Abstract

BackgroundGenome-wide data are increasingly important in the clinical evaluation of human disease. However, the large number of variants observed in individual patients challenges the efficiency and accuracy of diagnostic review. Recent work has shown that systematic integration of clinical phenotype data with genotype information can improve diagnostic workflows and prioritization of filtered rare variants. We have developed visually interactive, analytically transparent analysis software that leverages existing disease catalogs, such as the Online Mendelian Inheritance in Man database (OMIM) and the Human Phenotype Ontology (HPO), to integrate patient phenotype and variant data into ranked diagnostic alternatives.MethodsOur tool, “OMIM Explorer” (http://www.omimexplorer.com), extends the biomedical application of semantic similarity methods beyond those reported in previous studies. The tool also provides a simple interface for translating free-text clinical notes into HPO terms, enabling clinical providers and geneticists to contribute phenotypes to the diagnostic process. The visual approach uses semantic similarity with multidimensional scaling to collapse high-dimensional phenotype and genotype data from an individual into a graphical format that contextualizes the patient within a low-dimensional disease map. The map proposes a differential diagnosis and algorithmically suggests potential alternatives for phenotype queries—in essence, generating a computationally assisted differential diagnosis informed by the individual’s personal genome. Visual interactivity allows the user to filter and update variant rankings by interacting with intermediate results. The tool also implements an adaptive approach for disease gene discovery based on patient phenotypes.ResultsWe retrospectively analyzed pilot cohort data from the Baylor Miraca Genetics Laboratory, demonstrating performance of the tool and workflow in the re-analysis of clinical exomes. Our tool assigned to clinically reported variants a median rank of 2, placing causal variants in the top 1 % of filtered candidates across the 47 cohort cases with reported molecular diagnoses of exome variants in OMIM Morbidmap genes. Our tool outperformed Phen-Gen, eXtasy, PhenIX, PHIVE, and hiPHIVE in the prioritization of these clinically reported variants.ConclusionsOur integrative paradigm can improve efficiency and, potentially, the quality of genomic medicine by more effectively utilizing available phenotype information, catalog data, and genomic knowledge.Electronic supplementary materialThe online version of this article (doi:10.1186/s13073-016-0261-8) contains supplementary material, which is available to authorized users.

Highlights

  • Genome-wide data are increasingly important in the clinical evaluation of human disease

  • We examined the ability of our scheme to recover known substructures in this catalog—in particular, its ability to distinguish disease classes as previously defined by the Human Disease Network (HDN) [29], as well as the Online Mendelian Inheritance in Man database (OMIM) Phenotypic Series [18, 29, 30]

  • We developed an algorithm for semantically driven disease gene discovery to provide a facility for discovering new gene-to-disease associations, an operation distinct from catalog-based variant prioritization

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Summary

Introduction

Genome-wide data are increasingly important in the clinical evaluation of human disease. Genome-wide technologies, including next-generation sequencing, have become increasingly affordable, rapid, and clinically utilized, in comparison to single gene screening These revolutionary advances in data acquisition have made large-scale genotyping an essential tool for genetic diagnostics and the identification of novel deleterious variants potentially contributing to disease. They hold great promise for the future of molecular diagnosis and management of patients with genetic disease [1,2,3,4,5,6]. The goal of integrated diagnostic approaches is to bring together variant knowledge with clinically ascertained patient phenotype characteristics to reach the best-informed diagnostic conclusions (Fig. 1a)

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