| Literature DB >> 34015270 |
Peng Zhang1, Aurélie Cobat2, Yoon-Seung Lee3, Yiming Wu4, Cigdem Sevim Bayrak4, Clémentine Boccon-Gibod3, Daniela Matuozzo2, Lazaro Lorenzo2, Aayushee Jain4, Soraya Boucherit2, Louis Vallée5, Burkhard Stüve6, Stéphane Chabrier7, Jean-Laurent Casanova8, Laurent Abel9, Shen-Ying Zhang9, Yuval Itan10.
Abstract
The human genetic dissection of clinical phenotypes is complicated by genetic heterogeneity. Gene burden approaches that detect genetic signals in case-control studies are underpowered in genetically heterogeneous cohorts. We therefore developed a genome-wide computational method, network-based heterogeneity clustering (NHC), to detect physiological homogeneity in the midst of genetic heterogeneity. Simulation studies showed our method to be capable of systematically converging genes in biological proximity on the background biological interaction network, and capturing gene clusters harboring presumably deleterious variants, in an efficient and unbiased manner. We applied NHC to whole-exome sequencing data from a cohort of 122 individuals with herpes simplex encephalitis (HSE), including 13 individuals with previously published monogenic inborn errors of TLR3-dependent IFN-α/β immunity. The top gene cluster identified by our approach successfully detected and prioritized all causal variants of five TLR3 pathway genes in the 13 previously reported individuals. This approach also suggested candidate variants of three reported genes and four candidate genes from the same pathway in another ten previously unstudied individuals. TLR3 responsiveness was impaired in dermal fibroblasts from four of the five individuals tested, suggesting that the variants detected were causal for HSE. NHC is, therefore, an effective and unbiased approach for unraveling genetic heterogeneity by detecting physiological homogeneity.Entities:
Keywords: cohort analysis; gene clustering; genetic heterogeneity; herpes simplex encephalitis; incomplete penetrance; network biology; next-generation sequencing; physiological homogeneity; software
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Year: 2021 PMID: 34015270 PMCID: PMC8206396 DOI: 10.1016/j.ajhg.2021.04.023
Source DB: PubMed Journal: Am J Hum Genet ISSN: 0002-9297 Impact factor: 11.025