Abstract

BackgroundNetwork medicine is a promising new discipline that combines systems biology approaches and network science to understand the complexity of pathological phenotypes. Given the growing availability of personalized genomic and phenotypic profiles, network models offer a robust integrative framework for the analysis of "omics" data, allowing the characterization of the molecular aetiology of pathological processes underpinning genetic diseases.MethodsHere we make use of patient genomic data to exploit different network-based analyses to study genetic and phenotypic relationships between individuals. For this method, we analyzed a dataset of structural variants and phenotypes for 6,564 patients from the DECIPHER database, which encompasses one of the most comprehensive collections of pathogenic Copy Number Variations (CNVs) and their associated ontology-controlled phenotypes. We developed a computational strategy that identifies clusters of patients in a synthetic patient network according to their genetic overlap and phenotype enrichments.ResultsMany of these clusters of patients represent new genotype-phenotype associations, suggesting the identification of newly discovered phenotypically enriched loci (indicative of potential novel syndromes) that are currently absent from reference genomic disorder databases such as ClinVar, OMIM or DECIPHER itself.ConclusionsWe provide a high-resolution map of pathogenic phenotypes associated with their respective significant genomic regions and a new powerful tool for diagnosis of currently uncharacterized mutations leading to deleterious phenotypes and syndromes.Electronic supplementary materialThe online version of this article (doi:10.1186/s12864-016-2569-6) contains supplementary material, which is available to authorized users.

Highlights

  • Network medicine is a promising new discipline that combines systems biology approaches and network science to understand the complexity of pathological phenotypes

  • Recent genome wide association studies suggest that the lack of data for individual’s medical records is an important limitation to fully understand the genetic basis for many genomic disorders [16, 17]

  • Phenotypic and genotypic features of patient population The subset of 6,564 patients from the DECIPHER database used in this study includes the Copy Number Variations (CNVs) and clinical features (i.e., Human Phenotype Ontology (HPO) phenotypic terms) observed by expert physicians in these patients

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Summary

Introduction

Network medicine is a promising new discipline that combines systems biology approaches and network science to understand the complexity of pathological phenotypes. Recent genome wide association studies suggest that the lack of data for individual’s medical records is an important limitation to fully understand the genetic basis for many genomic disorders [16, 17]. Initiatives such as the Personal Genomes Project (PGP) [18], Genomics England (http://www.genomicsengland.co.uk/) and the Precision Medicine program [19] aim to provide descriptive records

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