Abstract

Microsatellite instability (MSI), the spontaneous loss or gain of nucleotides from repetitive DNA tracts, is a diagnostic phenotype for gastrointestinal, endometrial, and colorectal tumors, yet the landscape of instability events across a wider variety of cancer types remains poorly understood. To explore MSI across malignancies, we examined 5,930 cancer exomes from 18 cancer types at more than 200,000 microsatellite loci and constructed a genomic classifier for MSI. We identified MSI-positive tumors in 14 of the 18 cancer types. We also identified loci that were more likely to be unstable in particular cancer types, resulting in specific instability signatures that involved cancer-associated genes, suggesting that instability patterns reflect selective pressures and can potentially identify novel cancer drivers. We also observed a correlation between survival outcomes and the overall burden of unstable microsatellites, suggesting that MSI may be a continuous, rather than discrete, phenotype that is informative across cancer types. These analyses offer insight into conserved and cancer-specific properties of MSI and reveal opportunities for improved methods of clinical MSI diagnosis and cancer gene discovery.

Keywords

Microsatellite instabilityBiologyCancerColorectal cancerEndometrial cancerGenome instabilityDNA mismatch repairMicrosatelliteGeneticsExomeExome sequencingComputational biologyPhenotypeGeneDNAAlleleDNA damage

MeSH Terms

ClassificationGenomicsHumansMicrosatellite InstabilityNeoplasmsPhenotypePrognosisSurvival Rate

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Publication Info

Year
2016
Type
article
Volume
22
Issue
11
Pages
1342-1350
Citations
969
Access
Closed

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969
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Cite This

Ronald J. Hause, Colin C. Pritchard, Jay Shendure et al. (2016). Classification and characterization of microsatellite instability across 18 cancer types. Nature Medicine , 22 (11) , 1342-1350. https://doi.org/10.1038/nm.4191

Identifiers

DOI
10.1038/nm.4191
PMID
27694933

Data Quality

Data completeness: 81%