Publication:
A Network-Based Kernel Machine Test for the Identification of Risk Pathways in Genome-Wide Association Studies

dc.bibliographiccitation.firstpage64
dc.bibliographiccitation.issue2
dc.bibliographiccitation.journalHuman Heredity
dc.bibliographiccitation.lastpage75
dc.bibliographiccitation.volume76
dc.contributor.authorFreytag, Saskia
dc.contributor.authorManitz, Juliane
dc.contributor.authorSchlather, Martin
dc.contributor.authorKneib, Thomas
dc.contributor.authorAmos, Christopher I.
dc.contributor.authorRisch, Angela
dc.contributor.authorChang-Claude, Jenny
dc.contributor.authorHeinrich, Joachim
dc.contributor.authorBickeböller, Heike
dc.date.accessioned2017-09-07T11:47:18Z
dc.date.available2017-09-07T11:47:18Z
dc.date.issued2014
dc.description.abstractBiological pathways provide rich information and biological context on the genetic causes of complex diseases. The logistic kernel machine test integrates prior knowledge on pathways in order to analyze data from genome-wide association studies (GWAS). In this study, the kernel converts the genomic information of 2 individuals into a quantitative value reflecting their genetic similarity. With the selection of the kernel, one implicitly chooses a genetic effect model. Like many other pathway methods, none of the available kernels accounts for the topological structure of the pathway or gene-gene interaction types. However, evidence indicates that connectivity and neighborhood of genes are crucial in the context of GWAS, because genes associated with a disease often interact. Thus, we propose a novel kernel that incorporates the topology of pathways and information on interactions. Using simulation studies, we demonstrate that the proposed method maintains the type I error correctly and can be more effective in the identification of pathways associated with a disease than non-network-based methods. We apply our approach to genome-wide association case-control data on lung cancer and rheumatoid arthritis. We identify some promising new pathways associated with these diseases, which may improve our current understanding of the genetic mechanisms.
dc.identifier.doi10.1159/000357567
dc.identifier.gro3149315
dc.identifier.pmid24434848
dc.identifier.purlhttps://resolver.sub.uni-goettingen.de/purl?gs-1/10822
dc.identifier.urihttps://resolver.sub.uni-goettingen.de/purl?gro-2/5978
dc.item.fulltextWith Fulltext
dc.language.isoen
dc.notes.internKneib Crossref Import
dc.notes.internMerged from goescholar
dc.notes.statuspublic
dc.notes.submitterchake
dc.publisherS. Karger AG
dc.relation.eissn1423-0062
dc.relation.issn0001-5652
dc.rightsGoescholar
dc.rights.urihttps://goescholar.uni-goettingen.de/license
dc.titleA Network-Based Kernel Machine Test for the Identification of Risk Pathways in Genome-Wide Association Studies
dc.typejournal_article
dc.type.internalPublicationyes
dc.type.peerReviewedno
dc.type.versionpublished_version
dspace.entity.typePublication

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