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多药物特征提取与深度学习改善不良事件的个体患者预测

Multi-Drug Featurization and Deep Learning Improve Patient-Specific Predictions of Adverse Events.

作者信息

Anastopoulos Ioannis N, Herczeg Chloe K, Davis Kasey N, Dixit Atray C

机构信息

Biomolecular Engineering, University of California, Santa Cruz, CA 95064, USA.

Coral Genomics, Inc., 953 Indiana St., San Francisco, CA 94107, USA.

出版信息

Int J Environ Res Public Health. 2021 Mar 5;18(5):2600. doi: 10.3390/ijerph18052600.

Abstract

While the clinical approval process is able to filter out medications whose utility does not offset their adverse drug reaction profile in humans, it is not well suited to characterizing lower frequency issues and idiosyncratic multi-drug interactions that can happen in real world diverse patient populations. With a growing abundance of real-world evidence databases containing hundreds of thousands of patient records, it is now feasible to build machine learning models that incorporate individual patient information to provide personalized adverse event predictions. In this study, we build models that integrate patient specific demographic, clinical, and genetic features (when available) with drug structure to predict adverse drug reactions. We develop an extensible graph convolutional approach to be able to integrate molecular effects from the variable number of medications a typical patient may be taking. Our model outperforms standard machine learning methods at the tasks of predicting hospitalization and death in the UK Biobank dataset yielding an R of 0.37 and an AUC of 0.90, respectively. We believe our model has potential for evaluating new therapeutic compounds for individualized toxicities in real world diverse populations. It can also be used to prioritize medications when there are multiple options being considered for treatment.

摘要

虽然临床审批程序能够筛选出那些疗效无法抵消其在人体中药物不良反应的药物,但它并不适合用于描述现实世界中不同患者群体可能出现的低频问题和特异性多药相互作用。随着包含数十万患者记录的真实世界证据数据库越来越多,现在构建纳入个体患者信息以提供个性化不良事件预测的机器学习模型变得可行。在本研究中,我们构建了将患者特定的人口统计学、临床和遗传特征(若有)与药物结构相结合以预测药物不良反应的模型。我们开发了一种可扩展的图卷积方法,以便能够整合典型患者可能服用的多种药物的分子效应。在英国生物银行数据集中预测住院和死亡的任务上,我们的模型优于标准机器学习方法,分别产生了0.37的R值和0.90的AUC值。我们相信我们的模型有潜力在现实世界的不同人群中评估新治疗化合物的个体化毒性。当考虑多种治疗方案时,它还可用于对药物进行优先级排序。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a47b/7967515/2b5bf212a885/ijerph-18-02600-g001.jpg

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