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In Silico Prediction of Drug-Induced Liver Injury Based on Ensemble Classifier Method

机译:基于集成分类器方法的药物诱发肝损伤的计算机模拟预测

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摘要

Drug-induced liver injury (DILI) is a major factor in the development of drugs and the safety of drugs. If the DILI cannot be effectively predicted during the development of the drug, it will cause the drug to be withdrawn from markets. Therefore, DILI is crucial at the early stages of drug research. This work presents a 2-class ensemble classifier model for predicting DILI, with 2D molecular descriptors and fingerprints on a dataset of 450 compounds. The purpose of our study is to investigate which are the key molecular fingerprints that may cause DILI risk, and then to obtain a reliable ensemble model to predict DILI risk with these key factors. Experimental results suggested that 8 molecular fingerprints are very critical for predicting DILI, and also obtained the best ratio of molecular fingerprints to molecular descriptors. The result of the 5-fold cross-validation of the ensemble vote classifier method obtain an accuracy of 77.25%, and the accuracy of the test set was 81.67%. This model could be used for drug-induced liver injury prediction.
机译:药物性肝损伤(DILI)是药物开发和药物安全性的主要因素。如果在药物开发过程中无法有效地预测DILI,它将导致药物从市场上撤回。因此,DILI在药物研究的早期阶段至关重要。这项工作提出了一种用于预测DILI的2类整体分类器模型,在450种化合物的数据集上具有2D分子描述符和指纹。我们的研究目的是调查哪些可能导致DILI风险的关键分子指纹,然后获得一个可靠的集成模型来预测具有这些关键因素的DILI风险。实验结果表明,8种分子指纹对于预测DILI至关重要,并且获得了最佳的分子指纹与分子描述子比率。集成投票分类器方法的5倍交叉验证结果获得了77.25%的准确性,而测试集的准确性为81.67%。该模型可用于药物诱导的肝损伤预测。

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