Naranjo Question Answering using End-to-End Multi-task Learning Model

Bhanu Pratap Singh Rawat, Fei Li, Hong Yu
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引用次数: 7

Abstract

In the clinical domain, it is important to understand whether an adverse drug reaction (ADR) is caused by a particular medication. Clinical judgement studies help judge the causal relation between a medication and its ADRs. In this study, we present the first attempt to automatically infer the causality between a drug and an ADR from electronic health records (EHRs) by answering the Naranjo questionnaire, the validated clinical question answering set used by domain experts for ADR causality assessment. Using physicians' annotation as the gold standard, our proposed joint model, which uses multi-task learning to predict the answers of a subset of the Naranjo questionnaire, significantly outperforms the baseline pipeline model with a good margin, achieving a macro-weighted f-score between 0.3652-0.5271 and micro-weighted f-score between 0.9523-0.9918.
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使用端到端多任务学习模型的纳兰霍问答
在临床领域,了解药物不良反应(ADR)是否由特定药物引起是很重要的。临床判断研究有助于判断药物与其不良反应之间的因果关系。在这项研究中,我们首次尝试通过回答Naranjo问卷,从电子健康记录(EHRs)中自动推断药物与ADR之间的因果关系,Naranjo问卷是领域专家用于ADR因果关系评估的经过验证的临床问题回答集。以医生注释为金标准,我们提出的联合模型使用多任务学习来预测Naranjo问卷子集的答案,显著优于基线管道模型,并且有很好的裕度,宏观加权f得分在0.3652-0.5271之间,微观加权f得分在0.9523-0.9918之间。
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