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Protein-structure-guided discovery of functional mutations across 19 cancer types

Authors :
Sohini Sengupta
Adam D. Scott
R. Jay Mashl
Qunyuan Zhang
Prag Batra
Piyush Tripathi
John W. Wallis
Matthew H. Bailey
Jie Ning
Wen-Wei Liang
Kai Ye
Carolyn Lou
Matthew A. Wyczalkowski
Sam Q. Sun
Beifang Niu
Michael D. McLellan
Li Ding
Michael C. Wendl
Feng Chen
Source :
Nature Genetics. 48:827-837
Publication Year :
2016
Publisher :
Springer Science and Business Media LLC, 2016.

Abstract

Local concentrations of mutations are well known in human cancers. However, their three-dimensional spatial relationships in the encoded protein have yet to be systematically explored. We developed a computational tool, HotSpot3D, to identify such spatial hotspots (clusters) and to interpret the potential function of variants within them. We applied HotSpot3D to >4,400 TCGA tumors across 19 cancer types, discovering >6,000 intra- and intermolecular clusters, some of which showed tumor and/or tissue specificity. In addition, we identified 369 rare mutations in genes including TP53, PTEN, VHL, EGFR, and FBXW7 and 99 medium-recurrence mutations in genes such as RUNX1, MTOR, CA3, PI3, and PTPN11, all mapping within clusters having potential functional implications. As a proof of concept, we validated our predictions in EGFR using high-throughput phosphorylation data and cell-line-based experimental evaluation. Finally, mutation-drug cluster and network analysis predicted over 800 promising candidates for druggable mutations, raising new possibilities for designing personalized treatments for patients carrying specific mutations.

Details

ISSN :
15461718 and 10614036
Volume :
48
Database :
OpenAIRE
Journal :
Nature Genetics
Accession number :
edsair.doi.dedup.....093db4adf7728c38c1bb2dfabdf1f86d