iDEF-PseRAAC: Identifying the Defensin Peptide by Using Reduced Amino Acid Composition Descriptor

Yongchun Zuo, Yu Chang, Shenghui Huang, Lei Zheng, Lei Yang, G. Cao
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引用次数: 13

Abstract

Defensins as 1 of major classes of host defense peptides play a significant role in the innate immunity, which are extremely evolved in almost all living organisms. Developing high-throughput computational methods can accurately help in designing drugs or medical means to defense against pathogens. To take up such a challenge, an up-to-date server based on rigorous benchmark dataset, referred to as iDEF-PseRAAC, was designed for predicting the defensin family in this study. By extracting primary sequence compositions based on different types of reduced amino acid alphabet, it was calculated that the best overall accuracy of the selected feature subset was achieved to 92.38%. Therefore, we can conclude that the information provided by abundant types of amino acid reduction will provide efficient and rational methodology for defensin identification. And, a free online server is freely available for academic users at http://bioinfor.imu.edu.cn/idpf. We hold expectations that iDEF-PseRAAC may be a promising weapon for the function annotation about the defensins protein.
iDEF-PseRAAC:利用还原氨基酸组成描述符识别防御素肽
防御素作为宿主防御肽的主要种类之一,在机体的先天免疫中起着重要的作用,在几乎所有生物体内都是高度进化的。开发高通量计算方法可以准确地帮助设计药物或医疗手段来防御病原体。为了应对这一挑战,本研究设计了一个基于严格基准数据集的最新服务器,称为iDEF-PseRAAC,用于预测防御家族。通过对不同类型的还原氨基酸字母表提取初级序列组成,计算出所选特征子集的最佳总体准确率为92.38%。因此,我们可以得出结论,丰富的氨基酸还原类型提供的信息将为防御素鉴定提供有效和合理的方法。此外,学术用户可以在http://bioinfor.imu.edu.cn/idpf上免费使用免费的在线服务器。我们期望iDEF-PseRAAC可能成为防御蛋白功能注释的一个有希望的武器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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