2012
DOI: 10.1186/1471-2164-13-s4-s9
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Domain landscapes of somatic mutations in cancer

Abstract: BackgroundLarge-scale tumor sequencing projects are now underway to identify genetic mutations that drive tumor initiation and development. Most studies take a gene-based approach to identifying driver mutations, highlighting genes mutated in a large percentage of tumor samples as those likely to contain driver mutations. However, this gene-based approach usually does not consider the position of the mutation within the gene or the functional context the position of the mutation provides. Here we introduce a n… Show more

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Cited by 55 publications
(55 citation statements)
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“…For example, some of the most frequent oncogenic mutations in human cancer affect analogous residues of the activation segment of the kinase domain and cause constitutive activation of several oncogenes, including FLT3 D835 mutations in acute myeloid leukemia, KIT D816 mutations in gastrointestinal stromal tumors, and BRAF V600 mutations in melanoma (Dibb et al, 2004; Greenman et al, 2007). Proteome-wide bioinformatics analysis of mutations in domains have been performed to identify domains enriched for alterations (Nehrt et al, 2012; Peterson et al, 2012; Yang et al, 2015) as well as to detect significantly mutated domain hotspots using multiple sequence analysis (Peterson et al, 2010; Yue et al, 2010). We here extend upon these analyses by performing a systematic pan-cancer analysis of recurrence of mutations in protein domains (hotspots and enrichment of mutations across the domain body) and identify dozes of unreported cancer-associated mutations that are not detection using standard gene-based approaches.…”
Section: Introductionmentioning
confidence: 99%
“…For example, some of the most frequent oncogenic mutations in human cancer affect analogous residues of the activation segment of the kinase domain and cause constitutive activation of several oncogenes, including FLT3 D835 mutations in acute myeloid leukemia, KIT D816 mutations in gastrointestinal stromal tumors, and BRAF V600 mutations in melanoma (Dibb et al, 2004; Greenman et al, 2007). Proteome-wide bioinformatics analysis of mutations in domains have been performed to identify domains enriched for alterations (Nehrt et al, 2012; Peterson et al, 2012; Yang et al, 2015) as well as to detect significantly mutated domain hotspots using multiple sequence analysis (Peterson et al, 2010; Yue et al, 2010). We here extend upon these analyses by performing a systematic pan-cancer analysis of recurrence of mutations in protein domains (hotspots and enrichment of mutations across the domain body) and identify dozes of unreported cancer-associated mutations that are not detection using standard gene-based approaches.…”
Section: Introductionmentioning
confidence: 99%
“…Tuupanen et al 152 observe mutations in CTTNBP2 in colorectal cancer cases. Nehrt et al 153 also somatic mutations in colon cancer. After the treatment of ETC-1922159, CT-TNBP2 was found to be down regulated and this is indicated by the pipeline with a low rank of 93.…”
Section: Dicationmentioning
confidence: 98%
“…Although most of the analysis of cancer mutations is based around a gene centric view, a few studies have focused on domain-based analyses [45,46][50] and they may be particularly fruitful when studying mechanisms of activation of proteins. Larger proteins comprise recognizable smaller sequence domains, which recur in other proteins in various combinations.…”
Section: Domain-based Approaches At Identifying Mutational Hotspotsmentioning
confidence: 99%
“…Proteome-wide analyses have been performed to identify domains enriched in missense mutations [45,47] [50] and to identify domain-centric positions of hotspot missense mutations [48,49] [50]. These studies focused exclusively on missense mutation and as yet, little attempt was to use these data to distinguish between activating and loss of function mutations in the majority of cases.…”
Section: Domain-based Approaches At Identifying Mutational Hotspotsmentioning
confidence: 99%