Title of article :
Deep Neural Network for Somatic Mutation Classification
Author/Authors :
Wang,Haifeng School of Information Science and Engineering - Zaozhuang University, China , Wang,Chengche Bank of China Zhejiang Branch, Hangzhou, China , Qu, Hongchun School of Information Science and Engineering - Zaozhuang University, China
Pages :
10
From page :
1
To page :
10
Abstract :
The detection and characterization of somatic mutations have become the important means to analyze the occurrence and development of cancer and, ultimately, will help to select effective and precise treatment for specific cancer patients. It is very difficult to detect somatic mutations accurately from the massive sequencing data. In this paper, a forest-graph-embedded deep feed-forward network (forgeNet) is utilized to detect somatic mutations from the sequencing data. In forgeNet, the random forest (RF) or Gradient Boosting Machine (GBM) and graph-embedded deep feed-forward network (GEDFN) are utilized to extract features and implement classification, respectively. Three real somatic mutation datasets collected from 48 triple-negative breast cancers are utilized to test the somatic mutation detection performances of forgeNet. The detection results show that forgeNet could make the 0.05%–0.424% improvements in terms of area under the curve (AUC) compared with support vector machines and random forest.
Keywords :
Deep Neural Network , Somatic Mutation Classification
Journal title :
Scientific Programming
Serial Year :
2021
Full Text URL :
Record number :
2612956
Link To Document :
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