| Literature DB >> 30185652 |
Derrick E Wood1, James R White1, Andrew Georgiadis1, Beth Van Emburgh1, Sonya Parpart-Li1, Jason Mitchell1, Valsamo Anagnostou2, Noushin Niknafs2, Rachel Karchin2,3, Eniko Papp1, Christine McCord1, Peter LoVerso1, David Riley1, Luis A Diaz4, Siân Jones1, Mark Sausen1, Victor E Velculescu5, Samuel V Angiuoli6.
Abstract
Variability in the accuracy of somatic mutation detection may affect the discovery of alterations and the therapeutic management of cancer patients. To address this issue, we developed a somatic mutation discovery approach based on machine learning that outperformed existing methods in identifying experimentally validated tumor alterations (sensitivity of 97% versus 90 to 99%; positive predictive value of 98% versus 34 to 92%). Analysis of paired tumor-normal exome data from 1368 TCGA (The Cancer Genome Atlas) samples using this method revealed concordance for 74% of mutation calls but also identified likely false-positive and false-negative changes in TCGA data, including in clinically actionable genes. Determination of high-quality somatic mutation calls improved tumor mutation load-based predictions of clinical outcome for melanoma and lung cancer patients previously treated with immune checkpoint inhibitors. Integration of high-quality machine learning mutation detection in clinical next-generation sequencing (NGS) analyses increased the accuracy of test results compared to other clinical sequencing analyses. These analyses provide an approach for improved identification of tumor-specific mutations and have important implications for research and clinical management of cancer patients.Entities:
Mesh:
Year: 2018 PMID: 30185652 PMCID: PMC6481619 DOI: 10.1126/scitranslmed.aar7939
Source DB: PubMed Journal: Sci Transl Med ISSN: 1946-6234 Impact factor: 17.956