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Pretraining to Recognize PICO Elements from Randomized Controlled Trial Literature

机译:从随机对照试验文献中识别Pico元素的预押

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PICO (Population/problem, Intervention, Comparison, and Outcome) is widely adopted for formulating clinical questions to retrieve evidence from the literature. It plays a crucial role in Evidence-Based Medicine (EBM). This paper contributes a scalable deep learning method to extract PICO statements from RCT articles. It was trained on a small set of richly annotated PubMed abstracts using an LSTM-CRF model. By initializing our model with pretrained parameters from a large related corpus, we improved the model performance significantly with a minimal feature set. Our method has advantages in minimizing the need for laborious feature handcrafting and in avoiding the need for large shared annotated data by reusing related corpora in pretraining with a deep neural network.
机译:广泛采用Pico(人口/问题,干预,比较和结果),用于制定临床问题,以检索文献中的证据。 它在循证医学(EBM)中起着至关重要的作用。 本文有助于从RCT文章中提取微微语句的可扩展性深度学习方法。 它培训了使用LSTM-CRF模型的一小部分丰富的被批注的PubMed摘要。 通过从大型相关语料库初始化我们的模型,使用最小的功能集显着提高了模型性能。 我们的方法在最大限度地降低了对费用的需求的优势,并通过重用相关的Corpora与深度神经网络预先预订来避免对大型共享带注释数据的需求。

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