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首页> 外文期刊>Journal of pain and symptom management. >Identifying Goals of Care Conversations in the Electronic Health Record Using Natural Language Processing and Machine Learning
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Identifying Goals of Care Conversations in the Electronic Health Record Using Natural Language Processing and Machine Learning

机译:使用自然语言处理和机器学习确定电子健康记录中的护理谈话目标

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Context Goals-of-care discussions are an important quality metric in palliative care. However, goals-of-care discussions are often documented as free text in diverse locations. It is difficult to identify these discussions in the electronic health record (EHR) efficiently. Objectives To develop, train, and test an automated approach to identifying goals-of-care discussions in the EHR, using natural language processing (NLP) and machine learning (ML). Methods From the electronic health records of an academic health system, we collected a purposive sample of 3183 EHR notes (1435 inpatient notes and 1748 outpatient notes) from 1426 patients with serious illness over 2008–2016, and manually reviewed each note for documentation of goals-of-care discussions. Separately, we developed a program to identify notes containing documentation of goals-of-care discussions using NLP and supervised ML. We estimated the performance characteristics of the NLP/ML program across 100 pairs of randomly partitioned training and test sets. We repeated these methods for inpatient-only and outpatient-only subsets. Results Of 3183 notes, 689 contained documentation of goals-of-care discussions. The mean sensitivity of the NLP/ML program was 82.3% (SD 3.2%), and the mean specificity was 97.4% (SD 0.7%). NLP/ML results had a median positive likelihood ratio of 32.2 (IQR 27.5–39.2) and a median negative likelihood ratio of 0.18 (IQR 0.16–0.20). Performance was better in inpatient-only samples than outpatient-only samples. Conclusion Using NLP and ML techniques, we developed a novel approach to identifying goals-of-care discussions in the EHR. NLP and ML represent a potential approach toward measuring goals-of-care discussions as a research outcome and quality metric.
机译:上下文目标讨论是姑息治疗的重要质量指标。但是,护理目标讨论通常被记录为不同地点的自由文本。很难有效地识别电子健康记录(EHR)中的这些讨论。使用自然语言处理(NLP)和机器学习(ML),制定,培训和测试自动化方法以识别EHR中的护理目标讨论的自动化方法。方法从学术卫生系统的电子健康记录中,我们从2008 - 2016年的1426名严重疾病患者收集了3183 ehr注意(1435家住院说明和1748个门诊注释)的有目的样本,并手动审查了每张笔记以获取目标文件-of-care讨论。另外,我们开发了一个计划,以确定包含使用NLP和监督ML的护理目标讨论的记录。我们估计了跨100对随机分区训练和测试集的NLP / ML程序的性能特征。我们对仅适用于InPatient和Overpatient的子集重复这些方法。结果3183票据,689载于护理目标讨论文件。 NLP / mL程序的平均敏感性为82.3%(SD 3.2%),平均特异性为97.4%(SD 0.7%)。 NLP / ML结果中位阳性似然比为32.2(IQR 27.5-39.2)和中值的负似然比为0.18(IQR 0.16-0.20)。 Inpatient的样本中的性能更好,而不是仅远诊样本。结论采用NLP和ML技术,我们开发了一种识别EHR中护理目标讨论的新方法。 NLP和ML代表了衡量护理目标作为研究结果和质量指标的潜在方法。

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