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首页> 外文期刊>BMC Bioinformatics >DIRProt: a computational approach for discriminating insecticide resistant proteins from non-resistant proteins
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DIRProt: a computational approach for discriminating insecticide resistant proteins from non-resistant proteins

机译:DIRProt:一种区分抗药性蛋白质和非抗药性蛋白质的计算方法

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Background Insecticide resistance is a major challenge for the control program of insect pests in the fields of crop protection, human and animal health etc. Resistance to different insecticides is conferred by the proteins encoded from certain class of genes of the insects. To distinguish the insecticide resistant proteins from non-resistant proteins, no computational tool is available till date. Thus, development of such a computational tool will be helpful in predicting the insecticide resistant proteins, which can be targeted for developing appropriate insecticides. Results Five different sets of feature viz., amino acid composition (AAC), di-peptide composition (DPC), pseudo amino acid composition (PAAC), composition-transition-distribution (CTD) and auto-correlation function (ACF) were used to map the protein sequences into numeric feature vectors. The encoded numeric vectors were then used as input in support vector machine (SVM) for classification of insecticide resistant and non-resistant proteins. Higher accuracies were obtained under RBF kernel than that of other kernels. Further, accuracies were observed to be higher for DPC feature set as compared to others. The proposed approach achieved an overall accuracy of >90% in discriminating resistant from non-resistant proteins. Further, the two classes of resistant proteins i.e., detoxification-based and target-based were discriminated from non-resistant proteins with >95% accuracy. Besides, >95% accuracy was also observed for discrimination of proteins involved in detoxification- and target-based resistance mechanisms. The proposed approach not only outperformed Blastp, PSI-Blast and Delta-Blast algorithms, but also achieved >92% accuracy while assessed using an independent dataset of 75 insecticide resistant proteins. Conclusions This paper presents the first computational approach for discriminating the insecticide resistant proteins from non-resistant proteins. Based on the proposed approach, an online prediction server DIRProt has also been developed for computational prediction of insecticide resistant proteins, which is accessible at http://cabgrid.res.in:8080/dirprot/ . The proposed approach is believed to supplement the efforts needed to develop dynamic insecticides in wet-lab by targeting the insecticide resistant proteins.
机译:背景技术杀虫剂抗性是在作物保护,人类和动物健康等领域中对害虫的控制程序的主要挑战。对不同杀虫剂的抗性是由昆虫某些基因的编码蛋白赋予的。要将抗药性蛋白质与非抗药性蛋白质区分开来,到目前为止还没有可用的计算工具。因此,开发这种计算工具将有助于预测抗药性蛋白,该蛋白可用于开发合适的杀虫剂。结果使用了五组不同的特征,即氨基酸组成(AAC),二肽组成(DPC),假氨基酸组成(PAAC),组成转变分布(CTD)和自相关函数(ACF)将蛋白质序列映射到数字特征向量中。然后将编码的数字向量用作支持向量机(SVM)的输入,以对杀虫剂抗性和非抗性蛋白质进行分类。在RBF内核下获得的准确性高于其他内核。此外,与其他相比,DPC功能集的准确性更高。所提出的方法在区分抗药性和非抗药性蛋白方面达到了> 90%的总体准确度。此外,以> 95%的准确度将两类抗性蛋白质,即基于解毒和基于靶标的蛋白质与非抗性蛋白质区分开。此外,还观察到了> 95%的准确度,可用于识别与排毒和靶标抗性机制有关的蛋白质。所提出的方法不仅优于Blastp,PSI-Blast和Delta-Blast算法,而且在使用75种抗药性抗性蛋白质的独立数据集进行评估的同时,其准确性也达到了92%以上。结论本文提出了区分抗药性蛋白和非抗性蛋白的第一种计算方法。基于提出的方法,还开发了在线预测服务器DIRProt来对杀虫剂抗性蛋白进行计算预测,可从http://cabgrid.res.in:8080/dirprot/访问。据信,所提出的方法通过靶向杀虫剂抗性蛋白来补充在湿实验室中开发动态杀虫剂所需的工作。

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