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比较不同机器学习技术对抗结核药物性肝损伤的预测结果。

Comparison of the predictive outcomes for anti-tuberculosis drug-induced hepatotoxicity by different machine learning techniques.

机构信息

Department of Clinical Pharmacy, School of Pharmacy, Taipei Medical University, Taipei, Taiwan; Department of Pharmacy, Shuang Ho Hospital, Taipei Medical University, New Taipei City, Taiwan.

Department of Medicine, School of Medicine, Taipei Medical University, Taipei, Taiwan; Department of Pulmonary Medicine, Shuang Ho Hospital, Taipei Medical University, New Taipei City, Taiwan.

出版信息

Comput Methods Programs Biomed. 2020 May;188:105307. doi: 10.1016/j.cmpb.2019.105307. Epub 2019 Dec 27.

Abstract

BACKGROUND

The study compared the predictive outcomes of artificial neural network, support vector machine and random forest on the occurrence of anti-tuberculosis drug-induced hepatotoxicity.

METHODS

The clinical and genomic data of patients treated with anti-tuberculosis drugs at Taipei Medical University-Wanfang Hospital were used as training sets, and those at Taipei Medical University-Shuang Ho Hospital served as test sets. Features were selected through a univariate risk factor analysis and literature evaluation. The accuracy, sensitivity, specificity, and the area under the receiver operating characteristic curve were calculated to compare the traditional, genomic, and combined models of the three techniques.

RESULTS

Nine models were created with 7 clinical factors and 4 genotypes. Artificial neural network with clinical and genomic factors exhibited the best performance, with an accuracy of 88.67%, a sensitivity of 80%, and a specificity of 90.4% for the test set. The area under the receiver operating characteristic curve of this best model reached 0.894 for training set and 0.898 for test set, which was significantly better than 0.801 for training set and 0.728 for test set by support vector machine and 0.724 for training set and 0.718 for test set by random forest.

CONCLUSIONS

Artificial neural network with clinical and genomic data can become a clinical useful tool in predicting anti-tuberculosis drug-induced hepatotoxicity. The machine learning technique can be an innovation to predict and prevent adverse drug reaction.

摘要

背景

本研究比较了人工神经网络、支持向量机和随机森林在预测抗结核药物性肝损伤发生方面的预测结果。

方法

使用台北医学大学万芳医院接受抗结核药物治疗的患者的临床和基因组数据作为训练集,台北医学大学双和医院的数据作为测试集。通过单因素风险因素分析和文献评估选择特征。计算准确性、敏感性、特异性和受试者工作特征曲线下面积,以比较三种技术的传统、基因组和组合模型。

结果

使用 7 个临床因素和 4 个基因型创建了 9 个模型。具有临床和基因组因素的人工神经网络表现出最佳性能,测试集的准确率为 88.67%,灵敏度为 80%,特异性为 90.4%。该最佳模型的训练集和测试集的受试者工作特征曲线下面积分别为 0.894 和 0.898,显著优于支持向量机的 0.801 和 0.728,以及随机森林的 0.724 和 0.718。

结论

具有临床和基因组数据的人工神经网络可以成为预测抗结核药物性肝损伤的临床有用工具。机器学习技术可以成为预测和预防药物不良反应的创新方法。

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