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Prediction of Antimicrobial Peptides Based on Sequence Alignment and Support Vector Machine-Pairwise Algorithm Utilizing LZ-Complexity

机译:基于序列比对和支持向量机的基于LZ复杂度的配对算法对抗菌肽的预测

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摘要

This study concerns an attempt to establish a new method for predicting antimicrobial peptides (AMPs) which are important to the immune system. Recently, researchers are interested in designing alternative drugs based on AMPs because they have found that a large number of bacterial strains have become resistant to available antibiotics. However, researchers have encountered obstacles in the AMPs designing process as experiments to extract AMPs from protein sequences are costly and require a long set-up time. Therefore, a computational tool for AMPs prediction is needed to resolve this problem. In this study, an integrated algorithm is newly introduced to predict AMPs by integrating sequence alignment and support vector machine- (SVM-) LZ complexity pairwise algorithm. It was observed that, when all sequences in the training set are used, the sensitivity of the proposed algorithm is 95.28% in jackknife test and 87.59% in independent test, while the sensitivity obtained for jackknife test and independent test is 88.74% and 78.70%, respectively, when only the sequences that has less than 70% similarity are used. Applying the proposed algorithm may allow researchers to effectively predict AMPs from unknown protein peptide sequences with higher sensitivity.
机译:这项研究涉及尝试建立一种新方法来预测对免疫系统很重要的抗菌肽(AMP)。最近,研究人员对设计基于AMP的替代药物感兴趣,因为他们发现大量细菌菌株已对可用抗生素产生抗药性。但是,研究人员在AMPs设计过程中遇到了障碍,因为从蛋白质序列中提取AMPs的实验成本高昂,并且需要很长的设置时间。因此,需要用于AMP预测的计算工具来解决此问题。在这项研究中,通过引入序列比对和支持向量机(SVM)LZ复杂度成对算法,新引入了一种集成算法来预测AMP。观察到,当使用训练集中的所有序列时,该算法在algorithm刀测试中的灵敏度为95.28%,在独立测试中的灵敏度为87.59%,而在jack刀测试和独立测试中获得的灵敏度分别为88.74%和78.70%。当仅使用相似性小于70%的序列时。应用提出的算法可能使研究人员能够以更高的灵敏度从未知的蛋白质肽序列有效预测AMP。

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