The Development of Machine Learning Methods in Cell-Penetrating Peptides Identification: A Brief Review
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Published:2019-05-22
Issue:3
Volume:20
Page:217-223
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ISSN:1389-2002
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Container-title:Current Drug Metabolism
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language:en
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Short-container-title:CDM
Author:
Wei Huan-Huan1, Yang Wuritu1, Tang Hua2, Lin Hao1
Affiliation:
1. Key Laboratory for NeuroInformation of Ministry of Education, School of Life Science and Technology, Center for Informational Biology, University of Electronic Science and Technology of China, Chengdu, China 2. Department of Pathophysiology, Southwest Medical University, Luzhou, China
Abstract
Background:Cell-penetrating Peptides (CPPs) are important short peptides that facilitate cellular intake or uptake of various molecules. CPPs can transport drug molecules through the plasma membrane and send these molecules to different cellular organelles. Thus, CPP identification and related mechanisms have been extensively explored. In order to reveal the penetration mechanisms of a large number of CPPs, it is necessary to develop convenient and fast methods for CPPs identification.Methods:Biochemical experiments can provide precise details for accurately identifying CPP, but these methods are expensive and laborious. To overcome these disadvantages, several computational methods have been developed to identify CPPs. We have performed review on the development of machine learning methods in CPP identification. This review provides an insight into CPP identification.Results:We summarized the machine learning-based CPP identification methods and compared the construction strategies of 11 different computational methods. Furthermore, we pointed out the limitations and difficulties in predicting CPPs.Conclusion:In this review, the last studies on CPP identification using machine learning method were reported. We also discussed the future development direction of CPP recognition with computational methods.
Funder
Research program of science and technology at universities of Inner Mongolia Autonomous Region Health Department of Sichuan Province National Natural Science Foundation of China Fundamental Research Funds for the Central Universities of China Applied Basic Research Program of Sichuan Province
Publisher
Bentham Science Publishers Ltd.
Subject
Clinical Biochemistry,Pharmacology
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