• Traitements

  • Ressources et infrastructures

Leveraging protein dynamics to identify cancer mutational hotspots using 3D structures

Cet article présente une approche méthodologique, intégrant la dynamique et la structure tridimensionnelle des protéines, pour identifier des gènes impliqués dans le développement de cancers

The identification of cancer drivers is essential for realizing the goal of precision medicine in cancer. By integrating 3D protein structures and dynamics, we describe a framework to identify cancer driver genes using a sensitive search of mutational hotspot communities in 3D structures. Our workflow identifies previously identified driver genes as well as unidentified putative drivers.Large-scale exome sequencing of tumors has enabled the identification of cancer drivers using recurrence-based approaches. Some of these methods also employ 3D protein structures to identify mutational hotspots in cancer-associated genes. In determining such mutational clusters in structures, existing approaches overlook protein dynamics, despite its essential role in protein function. We present a framework to identify cancer driver genes using a dynamics-based search of mutational hotspot communities. Mutations are mapped to protein structures, which are partitioned into distinct residue communities. These communities are identified in a framework where residue–residue contact edges are weighted by correlated motions (as inferred by dynamics-based models). We then search for signals of positive selection among these residue communities to identify putative driver genes, while applying our method to the TCGA (The Cancer Genome Atlas) PanCancer Atlas missense mutation catalog. Overall, we predict 1 or more mutational hotspots within the resolved structures of proteins encoded by 434 genes. These genes were enriched among biological processes associated with tumor progression. Additionally, a comparison between our approach and existing cancer hotspot detection methods using structural data suggests that including protein dynamics significantly increases the sensitivity of driver detection.

Proceedings of the National Academy of Sciences , résumé, 2018

Voir le bulletin