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Drug-Target Interaction Network Predictions for Drug Repurposing Using LASSO-Based Regularized Linear Classification Model

机译:使用基于洛索的正数线性分类模型进行药物靶互动网络预测的药物重新估算

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It has been well-known that biological and experimental methods for drug discovery are time-consuming and expensive. New efforts have been explored to perform drug repurposing through predicting drug-target interaction networks using biological and chemical properties of drugs and targets. However, due to the high-dimensional nature of the data sets extracted from drugs and targets, which have hundreds of thousands of features and relatively small numbers of samples, traditional machine learning approaches, such as logistic regression analysis, cannot analyze these data efficiently. To overcome this issue, we proposed a LASSO-based regularized linear classification model to predict drug-target interactions, which were used for drug repurposing for inflammatory bowel disease. Experiments showed that the model out performed the traditional logistic regression model.
机译:众所周知,药物发现的生物和实验方法是耗时和昂贵的。通过使用药物和靶标的生物和化学性质预测药物 - 目标相互作用网络,探讨了新的努力来进行药物重新施加。然而,由于从药物和目标中提取的数据集的高维性质,它具有数十万个特征和相对少量的样本,传统的机器学习方法,例如Logistic回归分析,不能有效地分析这些数据。为了克服这一问题,我们提出了一种基于洛索的正则化线性分类模型,以预测药物靶标相互作用,用于药物重新抑制炎症性肠病疾病。实验表明,该模型出局进行了传统的逻辑回归模型。

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