| Literature DB >> 35059128 |
Jin Zhang1, Longbing Yang2, Zhuqing Tian2, Wenjing Zhao2, Chaoqin Sun2, Lijuan Zhu2, Mingjiao Huang2, Guo Guo2,3,4, Guiyou Liang4.
Abstract
Antifungal peptides are effective, biocompatible, and biodegradable, and thus, they are promising to be the next generation of drugs for treating infections caused by fungi. The identification processes of highly active peptides, however, are still time-consuming and labor-intensive. Quantitative structure-activity relationships (QSARs) have dramatically facilitated the discovery of many bioactive drug molecules without a priori knowledge. In this study, we have established an effective QSAR protocol for screening antifungal peptides. The screening protocol integrates an accurate antifungal peptide classification model and four activity prediction models against specified target fungi. A demonstrative application was performed on more than three million candidate peptides, and three outstanding peptides were identified. The whole screening took only a few days, which was much faster than our previous experimental screening works. In conclusion, the protocol is useful and effective for reducing repetitive laboratory efforts in antifungal peptide discovery. The prediction server (antifungal Web server) is freely available at www.chemoinfolab.com/antifungal.Entities:
Year: 2021 PMID: 35059128 PMCID: PMC8762751 DOI: 10.1021/acsmedchemlett.1c00556
Source DB: PubMed Journal: ACS Med Chem Lett ISSN: 1948-5875 Impact factor: 4.345