Please use this identifier to cite or link to this item: https://doi.org/10.1038/s41540-019-0099-y
Title: iOmicsPASS: network-based integration of multiomics data for predictive subnetwork discovery
Authors: Koh, Hiromi WL
Fermin, Damian
Vogel, Christine
Choi, Kwok Pui 
Ewing, Rob M
Choi, Hyungwon 
Keywords: Science & Technology
Life Sciences & Biomedicine
Mathematical & Computational Biology
BREAST
PLATFORM
Issue Date: 9-Jul-2019
Publisher: NATURE PUBLISHING GROUP
Citation: Koh, Hiromi WL, Fermin, Damian, Vogel, Christine, Choi, Kwok Pui, Ewing, Rob M, Choi, Hyungwon (2019-07-09). iOmicsPASS: network-based integration of multiomics data for predictive subnetwork discovery. NPJ SYSTEMS BIOLOGY AND APPLICATIONS 5 (1) : 22. ScholarBank@NUS Repository. https://doi.org/10.1038/s41540-019-0099-y
Rights: Attribution 4.0 International
Abstract: Computational tools for multiomics data integration have usually been designed for unsupervised detection of multiomics features explaining large phenotypic variations. To achieve this, some approaches extract latent signals in heterogeneous data sets from a joint statistical error model, while others use biological networks to propagate differential expression signals and find consensus signatures. However, few approaches directly consider molecular interaction as a data feature, the essential linker between different omics data sets. The increasing availability of genome-scale interactome data connecting different molecular levels motivates a new class of methods to extract interactive signals from multiomics data. Here we developed iOmicsPASS, a tool to search for predictive subnetworks consisting of molecular interactions within and between related omics data types in a supervised analysis setting. Based on user-provided network data and relevant omics data sets, iOmicsPASS computes a score for each molecular interaction, and applies a modified nearest shrunken centroid algorithm to the scores to select densely connected subnetworks that can accurately predict each phenotypic group. iOmicsPASS detects a sparse set of predictive molecular interactions without loss of prediction accuracy compared to alternative methods, and the selected network signature immediately provides mechanistic interpretation of the multiomics profile representing each sample group. Extensive simulation studies demonstrate clear benefit of interaction-level modeling. iOmicsPASS analysis of TCGA/CPTAC breast cancer data also highlights new transcriptional regulatory network underlying the basal-like subtype as positive protein markers, a result not seen through analysis of individual omics data.
Source Title: NPJ SYSTEMS BIOLOGY AND APPLICATIONS
URI: https://scholarbank.nus.edu.sg/handle/10635/205976
ISSN: 20567189
20567189
DOI: 10.1038/s41540-019-0099-y
Rights: Attribution 4.0 International
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