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Finding Precise Causal Multi-Drug-Drug Interactions for Adverse Drug Reaction Analysis

机译:寻找精确的因果药物相互作用进行药物不良反应分析

摘要

Mechanisms are provided for implementing a framework to learn multiple drug-adverse drug reaction associations. The mechanisms receive and analyze patient electronic medical record data and adverse drug reaction data to identify co-occurrences of references to drugs with references to adverse drug reactions (ADRs) to thereby generate candidate rules specifying multiple drug-ADR relationships. The mechanisms filter the candidate rules to remove a subset of one or more rules having confounder drugs specified in the subset of one or more candidate rules, and thereby generate a filtered set of candidate rules. The mechanisms further generate a causal model based on the filtered set of candidate rules. The causal model comprises, for each ADR in a set of ADRs, a corresponding set of one or more rules, each rule specifying a combination of drugs having a causal relationship with the ADR.
机译:提供了用于实现学习多种药物不良药物反应关联的框架的机制。该机制接收并分析患者电子病历数据和药物不良反应数据,以识别药物参考与药物不良反应(ADR)的共存,从而生成指定多个药物ADR关系的候选规则。该机制过滤候选规则以去除具有在一个或多个候选规则的子集中指定的混杂药物的一个或多个规则的子集,从而生成过滤后的候选规则集。这些机制还基于过滤后的候选规则集生成因果模型。因果模型对于一组ADR中的每个ADR包括一组对应的一个或多个规则,每个规则指定与ADR具有因果关系的药物组合。

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