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Evaluation of Transfer Learning for Adverse Drug Event (ADE) and Medication Entity Extraction

机译:对不良药物事件(ADE)和药物实体提取的转移学习评价

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We evaluate several biomedical contextual em-beddings (based on BERT, ELMo, and Flair) for the detection of medication entities such as Drugs and Adverse Drug Events (ADE) from Electronic Health Records (EHR) using the 2018 ADE and Medication Extraction (Track 2) n2c2 data-set. We identify best practices for transfer learning, such as language-model line-tuning and scalar mix. Our transfer learning models achieve strong performance in the overall task (F1=92.91%) as well as in ADE identilication (F1=53.08%). Flair-based embeddings out-perform in the identification of context-dependent entities such as ADE. BERT-based embeddings out-perform in recognizing clinical terminology such as Drug and Form entities. ELMo-based embeddings deliver competitive performance in all entities. We develop a sentence-augmentation method for enhanced ADE identification benefiting BERT-based and ELMo-based models by up to 3.13% in Fl gains. Finally, we show that a simple ensemble of these models outpaces most current methods in ADE extraction (F1=55.77%).
机译:我们使用2018年ADE和药物提取来检测来自电子健康记录(EHR)的药物和不良药物事件(EHR)的药物和不良药物(ADE)等若干生物医学上下文EM-BEDDINGS(基于BERT,ELMO和FLAIR)(轨道2)N2C2数据集。我们确定转移学习的最佳实践,例如语言模型线路调整和标量混合。我们的转移学习模型在整体任务中实现了强大的性能(F1 = 92.91%)以及ADE识别(F1 = 53.08%)。基于Flair的嵌入式在识别上识别依赖于ade等依赖性实体。基于BERT的嵌入式识别临床术语,如药物和形式实体。基于Elmo的嵌入物在所有实体中提供竞争性能。我们开发了一种句子 - 增强方法,用于增强基于BERT的基于ELMO的模型,在流体中获得高达3.13%。最后,我们表明这些模型的简单集合在ADE提取(F1 = 55.77%)中占据了大多数当前的方法。

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