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Is graph-based feature selection of genes better than random?

Authors :
Hashir, Mohammad
Bertin, Paul
Weiss, Martin
Frappier, Vincent
Perkins, Theodore J.
Boucher, Geneviève
Cohen, Joseph Paul
Publication Year :
2019

Abstract

Gene interaction graphs aim to capture various relationships between genes and represent decades of biology research. When trying to make predictions from genomic data, those graphs could be used to overcome the curse of dimensionality by making machine learning models sparser and more consistent with biological common knowledge. In this work, we focus on assessing whether those graphs capture dependencies seen in gene expression data better than random. We formulate a condition that graphs should satisfy to provide a good prior knowledge and propose to test it using a `Single Gene Inference' (SGI) task. We compare random graphs with seven major gene interaction graphs published by different research groups, aiming to measure the true benefit of using biologically relevant graphs in this context. Our analysis finds that dependencies can be captured almost as well at random which suggests that, in terms of gene expression levels, the relevant information about the state of the cell is spread across many genes.<br />Comment: Accepted to the Machine Learning in Computational Biology (MLCB) meeting 2019. 7 pages. 4 figures. arXiv admin note: substantial text overlap with arXiv:1905.02295

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1910.09600
Document Type :
Working Paper