Systematic analysis of mutation distribution in three dimensional protein structures identifies cancer driver genes

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作者
Akihiro Fujimoto
Yukinori Okada
Keith A. Boroevich
Tatsuhiko Tsunoda
Hiroaki Taniguchi
Hidewaki Nakagawa
机构
[1] Laboratory for Genome Sequencing Analysis,Department of Drug Discovery Medicine
[2] RIKEN Center for Integrative Medical Sciences,Department of Human Genetics and Disease Diversity
[3] Graduate School of Medicine,undefined
[4] Kyoto University,undefined
[5] Laboratory for Statistical Analysis,undefined
[6] RIKEN Center for Integrative Medical Sciences,undefined
[7] Graduate School of Medical and Dental Sciences,undefined
[8] Tokyo Medical and Dental University,undefined
[9] Laboratory for Medical Science Mathematics,undefined
[10] RIKEN Center for Integrative Medical Sciences,undefined
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摘要
Protein tertiary structure determines molecular function, interaction and stability of the protein, therefore distribution of mutation in the tertiary structure can facilitate the identification of new driver genes in cancer. To analyze mutation distribution in protein tertiary structures, we applied a novel three dimensional permutation test to the mutation positions. We analyzed somatic mutation datasets of 21 types of cancers obtained from exome sequencing conducted by the TCGA project. Of the 3,622 genes that had ≥3 mutations in the regions with tertiary structure data, 106 genes showed significant skew in mutation distribution. Known tumor suppressors and oncogenes were significantly enriched in these identified cancer gene sets. Physical distances between mutations in known oncogenes were significantly smaller than those of tumor suppressors. Twenty-three genes were detected in multiple cancers. Candidate genes with significant skew of the 3D mutation distribution included kinases (MAPK1, EPHA5, ERBB3 and ERBB4), an apoptosis related gene (APP), an RNA splicing factor (SF1), a miRNA processing factor (DICER1), an E3 ubiquitin ligase (CUL1) and transcription factors (KLF5 and EEF1B2). Our study suggests that systematic analysis of mutation distribution in the tertiary protein structure can help identify cancer driver genes.
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