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Correlating Lab Test Results in Clinical Notes with Structured Lab Data: A Case Study in HbA1c and Glucose

机译:将临床笔记中的实验室测试结果与结构化实验室数据相关联:以HbA1c和葡萄糖为例的研究

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摘要

It is widely acknowledged that information extraction of unstructured clinical notes using natural language processing (NLP) and text mining is essential for secondary use of clinical data for clinical research and practice. Lab test results are currently structured in most of the electronic health record (EHR) systems. However, for referral patients or lab tests that can be done in non-clinical setting, the results can be captured in unstructured clinical notes. In this study, we proposed a rule-based information extraction system to extract the lab test results with temporal information from clinical notes. The lab test results of glucose and HbA1c from 104 randomly sampled diabetes patients selected from 1996 to 2015 are extracted and further correlated with structured lab test information in the Mayo Clinic EHRs. The system has high F1-scores of 0.964, 0.967 and 0.966 in glucose, HbA1c and overall extraction, respectively.
机译:众所周知,使用自然语言处理(NLP)和文本挖掘来提取非结构化临床笔记的信息对于临床研究和实践的临床数据的二次使用至关重要。当前,大多数电子健康记录(EHR)系统中都包含实验室测试结果。但是,对于可以在非临床环境中进行转诊的患者或实验室测试,结果可以记录在非结构化的临床笔记中。在这项研究中,我们提出了一种基于规则的信息提取系统,以从临床笔记中提取具有时间信息的实验室测试结果。从Mayo Clinic EHRs中抽取104例从1996年至2015年随机抽取的糖尿病患者的葡萄糖和HbA1c的实验室测试结果,并将其与结构化实验室测试信息进一步关联。该系统在葡萄糖,HbA1c和整体提取中分别具有0.964、0.967和0.966的高F1分数。

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