Virmid: accurate detection of somatic mutations with sample impurity inference

被引:0
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作者
Sangwoo Kim
Kyowon Jeong
Kunal Bhutani
Jeong Ho Lee
Anand Patel
Eric Scott
Hojung Nam
Hayan Lee
Joseph G Gleeson
Vineet Bafna
机构
[1] University of California at San Diego,Department of Computer Science and Engineering
[2] University of California at San Diego,Department of Electrical and Computer Engineering
[3] University of California at San Diego,Institute for Genomic Medicine, Rady Children's Hospital
[4] Gwangju Institute of Science and Technology,School of Information and Communications
[5] Stony Brook University,Department of Computer Science
[6] KAIST,Graduate School of Medical Science and Engineering
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关键词
Somatic Mutation; Read Depth; Breast Cancer Data; Genotype Probability; Mutation Burden;
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摘要
Detection of somatic variation using sequence from disease-control matched data sets is a critical first step. In many cases including cancer, however, it is hard to isolate pure disease tissue, and the impurity hinders accurate mutation analysis by disrupting overall allele frequencies. Here, we propose a new method, Virmid, that explicitly determines the level of impurity in the sample, and uses it for improved detection of somatic variation. Extensive tests on simulated and real sequencing data from breast cancer and hemimegalencephaly demonstrate the power of our model. A software implementation of our method is available at http://sourceforge.net/projects/virmid/.
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