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Identifying Risk Factors For Heart Disease in Electronic Medical Records: A Deep Learning Approach

机译:识别电子病历中心脏病的危险因素:深入学习方法

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Automatic identification of heart disease risk factors in clinical narratives can expedite disease progression modelling and support clinical decisions. Existing practical solutions for cardiovascular risk detection are mostly hybrid systems entailing the integration of knowledge-driven and data-driven methods, relying on dictionaries, rules and machine learning methods that require a substantial amount of human effort. This paper proposes a comparative analysis on the applicability of deep learning, a re-emerged data-driven technique, in the context of clinical text classification. Various deep learning architectures were devised and evaluated for extracting heart disease risk factors from clinical documents. The data provided for the 2014 i2b2/UTHealth shared task focusing on identifying risk factors for heart disease was used for system development and evaluation. Results have shown that a relatively simple deep learning model can achieve a high micro-averaged F-measure of 0.9081, which is comparable to the best systems from the shared task. This is highly encouraging given the simplicity of the deep learning approach compared to the heavily feature-engineered hybrid approaches that were required to achieve state-of-the-art performances.
机译:临床叙事中的心脏病风险因素的自动鉴定可以加快疾病进展建模和支持临床决策。心血管风险检测的现有实用解决方案大多是混合系统,需要集成知识驱动和数据驱动方法,依赖于需要大量人力努力的词典,规则和机器学习方法。本文提出了对深度学习,重新出现的数据驱动技术的适用性的比较分析,在临床文本分类的背景下。设计了各种深度学习架构,并评估了从临床文献中提取心脏病风险因素的评价。为2014年I2B2 / Uthealth共享任务提供的数据,重点是识别心脏病危险因素的系统开发和评估。结果表明,相对简单的深度学习模型可以实现0.9081的高微平均F测量,这与来自共享任务的最佳系统相当。对于与实现最先进的性能所需的重大特征化的混合方法相比,这非常令人鼓舞。

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