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首页> 外文期刊>Journal of the American Geriatrics Society >The Value of Unstructured Electronic Health Record Data in Geriatric Syndrome Case Identification
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The Value of Unstructured Electronic Health Record Data in Geriatric Syndrome Case Identification

机译:非结构化电子健康记录数据在老年综合征案例识别中的价值

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Objectives To examine the value of unstructured electronic health record (EHR) data (free‐text notes) in identifying a set of geriatric syndromes. Design Retrospective analysis of unstructured EHR notes using a natural language processing (NLP) algorithm. Setting Large multispecialty group. Participants Older adults (N=18,341; average age 75.9, 58.9% female). Measurements We compared the number of geriatric syndrome cases identified using structured claims and structured and unstructured EHR data. We also calculated these rates using a population‐level claims database as a reference and identified comparable epidemiological rates in peer‐reviewed literature as a benchmark. Results Using insurance claims data resulted in a geriatric syndrome prevalence ranging from 0.03% for lack of social support to 8.3% for walking difficulty. Using structured EHR data resulted in similar prevalence rates, ranging from 0.03% for malnutrition to 7.85% for walking difficulty. Incorporating unstructured EHR notes, enabled by applying the NLP algorithm, identified considerably higher rates of geriatric syndromes: absence of fecal control (2.1%, 2.3 times as much as structured claims and EHR data combined), decubitus ulcer (1.4%, 1.7 times as much), dementia (6.7%, 1.5 times as much), falls (23.6%, 3.2 times as much), malnutrition (2.5%, 18.0 times as much), lack of social support (29.8%, 455.9 times as much), urinary retention (4.2%, 3.9 times as much), vision impairment (6.2%, 7.4 times as much), weight loss (19.2%, 2.9 as much), and walking difficulty (36.34%, 3.4 as much). The geriatric syndrome rates extracted from structured data were substantially lower than published epidemiological rates, although adding the NLP results considerably closed this gap. Conclusion Claims and structured EHR data give an incomplete picture of burden related to geriatric syndromes. Geriatric syndromes are likely to be missed if unstructured data are not analyzed. Pragmatic NLP algorithms can assist with identifying individuals at high risk of experiencing geriatric syndromes and improving coordination of care for older adults.
机译:目标来检查非结构化电子健康记录(EHR)数据(自由文本说明)识别一套老年综合征的价值。利用自然语言处理(NLP)算法设计非结构化EHR纸张的回顾性分析。设置大型多层组。参与者老年人(n = 18,341;平均年龄75.9岁,女性58.9%)。测量我们比较了使用结构索赔和结构化和非结构化EHR数据识别的老年综合征病例的数量。我们还使用人口级索赔数据库作为参考,并在同行评审文献中确定了相当流行病学率作为基准。使用保险权利要求的结果产生了老年综合征的患病率从0.03%的流逝,对于缺乏社会支撑到行走困难的8.3%。使用结构化的EHR数据导致相似的流行率,从0.03%的营养不良的0.03%到7.85%,以获得步行难度。通过应用NLP算法实现了非结构化的EHR注意事项,确定了大型老年综合征的比例更高:粪便控制的缺失(2.1%,结构索赔和EHR数据的2.3倍),褥疮溃疡(1.4%,1.7倍多),痴呆(6.7%,1.5倍之多),下降(23.6%,3.2倍之多),营养不良(2.5%,18.0倍之多),缺乏社会支持(29.8%,455.9倍之多),尿潴留(4.2%,3.9倍),视觉损伤(6.2%,7.4倍),减肥(19.2%,2.9多),行走难度(36.34%,3.4)。从结构化数据提取的老年综合征率显着低于公布的流行病学率,尽管添加NLP结果显着关闭了这种间隙。结论声称和结构化EHR数据给出了与老年综合征相关的负担的不完整图片。如果未分析非结构化数据,则可能会错过大鼠综合征。务实的NLP算法可以帮助识别经历老年综合征的高风险以及改善老年人护理协调的人。

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