Adverse reaction caused by drugs is a potentially dangerous problem which may lead to mortality and morbidity in patients. Adverse Drug Event (ADE) extraction is a significant problem in biomedical research. We model ADE extraction as a Question-Answering problem and take inspiration from Machine Reading Comprehension (MRC) literature, to design our model. Our objective in designing such a model, is to exploit the local linguistic context in clinical text and enable intra-sequence interaction, in order to jointly learn to classify drug and disease entities, and to extract adverse reactions caused by a given drug. Our model makes use of a self-attention mechanism to facilitate intra-sequence interaction in a text sequence. This enables us to visualize and understand how the network makes use of the local and wider context for classification.
翻译:药物引起的反作用是可能导致病人死亡和发病的潜在危险问题。不良药物事件(ADE)的提取是生物医学研究中的一个重大问题。我们将ADE提取作为一种问题解答问题模型,并从机器阅读综合(MRC)文献中汲取灵感,设计我们的模型。我们设计这种模型的目的是在临床文本中利用当地语言背景,并促成后继互动,以便共同学习对药物和疾病实体进行分类,并提取特定药物引起的不良反应。我们的模型利用一种自我注意机制,促进在文本序列中序列中序列内的互动。这使我们能够直观地了解网络如何利用当地和更广泛的背景进行分类。