Ontology highlight
ABSTRACT: Background
Genetic studies for complex diseases have predominantly discovered main effects at individual loci, but have not focused on genomic and environmental contexts important for a phenotype. Gene Set Enrichment Analysis (GSEA) aims to address this by identifying sets of genes or biological pathways contributing to a phenotype, through gene-gene interactions or other mechanisms, which are not the focus of conventional association methods.Results
Approaches that utilize GSEA can now take input from array chips, either gene-centric or genome-wide, but are highly sensitive to study design, SNP selection and pruning strategies, SNP-to-gene mapping, and pathway definitions. Here, we present lessons learned from our experience with GSEA of heart failure, a particularly challenging phenotype due to its underlying heterogeneous etiology.Conclusions
This case study shows that proper data handling is essential to avoid false-positive results. Well-defined pipelines for quality control are needed to avoid reporting spurious results using GSEA.
SUBMITTER: Tragante V
PROVIDER: S-EPMC5446754 | biostudies-literature | 2017
REPOSITORIES: biostudies-literature
Tragante Vinicius V Gho Johannes M I H JMIH Felix Janine F JF Vasan Ramachandran S RS Smith Nicholas L NL Voight Benjamin F BF Palmer Colin C van der Harst Pim P Moore Jason H JH Asselbergs Folkert W FW
BioData mining 20170526
<h4>Background</h4>Genetic studies for complex diseases have predominantly discovered main effects at individual loci, but have not focused on genomic and environmental contexts important for a phenotype. Gene Set Enrichment Analysis (GSEA) aims to address this by identifying sets of genes or biological pathways contributing to a phenotype, through gene-gene interactions or other mechanisms, which are not the focus of conventional association methods.<h4>Results</h4>Approaches that utilize GSEA ...[more]