on the degree of differential gene expression and pathway topology decomposition for obtaining pathway activation scores. Using Microarray Analysis Quality Control (MAQC) data sets and pretreatment data on Taxol-based neoadjuvant breast cancer therapy from multiple sources, we demonstrate that iPANDA provides significant noise reduction in transcriptomic data and identifies highly robust sets of biologically relevant pathway signatures. We successfully apply iPANDA for stratifying breast cancer patients according to their sensitivity to neoadjuvant therapy.