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首页> 外文期刊>JMIR Medical Informatics >Measuring Adoption of Patient Priorities–Aligned Care Using Natural Language Processing of Electronic Health Records: Development and Validation of the Model
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Measuring Adoption of Patient Priorities–Aligned Care Using Natural Language Processing of Electronic Health Records: Development and Validation of the Model

机译:使用电子健康记录的自然语言处理测量采用患者优先级的护理:模型的开发和验证

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Background Patient Priorities Care (PPC) is a model of care that aligns health care recommendations with priorities of older adults who have multiple chronic conditions. Following identification of patient priorities, this information is documented in the patient’s electronic health record (EHR). Objective Our goal is to develop and validate a natural language processing (NLP) model that reliably documents when clinicians identify patient priorities (ie, values, outcome goals, and care preferences) within the EHR as a measure of PPC adoption. Methods This is a retrospective analysis of unstructured National Veteran Health Administration EHR free-text notes using an NLP model. The data were sourced from 778 patient notes of 658 patients from encounters with 144 social workers in the primary care setting. Each patient’s free-text clinical note was reviewed by 2 independent reviewers for the presence of PPC language such as priorities, values, and goals. We developed an NLP model that utilized statistical machine learning approaches. The performance of the NLP model in training and validation with 10-fold cross-validation is reported via accuracy, recall, and precision in comparison to the chart review. Results Of 778 notes, 589 (75.7%) were identified as containing PPC language (kappa=0.82, P.001). The NLP model in the training stage had an accuracy of 0.98 (95% CI 0.98-0.99), a recall of 0.98 (95% CI 0.98-0.99), and precision of 0.98 (95% CI 0.97-1.00). The NLP model in the validation stage had an accuracy of 0.92 (95% CI 0.90-0.94), recall of 0.84 (95% CI 0.79-0.89), and precision of 0.84 (95% CI 0.77-0.91). In contrast, an approach using simple search terms for PPC only had a precision of 0.757. Conclusions An automated NLP model can reliably measure with high precision, recall, and accuracy when clinicians document patient priorities as a key step in the adoption of PPC.
机译:背景患者优先事项护理(PPC)是一种关怀模式,使医疗保健建议与具有多重慢性条件的老年人的优先事项对准。在确定患者的优先事项之后,这些信息记录在患者的电子健康记录(EHR)中。目的是我们的目标是开发和验证自然语言处理(NLP)模型,当临床医生确定EHR内的患者优先级(即价值,结果目标和护理偏好)作为PPC采用的量度。方法是使用NLP模型对非结构化国家资深卫生管理EHR自由文本笔记的回顾性分析。这些数据来自778名患者658名患者的患者,在初级保健环境中有144名社会工作者。每个患者的自由文本临床说明由2名独立审稿人审查,用于存在PPC语言,如优先事项,价值观和目标。我们开发了一个利用统计机器学习方法的NLP模型。与图表审查相比,通过准确度,召回和精度报告了NLP模型在训练和验证中的性能和验证的训练和验证报告。结果为778备注,589(75.7%)被鉴定为含PPC语言(Kappa = 0.82,P& .001)。训练阶段的NLP模型的精度为0.98(95%CI 0.98-0.99),召回0.98(95%CI 0.98-0.99),精度为0.98(95%CI 0.97-1.00)。验证阶段中的NLP模型的精度为0.92(95%CI 0.90-0.94),召回0.84(95%CI 0.79-0.89),精度为0.84(95%CI 0.77-0.91)。相比之下,使用PPC的简单搜索条件的方法仅具有0.757的精度。结论当临床医生将患者优先级作为采用PPC的关键步骤时,可靠地测量自动化NLP模型,以高精度,召回和准确性可靠地测量。

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