| Literature DB >> 29892012 |
Siwei Chen1,2,3, Robert Fragoza1,2,3, Lambertus Klei4, Yuan Liu1,2, Jiebiao Wang5, Kathryn Roeder6,7, Bernie Devlin8, Haiyuan Yu9,10.
Abstract
Identifying disease-associated missense mutations remains a challenge, especially in large-scale sequencing studies. Here we establish an experimentally and computationally integrated approach to investigate the functional impact of missense mutations in the context of the human interactome network and test our approach by analyzing ~2,000 de novo missense mutations found in autism subjects and their unaffected siblings. Interaction-disrupting de novo missense mutations are more common in autism probands, principally affect hub proteins, and disrupt a significantly higher fraction of hub interactions than in unaffected siblings. Moreover, they tend to disrupt interactions involving genes previously implicated in autism, providing complementary evidence that strengthens previously identified associations and enhances the discovery of new ones. Importantly, by analyzing de novo missense mutation data from six disorders, we demonstrate that our interactome perturbation approach offers a generalizable framework for identifying and prioritizing missense mutations that contribute to the risk of human disease.Entities:
Mesh:
Year: 2018 PMID: 29892012 PMCID: PMC6314957 DOI: 10.1038/s41588-018-0130-z
Source DB: PubMed Journal: Nat Genet ISSN: 1061-4036 Impact factor: 38.330