Research progress of feature selection and machine learning methods for mass spectrometry-based protein biomarker discovery
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National Natural Science Foundation of China (No. 21605159).

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    Abstract:

    With the development of mass spectrometry technologies and bioinformatics analysis algorithms, disease research-driven human proteome project (HPP) is advancing rapidly. Protein biomarkers play critical roles in clinical applications and the biomarker discovery strategies and methods have become one of research hotspots. Feature selection and machine learning methods have good effects on solving the "dimensionality" and "sparsity" problems of proteomics data, which have been widely used in the discovery of protein biomarkers. Here, we systematically review the strategy of protein biomarker discovery and the frequently-used machine learning methods. Also, the review illustrates the prospects and limitations of deep learning in this field. It is aimed at providing a valuable reference for corresponding researchers.

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徐开琨,韩明飞,黄传玺,常乘,朱云平. 基于质谱的蛋白质生物标志物发现中的特征选择与机器学习方法研究进展[J]. Chinese Journal of Biotechnology, 2019, 35(9): 1619-1632

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  • Received:February 14,2019
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  • Online: September 25,2019
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