Back to Search Start Over

Comprehensive characterization of protein–protein interactions perturbed by disease mutations

Authors :
Ruth A. Keri
Justin D. Lathia
Raul Rabadan
Elliott M. Antman
Felice C. Lightstone
Jessica A. Castrillon
Rui-Sheng Wang
Tong Hao
Marc Vidal
Zehui Liu
Yadi Zhou
David E. Hill
Hong Yue
Yuan Hou
Joseph Loscalzo
Jiansong Fang
Feixiong Cheng
Junfei Zhao
Yang Wang
William R. Martin
Jing Ma
Charis Eng
Weiqiang Lu
Jin Huang
Source :
Nat Genet
Publication Year :
2021
Publisher :
Springer Science and Business Media LLC, 2021.

Abstract

Technological and computational advances in genomics and interactomics have made it possible to identify how disease mutations perturb protein–protein interaction (PPI) networks within human cells. Here, we show that disease-associated germline variants are significantly enriched in sequences encoding PPI interfaces compared to variants identified in healthy participants from the projects 1000 Genomes and ExAC. Somatic missense mutations are also significantly enriched in PPI interfaces compared to noninterfaces in 10,861 tumor exomes. We computationally identified 470 putative oncoPPIs in a pan-cancer analysis and demonstrate that oncoPPIs are highly correlated with patient survival and drug resistance/sensitivity. We experimentally validate the network effects of 13 oncoPPIs using a systematic binary interaction assay, and also demonstrate the functional consequences of two of these on tumor cell growth. In summary, this human interactome network framework provides a powerful tool for prioritization of alleles with PPI-perturbing mutations to inform pathobiological mechanism- and genotype-based therapeutic discovery. Human disease mutations affect protein–protein interfaces in a three-dimensional structurally resolved interaction network. Predicted oncoPPIs in cancer correlate with survival and drug sensitivity, and affect growth in vitro, supporting their relevance to disease pathogenesis.

Details

ISSN :
15461718 and 10614036
Volume :
53
Database :
OpenAIRE
Journal :
Nature Genetics
Accession number :
edsair.doi.dedup.....6bdb54367490da363c80c4f4d3a0c1d9