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Predicting Drug–Target Interactions Based on the Ensemble Models of Multiple Feature Pairs

机译:基于多个特征对的集合模型预测药物 - 目标交互

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摘要

Backgroud: The prediction of drug–target interactions (DTIs) is of great significance in drug development. It is time-consuming and expensive in traditional experimental methods. Machine learning can reduce the cost of prediction and is limited by the characteristics of imbalanced datasets and problems of essential feature selection. Methods: The prediction method based on the Ensemble model of Multiple Feature Pairs (Ensemble-MFP) is introduced. Firstly, three negative sets are generated according to the Euclidean distance of three feature pairs. Then, the negative samples of the validation set/test set are randomly selected from the union set of the three negative sets in the validation set/test set. At the same time, the ensemble model with weight is optimized and applied to the test set. Results: The area under the receiver operating characteristic curve (area under ROC, AUC) in three out of four sub-datasets in gold standard datasets was more than 94.0% in the prediction of new drugs. The effectiveness of the proposed method is also shown with the comparison of state-of-the-art methods and demonstration of predicted drug–target pairs. Conclusion: The Ensemble-MFP can weigh the existing feature pairs and has a good prediction effect for general prediction on new drugs.
机译:Backgroud:药物靶酰相互作用(DTIS)的预测对药物发育具有重要意义。在传统的实验方法中,它是耗时和昂贵的。机器学习可以降低预测成本,并且受到不平衡数据集的特征和基本特征选择问题的限制。方法:介绍了基于多个特征对的集合模型的预测方法(Ensemble-MFP)。首先,根据三个特征对的欧几里德距离产生三个负组。然后,验证集/测试集的负样本是从验证集/测试集中的三个负集的UNION集中随机选择的。同时,具有重量的集合模型被优化并应用于测试集。结果:在金标准数据集中的四个子数据集中的三个中,在金标准数据集中的三个中的接收器操作特性曲线(Roc,AUC区域下)的区域在预测新药物的94.0%以上。还以最先进的方法和预测的药物 - 目标对的方法的比较显示了所提出的方法的有效性。结论:合奏MFP可以称重现有的特征对,对新药一般预测具有良好的预测效果。

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