Stylianou Nikolaos, Vlahavas Ioannis
School of Informatics, Aristotle University of Thessaloniki, Greece.
J Biomed Inform. 2021 May;117:103767. doi: 10.1016/j.jbi.2021.103767. Epub 2021 Mar 31.
Argument Mining (AM) refers to the task of automatically identifying arguments in a text and finding their relations. In medical literature this is done by identifying Claims and Premises and classifying their relations as either Support or Attack. Evidence-Based Medicine (EBM) refers to the task of identifying all related evidence in medical literature to allow medical practitioners to make informed choices and form accurate treatment plans. This is achieved through the automatic identification of Population, Intervention, Comparator and Outcome entities (PICO) in the literature to limit the collection to only the most relevant documents. In this work, we combine EBM with AM in medical literature to increase the performance of the individual models and create high quality argument graphs, annotated with PICO entities. To that end, we introduce a state-of-the-art EBM model, used to predict the PICO entities and two novel Argument Identification and Argument Relation classification models that utilize the PICO entities to enhance their performance. Our final system works in a pipeline and is able to identify all PICO entities in a medical publication, the arguments presented in them and their relations.
论证挖掘(AM)是指在文本中自动识别论证并找出它们之间关系的任务。在医学文献中,这是通过识别主张和前提,并将它们的关系分类为支持或攻击来完成的。循证医学(EBM)是指在医学文献中识别所有相关证据的任务,以使医学从业者能够做出明智的选择并形成准确的治疗方案。这是通过在文献中自动识别人群、干预措施、对照和结果实体(PICO)来实现的,以便将收集范围限制在最相关的文档上。在这项工作中,我们将循证医学与医学文献中的论证挖掘相结合,以提高各个模型的性能,并创建带有PICO实体注释的高质量论证图。为此,我们引入了一个用于预测PICO实体的先进循证医学模型,以及两个利用PICO实体来提高性能的新颖的论证识别和论证关系分类模型。我们的最终系统以流水线方式工作,能够识别医学出版物中的所有PICO实体、其中呈现的论证及其关系。