usDSM: a novel method for deleterious synonymous mutation prediction using undersampling scheme

Author:

Tang Xi1,Zhang Tao2,Cheng Na3,Wang Huadong2,Zheng Chun-Hou2,Xia Junfeng3,Zhang Tiejun4

Affiliation:

1. GMU-GIBH Joint School of Life Sciences, Guangzhou Medical University and the Institutes of Physical Science and Information Technology, Anhui University, China

2. School of Computer Science and Technology, Anhui University, China

3. Institutes of Physical Science and Information Technology, Anhui University, China

4. GMU-GIBH Joint School of Life Sciences, Guangzhou Medical University, China

Abstract

Abstract Although synonymous mutations do not alter the encoded amino acids, they may impact protein function by interfering with the regulation of RNA splicing or altering transcript splicing. New progress on next-generation sequencing technologies has put the exploration of synonymous mutations at the forefront of precision medicine. Several approaches have been proposed for predicting the deleterious synonymous mutations specifically, but their performance is limited by imbalance of the positive and negative samples. In this study, we firstly expanded the number of samples greatly from various data sources and compared six undersampling strategies to solve the problem of the imbalanced datasets. The results suggested that cluster centroid is the most effective scheme. Secondly, we presented a computational model, undersampling scheme based method for deleterious synonymous mutation (usDSM) prediction, using 14-dimensional biology features and random forest classifier to detect the deleterious synonymous mutation. The results on the test datasets indicated that the proposed usDSM model can attain superior performance in comparison with other state-of-the-art machine learning methods. Lastly, we found that the deep learning model did not play a substantial role in deleterious synonymous mutation prediction through a lot of experiments, although it achieves superior results in other fields. In conclusion, we hope our work will contribute to the future development of computational methods for a more accurate prediction of the deleterious effect of human synonymous mutation. The web server of usDSM is freely accessible at http://usdsm.xialab.info/.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

Academic Scholar of the High Level University

Recruitment Program for Leading Talent Team of Anhui Province

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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