利用自然语言处理技术识别住院老年人转诊后护理的障碍并描述患者的负面偏好。

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2023-04-29 eCollection Date: 2022-01-01
Erin E Kennedy, Anahita Davoudi, Sy Hwang, Philip J Freda, Ryan Urbanowicz, Kathryn H Bowles, Danielle L Mowery
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引用次数: 0

摘要

我们的目标是利用自然语言处理(NLP)技术,在临床决策支持系统建议患者接受急性期后护理时,检测出住院老年人接受急性期后护理的常见障碍(B2PAC)。我们对出院计划记录中的 B2PAC 句子进行了注释,并开发了一种 NLP 分类器来识别价值最高的 B2PAC 类别(患者的负面偏好)。我们将 13 种机器学习模型与亚马逊的 AutoGluon 深度学习模型进行了比较。该研究包括一个大型学术医疗系统中 100 次患者会诊的 594 份急症护理记录(1156 个句子包含 11 个 B2PAC)。最常见且可修改的 B2PAC 类别是患者的负面偏好(18.3%)。最佳监督模型是极端梯度提升模型(F1:0.859),但深度学习模型的表现更好(F1:0.916)。在住院早期提醒临床医生注意患者的负面偏好,可以促使采取患者教育等干预措施,确保患者获得正确的护理水平,避免不良后果的发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Identifying Barriers to Post-Acute Care Referral and Characterizing Negative Patient Preferences Among Hospitalized Older Adults Using Natural Language Processing.

Our objective was to detect common barriers to post-acute care (B2PAC) among hospitalized older adults using natural language processing (NLP) of clinical notes from patients discharged home when a clinical decision support system recommended post-acute care. We annotated B2PAC sentences from discharge planning notes and developed an NLP classifier to identify the highest-value B2PAC class (negative patient preferences). Thirteen machine learning models were compared with Amazon's AutoGluon deep learning model. The study included 594 acute care notes from 100 patient encounters (1156 sentences contained 11 B2PAC) in a large academic health system. The most frequent and modifiable B2PAC class was negative patient preferences (18.3%). The best supervised model was Extreme Gradient Boosting (F1: 0.859), but the deep learning model performed better (F1: 0.916). Alerting clinicians of negative patient preferences early in the hospitalization can prompt interventions such as patient education to ensure patients receive the right level of care and avoid negative outcomes.

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