ADEQA: A Question Answer based approach for joint ADE-Suspect Extraction using Sequence-To-Sequence Transformers

Vinayak Arannil, Tomal Deb, Atanu Roy
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Abstract

Early identification of Adverse Drug Events (ADE) is critical for taking prompt actions while introducing new drugs into the market. These ADEs information are available through various unstructured data sources like clinical study reports, patient health records, social media posts, etc. Extracting ADEs and the related suspect drugs using machine learning is a challenging task due to the complex linguistic relations between drug ADE pairs in textual data and unavailability of large corpus of labelled datasets. This paper introduces ADEQA, a question- answer(QA) based approach using quasi supervised labelled data and sequence-to-sequence transformers to extract ADEs, drug suspects and the relationships between them. Unlike traditional QA models, natural language generation (NLG) based models don’t require extensive token level labelling and thereby reduces the adoption barrier significantly. On a public ADE corpus, we were able to achieve state-of-the-art results with an F1 score of 94% on establishing the relationships between ADEs and the respective suspects.
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ADEQA:一种基于问答的方法,用于使用序列到序列变压器的联合ade可疑提取
早期识别药物不良事件(ADE)对于在向市场推出新药时迅速采取行动至关重要。这些不良事件信息可通过各种非结构化数据源获得,如临床研究报告、患者健康记录、社交媒体帖子等。由于文本数据中药物ADE对之间复杂的语言关系以及标记数据集的大型语料库不可用,使用机器学习提取ADE和相关可疑药物是一项具有挑战性的任务。本文介绍了一种基于准监督标记数据和序列到序列转换器的问答方法来提取ade、毒品嫌疑人及其之间的关系。与传统的QA模型不同,基于自然语言生成(NLG)的模型不需要大量的令牌级别标记,因此显著降低了采用障碍。在公共ADE语料库上,我们能够获得最先进的结果,在建立ADE和各自嫌疑人之间的关系方面,F1得分为94%。
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