PINES: phenotype-informed tissue weighting improves prediction of pathogenic noncoding variants.

Genome Biol
Authors
Keywords
Abstract

Functional characterization of the noncoding genome is essential for biological understanding of gene regulation and disease. Here, we introduce the computational framework PINES (Phenotype-Informed Noncoding Element Scoring), which predicts the functional impact of noncoding variants by integrating epigenetic annotations in a phenotype-dependent manner. PINES enables analyses to be customized towards genomic annotations from cell types of the highest relevance given the phenotype of interest. We illustrate that PINES identifies functional noncoding variation more accurately than methods that do not use phenotype-weighted knowledge, while at the same time being flexible and easy to use via a dedicated web portal.

Year of Publication
2018
Journal
Genome Biol
Volume
19
Issue
1
Pages
173
Date Published
2018 Oct 25
ISSN
1474-760X
DOI
10.1186/s13059-018-1546-6
PubMed ID
30359302
PubMed Central ID
PMC6203199
Links