Predicting the Activity of Antimicrobial Peptides with Amino Acid Topological Information

Author(s): Mao Shu, Rui Yu, Yunru Zhang, Juan Wang, Li Yang, Li Wang, Zhihua Lin.

Journal Name: Medicinal Chemistry

Volume 9 , Issue 1 , 2013

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Abstract:

In this paper, VSTPV, was recruited as a novel set of structural and topological descriptors derived from principal component analysis (PCA) on 85 structural and topological variables of 166 coded and non-coded amino acids. By using partial least squares (PLS), we applied VSTPV for the study of quantitative structure-activity models (QSARs) studies on two peptide panels as 101 synthetic cationic Antimicrobial polypeptides (CAMELs), and 28 bovine lactoferricin- (17–31)-pentadecapeptides (LFB). The results of QSARs models were superior to that of the earlier studies, with squared correlative coefficient R2 and cross-validated Q2 of 0.783, 0.656; and 0.864, 0.793, respectively. So, VSTPV descriptors were confirmed to be competent to extract information on 85 structural variables and to relate with biological activities.

Keywords: Antimicrobial peptides (AMPs), VSTPV, Genetic algorithm (GA), Partial least square (PLS), Quantitative structure- activity relationship (QSAR)

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Article Details

VOLUME: 9
ISSUE: 1
Year: 2013
Page: [32 - 44]
Pages: 13
DOI: 10.2174/1573406411309010032

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