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CASTER: Predicting Drug Interactions with Chemical Substructure Representation

机译:施法者:预测化学副结构表示的药物相互作用

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Adverse drug-drug interactions (DDIs) remain a leading cause of morbidity and mortality. Identifying potential DDIs during the drug design process is critical for patients and society. Although several computational models have been proposed for DDI prediction, there are still limitations: (1) specialized design of drug representation for DDI predictions is lacking; (2) predictions are based on limited labelled data and do not generalize well to unseen drugs or DDIs; and (3) models are characterized by a large number of parameters, thus are hard to interpret. In this work, we develop a ChemicAl SubstrucTurE Representation (CASTER) framework that predicts DDIs given chemical structures of drugs. CASTER aims to mitigate these limitations via (1) a sequential pattern mining module rooted in the DDI mechanism to efficiently characterize functional sub-structures of drugs; (2) an auto-encoding module that leverages both labelled and unlabeled chemical structure data to improve predictive accuracy and generalizability; and (3) a dictionary learning module that explains the prediction via a small set of coefficients which measure the relevance of each input sub-structures to the DDI outcome. We evaluated CASTER on two real-world DDI datasets and showed that it performed better than state-of-the-art baselines and provided interpretable predictions.
机译:不良药物 - 药物相互作用(DDIS)仍然是发病率和死亡率的主要原因。在药物设计过程中识别潜在的DDI对患者和社会至关重要。虽然已经提出了几种计算模型的DDI预测,但仍有局限性:(1)缺乏DDI预测的药物代表的专业设计; (2)预测基于有限的标记数据,并不概括到看不见的药物或DDIS; (3)模型的特征在于大量参数,因此很难解释。在这项工作中,我们开发了一种化学亚结构表示(Caster)框架,其预测DDIS给予药物的化学结构。施法者旨在通过(1)通过(1)在DDI机制中源于DDI机制的顺序图案挖掘模块来减轻这些限制,以有效地表征药物功能子结构; (2)一种自动编码模块,可利用标记和未标记的化学结构数据来提高预测精度和概括性; (3)字典学习模块,用于通过一小组系数解释预测,该系数测量每个输入子结构与DDI结果的相关性。我们在两个现实世界DDI数据集上进行了施法者,并显示它比最先进的基线更好,并提供可解释的预测。

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