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Module-Based Association Analysis for Omics Data with Network Structure
Author(s) -
Zhi Wang,
Arnab Maity,
Chuhsing Kate Hsiao,
Deepak Voora,
Rima KaddurahDaouk,
JungYing Tzeng
Publication year - 2015
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0122309
Subject(s) - biological network , computer science , effi , kernel (algebra) , data mining , construct (python library) , network analysis , network topology , computational biology , gene regulatory network , systems biology , machine learning , biology , mathematics , engineering , computer network , biochemistry , gene expression , combinatorics , database , gene , electrical engineering
Module-based analysis (MBA) aims to evaluate the effect of a group of biological elements sharing common features, such as SNPs in the same gene or metabolites in the same pathways, and has become an attractive alternative to traditional single bio-element approaches. Because bio-elements regulate and interact with each other as part of network, incorporating network structure information can more precisely model the biological effects, enhance the ability to detect true associations, and facilitate our understanding of the underlying biological mechanisms. How-ever, most MBA methods ignore the network structure information, which depicts the interaction and regulation relationship among basic functional units in biology system. We construct the con-nectivity kernel and the topology kernel to capture the relationship among bio-elements in a mod-ule, and use a kernel machine framework to evaluate the joint effect of bio-elements. Our proposed kernel machine approach directly incorporates network structure so to enhance the study effi-ciency; it can assess interactions among modules, account covariates, and is computational effi-cient. Through simulation studies and real data application, we demonstrate that the proposed network-based methods can have markedly better power than the approaches ignoring network information under a range of scenarios.

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