Khosravian Maede, Faramarzi Fateme Kazemi, Beigi Majid Mohammad, Behbahani Mandana, Mohabatkar Hassan
Department of Biotechnology, Faculty of Advanced Sciences and Technologies, University of Isfahan, Isfahan, Iran.
Protein Pept Lett. 2013 Feb;20(2):180-6. doi: 10.2174/092986613804725307.
Microbial resistance to antibiotics is a rising concern among health care professionals, driving them to search for alternative therapies. In the past few years, antimicrobial peptides (AMPs) have attracted a lot of attention as a substitute for conventional antibiotics. Antimicrobial peptides have a broad spectrum of activity and can act as antibacterial, antifungal, antiviral and sometimes even as anticancer drugs. The antibacterial peptides have little sequence homology, despite common properties. Since there is a need to develop a computational method for predicting the antibacterial peptides, in the present study, we have applied the concept of Chou's pseudo-amino acid composition (PseAAC) and machine learning methods for their classification. Our results demonstrate that using the concept of PseAAC and applying Support Vector Machine (SVM) can provide useful information to predict antibacterial peptides.
微生物对抗生素的耐药性日益引起医疗保健专业人员的关注,促使他们寻找替代疗法。在过去几年中,抗菌肽作为传统抗生素的替代品受到了广泛关注。抗菌肽具有广泛的活性,可作为抗菌、抗真菌、抗病毒药物,有时甚至可作为抗癌药物。尽管抗菌肽具有共同特性,但它们的序列同源性很低。由于需要开发一种预测抗菌肽的计算方法,在本研究中,我们应用了周的伪氨基酸组成(PseAAC)概念和机器学习方法对其进行分类。我们的结果表明,使用PseAAC概念并应用支持向量机(SVM)可以为预测抗菌肽提供有用信息。