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Hybrid imbalanced data classifier models for computational discovery of antibiotic drug targets

机译:混合不平衡数据分类器模型用于抗生素药物靶标的计算发现

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Identification of drug candidates is an important but also difficult process. Given drug resistance bacteria that we face, this process has become more important to identify protein candidates that demonstrate antibacterial activity. The aim of this study is therefore to develop a bioinformatics approach that is more capable of identifying a small but effective set of proteins that are expected to show antibacterial activity, subsequently to be used as antibiotic drug targets. As this is regarded as an imbalanced data classification problem due to smaller number of antibiotic drugs available, a hybrid classification model was developed and applied to the identification of antibiotic drugs. The model was developed by taking into account of various statistical models leading to the development of six different hybrid models. The best model has reached the accuracy of as high as 50% compared to earlier study with the accuracy of less than 1% as far as the proportion of the candidates identified and actual antibiotics in the candidate list is concerned.
机译:候选药物的识别是一个重要但也是困难的过程。考虑到我们面临的耐药细菌,这一过程对于鉴定具有抗菌活性的蛋白质候选者变得更加重要。因此,本研究的目的是开发一种生物信息学方法,该方法更能够鉴定出预期可显示抗菌活性的少量但有效的蛋白质,随后将其用作抗生素药物靶标。由于由于可用的抗生素药物数量较少而被视为不平衡的数据分类问题,因此开发了一种混合分类模型并将其应用于抗生素药物的鉴定。该模型是通过考虑导致六种不同混合模型开发的各种统计模型而开发的。最好的模型与以前的研究相比,已达到了高达50%的准确率,就所识别出的候选物比例和候选物列表中的实际抗生素而言,其准确度还不到1%。

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