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首页> 外文期刊>BMC Genomics >Optimal selection of molecular descriptors for antimicrobial peptides classification: an evolutionary feature weighting approach
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Optimal selection of molecular descriptors for antimicrobial peptides classification: an evolutionary feature weighting approach

机译:抗菌肽分类分子描述夹的最佳选择:进化特征加权方法

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Antimicrobial peptides are a promising alternative for combating pathogens resistant to conventional antibiotics. Computer-assisted peptide discovery strategies are necessary to automatically assess a significant amount of data by generating models that efficiently classify what an antimicrobial peptide is, before its evaluation in the wet lab. Model's performance depends on the selection of molecular descriptors for which an efficient and effective approach has recently been proposed. Unfortunately, how to adapt this method to the selection of molecular descriptors for the classification of antimicrobial peptides and the performance it can achieve, have only preliminary been explored. We propose an adaptation of this successful feature selection approach for the weighting of molecular descriptors and assess its performance. The evaluation is conducted on six high-quality benchmark datasets that have previously been used for the empirical evaluation of state-of-art antimicrobial prediction tools in an unbiased manner. The results indicate that our approach substantially reduces the number of required molecular descriptors, improving, at the same time, the performance of classification with respect to using all molecular descriptors. Our models also outperform state-of-art prediction tools for the classification of antimicrobial and antibacterial peptides. The proposed methodology is an efficient approach for the development of models to classify antimicrobial peptides. Particularly in the generation of models for discrimination against a specific antimicrobial activity, such as antibacterial. One of our future directions is aimed at using the obtained classifier to search for antimicrobial peptides in various transcriptomes.
机译:抗微生物肽是对抗常规抗生素的病原体的有希望的替代方案。计算机辅助肽发现策略是通过产生有效分类抗微生物肽的模型来自动评估大量数据,在其在湿实验室评估之前进行有效分类的模型。模型的性能取决于最近提出了一种有效且有效的方法的分子描述符的选择。遗憾的是,如何使该方法适应分子描述符的分子描述符进行抗微生物肽的分类和它可以实现的性能,仅探讨了初步探讨。我们提出了一种适应这种成功的特征选择方法,用于分子描述符的加权并评估其性能。评估在六种高质量的基准数据集中进行,该数据集以前用于以无偏见的方式用于现有技术抗微生物预测工具的经验评估。结果表明,我们的方法基本上减少了所需的分子描述符的数量,同时改进,同时对使用所有分子描述符进行分类的性能。我们的模型也优于抗菌药物和抗菌肽的分类的最先进的预测工具。所提出的方法是一种有效的方法,用于开发模型以分类抗微生物肽。特别是在产生针对特定抗微生物活性的模型中,例如抗菌性。我们未来的一个方向之一旨在使用所获得的分类器来搜索各种转录组中的抗微生物肽。

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