[HTML][HTML] Phenotype-driven strategies for exome prioritization of human Mendelian disease genes

D Smedley, PN Robinson - Genome medicine, 2015 - Springer
Genome medicine, 2015Springer
Whole exome sequencing has altered the way in which rare diseases are diagnosed and
disease genes identified. Hundreds of novel disease-associated genes have been
characterized by whole exome sequencing in the past five years, yet the identification of
disease-causing mutations is often challenging because of the large number of rare variants
that are being revealed. Gene prioritization aims to rank the most probable candidate genes
towards the top of a list of potentially pathogenic variants. A promising new approach …
Abstract
Whole exome sequencing has altered the way in which rare diseases are diagnosed and disease genes identified. Hundreds of novel disease-associated genes have been characterized by whole exome sequencing in the past five years, yet the identification of disease-causing mutations is often challenging because of the large number of rare variants that are being revealed. Gene prioritization aims to rank the most probable candidate genes towards the top of a list of potentially pathogenic variants. A promising new approach involves the computational comparison of the phenotypic abnormalities of the individual being investigated with those previously associated with human diseases or genetically modified model organisms. In this review, we compare and contrast the strengths and weaknesses of current phenotype-driven computational algorithms, including Phevor, Phen-Gen, eXtasy and two algorithms developed by our groups called PhenIX and Exomiser. Computational phenotype analysis can substantially improve the performance of exome analysis pipelines.
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