Identifying recurrent mutations in cancer reveals widespread lineage diversity and mutational specificity Journal Article


Authors: Chang, M. T.; Asthana, S.; Gao, S. P.; Lee, B. H.; Chapman, J. S.; Kandoth, C.; Gao, J.; Socci, N. D.; Solit, D. B.; Olshen, A. B.; Schultz, N.; Taylor, B. S.
Article Title: Identifying recurrent mutations in cancer reveals widespread lineage diversity and mutational specificity
Abstract: Mutational hotspots indicate selective pressure across a population of tumor samples, but their prevalence within and across cancer types is incompletely characterized. An approach to detect significantly mutated residues, rather than methods that identify recurrently mutated genes, may uncover new biologically and therapeutically relevant driver mutations. Here, we developed a statistical algorithm to identify recurrently mutated residues in tumor samples. We applied the algorithm to 11,119 human tumors, spanning 41 cancer types, and identified 470 somatic substitution hotspots in 275 genes. We find that half of all human tumors possess one or more mutational hotspots with widespread lineage-, position- and mutant allele-specific differences, many of which are likely functional. In total, 243 hotspots were novel and appeared to affect a broad spectrum of molecular function, including hotspots at paralogous residues of Ras-related small GTPases RAC1 and RRAS2. Redefining hotspots at mutant amino acid resolution will help elucidate the allele-specific differences in their function and could have important therapeutic implications. © 2016 Nature America, Inc.
Keywords: genes; tumors; diseases; mutated genes; tumor samples; recurrent mutation; broad spectrum; molecular function; mutant alleles; selective pressure; statistical algorithm
Journal Title: Nature Biotechnology
Volume: 34
Issue: 2
ISSN: 1087-0156
Publisher: Nature Publishing Group  
Date Published: 2016-02-01
Start Page: 155
End Page: 163
Language: English
DOI: 10.1038/nbt.3391
PROVIDER: scopus
PMCID: PMC4744099
PUBMED: 26619011
DOI/URL:
Notes: Article -- Export Date: 3 March 2016 -- Source: Scopus
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MSK Authors
  1. David Solit
    779 Solit
  2. Nicholas D Socci
    266 Socci
  3. Sizhi Gao
    47 Gao
  4. Jianjiong Gao
    132 Gao
  5. Barry Stephen Taylor
    238 Taylor
  6. Nikolaus D Schultz
    487 Schultz
  7. Matthew   Chang
    29 Chang
  8. Cyriac Kandoth
    31 Kandoth
  9. Byron Hing Lung Lee
    14 Lee