Capturing Concerns about Patient Deterioration in Narrative Documentation in Home Healthcare.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2023-04-29 eCollection Date: 2022-01-01
Mollie Hobensack, Jiyoun Song, Sena Chae, Erin Kennedy, Maryam Zolnoori, Kathryn H Bowles, Margaret V McDonald, Lauren Evans, Maxim Topaz
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Abstract

Home healthcare (HHC) agencies provide care to more than 3.4 million adults per year. There is value in studying HHC narrative notes to identify patients at risk for deterioration. This study aimed to build machine learning algorithms to identify "concerning" narrative notes of HHC patients and identify emerging themes. Six algorithms were applied to narrative notes (n = 4,000) from a HHC agency to classify notes as either "concerning" or "not concerning." Topic modeling using Latent Dirichlet Allocation bag of words was conducted to identify emerging themes from the concerning notes. Gradient Boosted Trees demonstrated the best performance with a F-score = 0.74 and AUC = 0.96. Emerging themes were related to patient-clinician communication, HHC services provided, gait challenges, mobility concerns, wounds, and caregivers. Most themes have been cited by previous literature as increasing risk for adverse events. In the future, such algorithms can support early identification of patients at risk for deterioration.

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在家庭保健的叙述性文档中记录对患者病情恶化的关注。
家庭医疗保健 (HHC) 机构每年为 340 多万成年人提供护理服务。研究家庭医疗保健机构的叙述性笔记对识别有病情恶化风险的患者很有价值。本研究旨在建立机器学习算法,以识别 "令人担忧的 "家庭保健患者的叙述性笔记,并确定新出现的主题。研究人员将六种算法应用于一家 HHC 机构的叙述性笔记(n = 4,000),将笔记分为 "相关 "或 "不相关 "两类。使用潜狄利克特分配词袋进行主题建模,以从 "有关 "笔记中识别新出现的主题。梯度提升树(Gradient Boosted Trees)表现最佳,F-score = 0.74,AUC = 0.96。新出现的主题涉及患者与医生的沟通、提供的 HHC 服务、步态挑战、行动问题、伤口和护理人员。大多数主题在以前的文献中被认为会增加不良事件的风险。未来,此类算法可帮助早期识别有病情恶化风险的患者。
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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