Integrative analysis of functional genomic annotations and sequencing data to identify rare causal variants via hierarchical modeling Journal Article


Authors: Capanu, M.; Ionita-Laza, I.
Article Title: Integrative analysis of functional genomic annotations and sequencing data to identify rare causal variants via hierarchical modeling
Abstract: Identifying the small number of rare causal variants contributing to disease has been a major focus of investigation in recent years, but represents a formidable statistical challenge due to the rare frequencies with which these variants are observed. In this commentary we draw attention to a formal statistical framework, namely hierarchical modeling, to combine functional genomic annotations with sequencing data with the objective of enhancing our ability to identify rare causal variants. Using simulations we show that in all configurations studied, the hierarchical modeling approach has superior discriminatory ability compared to a recently proposed aggregate measure of deleteriousness, the Combined Annotation-Dependent Depletion (CADD) score, supporting our premise that aggregate functional genomic measures can more accurately identify causal variants when used in conjunction with sequencing data through a hierarchical modeling approach. © 2015 Capanu and Ionita-Laza.
Keywords: sequence analysis; single nucleotide polymorphism; genetic analysis; melanoma; breast cancer; genetic variability; risk factor; ovary polycystic disease; autism; causal variants; human; article; cadd score; functional score; hierarchical modeling; sequencing studies
Journal Title: Frontiers in Genetics
Volume: 6
ISSN: 1664-8021
Publisher: Frontiers Media S.A.  
Date Published: 2015-05-08
Start Page: 176
Language: English
DOI: 10.3389/fgene.2015.00176
PROVIDER: scopus
PMCID: PMC4424902
PUBMED: 26005447
DOI/URL:
Notes: Export Date: 2 October 2015 -- Source: Scopus
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  1. Marinela Capanu
    385 Capanu