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Automated clinical diagnosis: The role of content in various sections of a clinical document

机译:自动化临床诊断:内容在临床文档各个部分中的作用

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Clinical diagnosis is a critical aspect of patient care that is typically driven by expert medical knowledge and intuition. An automated system for clinical diagnosis could reduce the cognitive burden of clinicians during patient care and medical education. In this paper, we describe a Knowledge Graph (KG)-based clinical diagnosis system that leverages publicly available knowledge sources to infer possible diagnoses from free-text clinical narratives. We experiment with the content in various sections of a clinical document within the electronic health record (EHR) to investigate the contribution of each section to the performance of automated diagnosis systems. Evaluation on MIMIC-III dataset demonstrates that the content of “history of present illness” and “past medical history” sections can play a greater role for clinical diagnosis inference than other sections and all sections combined. Comparison with a state-of-the-art deep learning-based clinical diagnosis system confirms the effectiveness of our system.
机译:临床诊断是患者护理的关键方面,通常由专家的医学知识和直觉来驱动。用于临床诊断的自动化系统可以减轻患者护理和医学教育期间临床医生的认知负担。在本文中,我们描述了一种基于知识图(KG)的临床诊断系统,该系统利用公开可用的知识来源从自由文本临床叙述中推断出可能的诊断。我们对电子健康记录(EHR)中临床文档各个部分的内容进行了实验,以调查每个部分对自动诊断系统性能的影响。对MIMIC-III数据集的评估表明,“当前病史”和“过去病史”部分的内容对临床诊断推理的作用要比其他部分和所有部分的组合要大。与最先进的基于深度学习的临床诊断系统进行比较,证实了我们系统的有效性。

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