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Clinical quantitative information recognition and entity-quantity association from Chinese electronic medical records

机译:中国电子病历的临床定量信息识别与实体数量协会

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摘要

Clinical quantitative information contains crucial measurable expressions of patients' diseases and treatment conditions, which are commonly exist in free-text electronic medical records. Although the clinical quantitative information is of considerable significance in assisting the analysis of health care, few researches have yet focused on the topic and it remains an ongoing challenge. Focusing on Chinese electronic medical records, this paper proposed an extended Bi-LSTM-CRF model, which integrated domain knowledge information and position characteristics of quantitative information as external features to improve the effectiveness of clinical quantitative information recognition. In addition, to associate the extracted entities and quantities more effectively, this paper presented an automatic approach for entity-quantity association using machine learning strategy. Based on 1359 actual Chinese electronic medical records from burn department of a domestic public hospital, we compared our model with a number of widely-used baseline methods. The evaluation results showed that our model outperformed the baselines with an F1-measure of 94.27% for quantitative information recognition and an accuracy of 94.60% for entity-quantity association, demonstrating its effectiveness.
机译:临床定量信息含有至关重要的可测量表达患者的疾病和治疗条件,其通常存在于自由文本电子病历中。虽然临床定量信息在协助医疗保健分析方面具有相当大的意义,但很少有研究尚未集中在该主题上,并且仍然是一个持续的挑战。本文专注于中国电子医疗记录,提出了一个扩展的Bi-LSTM-CRF模型,其中综合域知识信息和定量信息的位置特征作为外部特征,以提高临床定量信息识别的有效性。此外,为了更有效地将提取的实体和数量相关联,本文介绍了使用机器学习策略的实体数量协会的自动方法。根据国内公立医院烧毁部门的1359名实际中国电子医疗记录,我们将我们的模型与许多广泛使用的基线方法进行了比较。评价结果表明,我们的模型表现出基线,F1测量为94.27%,用于定量信息识别,实体数量关联的准确度为94.60%,表明其有效性。

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