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EBM+: Advancing Evidence-Based Medicine via two level automatic identification of Populations, Interventions, Outcomes in medical literature

机译:EBM +:通过两级自动鉴定人口,干预,医学文献结果的推进基于证据的药物

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摘要

Evidence-Based Medicine (EBM) has been an important practice for medical practitioners. However, as the number of medical publications increases dramatically, it is becoming extremely difficult for medical experts to review all the contents available and make an informative treatment plan for their patients. A variety of frameworks, including the PICO framework which is named after its elements (Population, Intervention, Comparison, Outcome), have been developed to enable fine-grained searches, as the first step to faster decision making.In this work, we propose a novel entity recognition system that identifies PICO entities within medical publications and achieves state-of-the-art performance in the task. This is achieved by the combination of four 2D Convolutional Neural Networks (CNNs) for character feature extraction, and a Highway Residual connection to facilitate deep Neural Network architectures. We further introduce a PICO Statement classifier, that identifies sentences that not only contain all PICO entities but also answer questions stated in PICO. To facilitate this task we also introduce a high quality dataset, manually annotated by medical practitioners. With the combination of our proposed PICO Entity Recognizer and PICO Statement classifier we aim to advance EBM and enable its faster and more accurate practice.
机译:循证医学(EBM)是医生的重要惯例。然而,随着医学出版物的数量急剧增加,医学专家越来越困难,审查所有可用的内容,并为其患者提供信息良好的待遇计划。已经开发出各种框架,包括以其元素(人口,干预,比较,结果)命名的微微框架,以实现细粒度的搜索,作为更快的决策的第一步。在这项工作中,我们提出一种新颖的实体识别系统,用于在医学出版物中识别微微实体,并在任务中实现最先进的性能。这是通过用于字符特征提取的四个2D卷积神经网络(CNNS)和公路剩余连接来实现,以便于深神经网络架构。我们进一步介绍了Pico语句分类器,该分类器标识不仅包含所有Pico实体的句子,而且还回答Pico中所述的问题。为了促进这项任务,我们还引入了一个高质量的数据集,由医生手动注释。随着我们提出的PICO实体识别器和PICO语句分类器的组合,我们的目标是推进EBM并使其更快,更准确的练习。

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