Multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.

Recent high-throughput efforts such as ENCODE have generated a large body of genome-scale transcriptional data in multiple conditions (e.g., cell-types and disease states). Leveraging these data is especially important for network-based approaches to human disease, for instance to identify coherent...

Full description

Bibliographic Details
Main Authors: Xiaolin Xiao, Aida Moreno-Moral, Maxime Rotival, Leonardo Bottolo, Enrico Petretto
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS Genetics
Online Access:http://europepmc.org/articles/PMC3879165?pdf=render
id doaj-6053f32487d04fd3b8c16b3996ff49de
record_format Article
spelling doaj-6053f32487d04fd3b8c16b3996ff49de2020-11-25T02:30:16ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042014-01-01101e100400610.1371/journal.pgen.1004006Multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.Xiaolin XiaoAida Moreno-MoralMaxime RotivalLeonardo BottoloEnrico PetrettoRecent high-throughput efforts such as ENCODE have generated a large body of genome-scale transcriptional data in multiple conditions (e.g., cell-types and disease states). Leveraging these data is especially important for network-based approaches to human disease, for instance to identify coherent transcriptional modules (subnetworks) that can inform functional disease mechanisms and pathological pathways. Yet, genome-scale network analysis across conditions is significantly hampered by the paucity of robust and computationally-efficient methods. Building on the Higher-Order Generalized Singular Value Decomposition, we introduce a new algorithmic approach for efficient, parameter-free and reproducible identification of network-modules simultaneously across multiple conditions. Our method can accommodate weighted (and unweighted) networks of any size and can similarly use co-expression or raw gene expression input data, without hinging upon the definition and stability of the correlation used to assess gene co-expression. In simulation studies, we demonstrated distinctive advantages of our method over existing methods, which was able to recover accurately both common and condition-specific network-modules without entailing ad-hoc input parameters as required by other approaches. We applied our method to genome-scale and multi-tissue transcriptomic datasets from rats (microarray-based) and humans (mRNA-sequencing-based) and identified several common and tissue-specific subnetworks with functional significance, which were not detected by other methods. In humans we recapitulated the crosstalk between cell-cycle progression and cell-extracellular matrix interactions processes in ventricular zones during neocortex expansion and further, we uncovered pathways related to development of later cognitive functions in the cortical plate of the developing brain which were previously unappreciated. Analyses of seven rat tissues identified a multi-tissue subnetwork of co-expressed heat shock protein (Hsp) and cardiomyopathy genes (Bag3, Cryab, Kras, Emd, Plec), which was significantly replicated using separate failing heart and liver gene expression datasets in humans, thus revealing a conserved functional role for Hsp genes in cardiovascular disease.http://europepmc.org/articles/PMC3879165?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Xiaolin Xiao
Aida Moreno-Moral
Maxime Rotival
Leonardo Bottolo
Enrico Petretto
spellingShingle Xiaolin Xiao
Aida Moreno-Moral
Maxime Rotival
Leonardo Bottolo
Enrico Petretto
Multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.
PLoS Genetics
author_facet Xiaolin Xiao
Aida Moreno-Moral
Maxime Rotival
Leonardo Bottolo
Enrico Petretto
author_sort Xiaolin Xiao
title Multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.
title_short Multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.
title_full Multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.
title_fullStr Multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.
title_full_unstemmed Multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.
title_sort multi-tissue analysis of co-expression networks by higher-order generalized singular value decomposition identifies functionally coherent transcriptional modules.
publisher Public Library of Science (PLoS)
series PLoS Genetics
issn 1553-7390
1553-7404
publishDate 2014-01-01
description Recent high-throughput efforts such as ENCODE have generated a large body of genome-scale transcriptional data in multiple conditions (e.g., cell-types and disease states). Leveraging these data is especially important for network-based approaches to human disease, for instance to identify coherent transcriptional modules (subnetworks) that can inform functional disease mechanisms and pathological pathways. Yet, genome-scale network analysis across conditions is significantly hampered by the paucity of robust and computationally-efficient methods. Building on the Higher-Order Generalized Singular Value Decomposition, we introduce a new algorithmic approach for efficient, parameter-free and reproducible identification of network-modules simultaneously across multiple conditions. Our method can accommodate weighted (and unweighted) networks of any size and can similarly use co-expression or raw gene expression input data, without hinging upon the definition and stability of the correlation used to assess gene co-expression. In simulation studies, we demonstrated distinctive advantages of our method over existing methods, which was able to recover accurately both common and condition-specific network-modules without entailing ad-hoc input parameters as required by other approaches. We applied our method to genome-scale and multi-tissue transcriptomic datasets from rats (microarray-based) and humans (mRNA-sequencing-based) and identified several common and tissue-specific subnetworks with functional significance, which were not detected by other methods. In humans we recapitulated the crosstalk between cell-cycle progression and cell-extracellular matrix interactions processes in ventricular zones during neocortex expansion and further, we uncovered pathways related to development of later cognitive functions in the cortical plate of the developing brain which were previously unappreciated. Analyses of seven rat tissues identified a multi-tissue subnetwork of co-expressed heat shock protein (Hsp) and cardiomyopathy genes (Bag3, Cryab, Kras, Emd, Plec), which was significantly replicated using separate failing heart and liver gene expression datasets in humans, thus revealing a conserved functional role for Hsp genes in cardiovascular disease.
url http://europepmc.org/articles/PMC3879165?pdf=render
work_keys_str_mv AT xiaolinxiao multitissueanalysisofcoexpressionnetworksbyhigherordergeneralizedsingularvaluedecompositionidentifiesfunctionallycoherenttranscriptionalmodules
AT aidamorenomoral multitissueanalysisofcoexpressionnetworksbyhigherordergeneralizedsingularvaluedecompositionidentifiesfunctionallycoherenttranscriptionalmodules
AT maximerotival multitissueanalysisofcoexpressionnetworksbyhigherordergeneralizedsingularvaluedecompositionidentifiesfunctionallycoherenttranscriptionalmodules
AT leonardobottolo multitissueanalysisofcoexpressionnetworksbyhigherordergeneralizedsingularvaluedecompositionidentifiesfunctionallycoherenttranscriptionalmodules
AT enricopetretto multitissueanalysisofcoexpressionnetworksbyhigherordergeneralizedsingularvaluedecompositionidentifiesfunctionallycoherenttranscriptionalmodules
_version_ 1724828870456115200