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Medicinal Chemistry

Editor-in-Chief

ISSN (Print): 1573-4064
ISSN (Online): 1875-6638

Research Article

iATP: A Sequence Based Method for Identifying Anti-tubercular Peptides

Author(s): Wei Chen*, Pengmian Feng and Fulei Nie

Volume 16, Issue 5, 2020

Page: [620 - 625] Pages: 6

DOI: 10.2174/1573406415666191002152441

Price: $65

Abstract

Background: Tuberculosis is one of the biggest threats to human health. Recent studies have demonstrated that anti-tubercular peptides are promising candidates for the discovery of new anti-tubercular drugs. Since experimental methods are still labor intensive, it is highly desirable to develop automatic computational methods to identify anti-tubercular peptides from the huge amount of natural and synthetic peptides. Hence, accurate and fast computational methods are highly needed.

Methods and Results: In this study, a support vector machine based method was proposed to identify anti-tubercular peptides, in which the peptides were encoded by using the optimal g-gap dipeptide compositions. Comparative results demonstrated that our method outperforms existing methods on the same benchmark dataset. For the convenience of scientific community, a freely accessible web-server was built, which is available at http://lin-group.cn/server/iATP.

Conclusion: It is anticipated that the proposed method will become a useful tool for identifying anti-tubercular peptides.

Keywords: Tuberculosis, anti-tubercular peptides, g-gap dipeptide, support vector, machine, feature selection, web-server.

Graphical Abstract
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