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Building an automated SOAP classifier for emergency department reports

机译:构建一个用于急诊部门报告的自动肥皂分类器

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摘要

Information extraction applications that extract structured event and entity information from unstructured text can leverage knowledge of clinical report structure to improve performance. The Subjective, Objective, Assessment, Plan (SOAP) framework, used to structure progress notes to facilitate problem-specific, clinical decision making by physicians, is one example of a well-known, canonical structure in the medical domain. Although its applicability to structuring data is understood, its contribution to information extraction tasks has not yet been determined. The first step to evaluating the SOAP framework's usefulness for clinical information extraction is to apply the model to clinical narratives and develop an automated SOAP classifier that classifies sentences from clinical reports. In this quantitative study, we applied the SOAP framework to sentences from emergency department reports, and trained and evaluated SOAP classifiers built with various linguistic features. We found the SOAP framework can be applied manually to emergency department reports with high agreement (Cohen's kappa coefficients over 0.70). Using a variety of features, we found classifiers for each SOAP class can be created with moderate to outstanding performance with F 1 scores of 93.9 (subjective), 94.5 (objective), 75.7 (assessment), and 77.0 (plan). We look forward to expanding the framework and applying the SOAP classification to clinical information extraction tasks.
机译:信息提取应用程序从非结构化文本提取结构化事件和实体信息可以利用临床报告结构的知识来提高性能。用于构建进展笔记的主观,目标,评估,计划(肥皂)框架,以促进特定于问题的临床决策,是医疗领域的众所周知的典型结构的一个例子。虽然其对结构化数据的适用性理解,但尚未确定其对信息提取任务的贡献。评估SOAP框架对临床信息提取的有用性的第一步是将模型应用于临床叙述,并开发自动化的SOAP分类器,该分类器分类临床报告的句子。在这种定量研究中,我们将SOAP框架应用于紧急部门报告的句子,并培训和评估了各种语言特征的SOAP分类器。我们发现SOAP框架可以手动应用于高度协议的急诊部门报告(Cohen的Kappa系数超过0.70)。使用各种功能,我们找到了每个SOAP类的分类器,可以使用适度到出色的性能,F 1分数为93.9(主观),94.5(目标),75.7(评估)和77.0(计划)。我们期待扩展框架并将SOAP分类应用于临床信息提取任务。

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