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Predicting the functional, molecular, and phenotypic consequences of amino acid substitutions using hidden Markov models.

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TLDR
The Functional Analysis Through Hidden Markov Models (FATHMM) software and server is described: a species‐independent method with optional species‐specific weightings for the prediction of the functional effects of protein missense variants, demonstrating that FATHMM can be efficiently applied to high‐throughput/large‐scale human and nonhuman genome sequencing projects with the added benefit of phenotypic outcome associations.
Abstract
The rate at which nonsynonymous single nucleotide polymorphisms (nsSNPs) are being identified in the human genome is increasing dramatically owing to advances in whole-genome/whole-exome sequencing technologies. Automated methods capable of accurately and reliably distinguishing between pathogenic and functionally neutral nsSNPs are therefore assuming ever-increasing importance. Here, we describe the Functional Analysis Through Hidden Markov Models (FATHMM) software and server: a species-independent method with optional species-specific weightings for the prediction of the functional effects of protein missense variants. Using a model weighted for human mutations, we obtained performance accuracies that outperformed traditional prediction methods (i.e., SIFT, PolyPhen, and PANTHER) on two separate benchmarks. Furthermore, in one benchmark, we achieve performance accuracies that outperform current state-of-the-art prediction methods (i.e., SNPs&GO and MutPred). We demonstrate that FATHMM can be efficiently applied to high-throughput/large-scale human and nonhuman genome sequencing projects with the added benefit of phenotypic outcome associations. To illustrate this, we evaluated nsSNPs in wheat (Triticum spp.) to identify some of the important genetic variants responsible for the phenotypic differences introduced by intense selection during domestication. A Web-based implementation of FATHMM, including a high-throughput batch facility and a downloadable standalone package, is available at http://fathmm.biocompute.org.uk.

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Journal ArticleDOI

PERCH: A Unified Framework for Disease Gene Prioritization

TL;DR: A framework that can prioritize disease genes by quantitatively unifying a new deleteriousness measure called BayesDel, an improved assessment of the biological relevance of genes to the disease, a modified linkage analysis, a novel rare‐variant association test, and a converted variant call quality score is described.
Journal ArticleDOI

DEOGEN2: prediction and interactive visualization of single amino acid variant deleteriousness in human proteins.

TL;DR: In this paper, the authors present a method, DEOGEN2, which incorporates heterogeneous information about the molecular effects of the variants, the domains involved, the relevance of the gene and the interactions in which it participates.
Journal ArticleDOI

Tools for Predicting the Functional Impact of Nonsynonymous Genetic Variation.

TL;DR: This review focuses on nonsynonymous variant prediction with two aims in mind: to review the prioritization methods that have been developed to date and the principles on which they are based and to discuss the challenges to further improving these methods.
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Predicting Cancer Drug Response using a Recommender System

TL;DR: This work proposes a method based on ideas from ‘recommender systems’ (CaDRReS) that predicts cancer drug responses for unseen cell‐lines/patients based on learning projections for drugs and cell‐ lines into a latent ‘pharmacogenomic’ space.
References
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