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Determining molecular predictors of adverse drug reactions with causality analysis based on structure learning

机译:基于结构学习的因果分析确定药物不良反应的分子预测因子

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Objective: Adverse drug reaction (ADR) can have dire consequences. However, our current understanding of the causes of drug-induced toxicity is still limited. Hence it is of paramount importance to determine molecular factors of adverse drug responses so that safer therapies can be designed. Methods: We propose a causality analysis model based on structure learning (CASTLE) for identifying factors that contribute significantly to ADRs from an integration of chemical and biological properties of drugs. This study aims to address two major limitations of the existing ADR prediction studies. First, ADR prediction is mostly performed by assessing the correlations between the input features and ADRs, and the identified associations may not indicate causal relations. Second, most predictive models lack biological interpretability. Results: CASTLE was evaluated in terms of prediction accuracy on 12 organ-specific ADRs using 830 approved drugs. The prediction was carried out by first extracting causal features with structure learning and then applying them to a support vector machine (SVM) for classification. Through rigorous experimental analyses, we observed significant increases in both macro and micro F1 scores compared with the traditional SVM classifier, from 0.88 to 0.89 and 0.74 to 0.81, respectively. Most importantly, identified links between the biological factors and organ-specific drug toxicities were partially supported by evidence in Online Mendelian Inheritance in Man. Conclusions: The proposed CASTLE model not only performed better in prediction than the baseline SVM but also produced more interpretable results (ie, biological factors responsible for ADRs), which is critical to discovering molecular activators of ADRs.
机译:目的:药物不良反应(ADR)可能会带来可怕的后果。但是,我们目前对药物诱导毒性原因的了解仍然有限。因此,至关重要的是确定不良药物反应的分子因素,以便可以设计更安全的疗法。方法:我们提出基于结构学习(CASTLE)的因果关系分析模型,用于从药物的化学和生物学特性整合中识别对ADR产生重大影响的因素。这项研究旨在解决现有ADR预测研究的两个主要局限性。首先,ADR预测主要通过评估输入特征和ADR之间的相关性来执行,并且所识别的关联可能并不表示因果关系。其次,大多数预测模型缺乏生物学解释性。结果:使用830种批准药物对12种器官特异性ADR的预测准确性进行了CASTLE评估。首先通过结构学习提取因果特征,然后将其应用于支持向量机(SVM)进行分类,从而进行预测。通过严格的实验分析,与传统的SVM分类器相比,宏F1分数和微观F1分数均显着增加,分别从0.88增至0.89和0.74增至0.81。最重要的是,人类在线孟德尔遗传学中的证据部分支持了生物学因素与器官特异性药物毒性之间已确定的联系。结论:建议的CASTLE模型不仅在预测方面比基线SVM更好,而且产生了更多可解释的结果(即,引起ADR的生物学因素),这对于发现ADR的分子激活剂至关重要。

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