Gene networks in cancer are biased by aneuploidies and sample impurities

Volume: 1863, Issue: 6, Pages: 194444 - 194444
Published: Jun 1, 2020
Abstract
Gene regulatory network inference is a standard technique for obtaining structured regulatory information from, for instance, gene expression measurements. Methods performing this task have been extensively evaluated on synthetic, and to a lesser extent real data sets. In contrast to these test evaluations, applications to gene expression data of human cancers are often limited by fewer samples and more potential regulatory links, and are biased...
Paper Details
Title
Gene networks in cancer are biased by aneuploidies and sample impurities
Published Date
Jun 1, 2020
Volume
1863
Issue
6
Pages
194444 - 194444
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