Shruthi Venkatesh, Linshanshan Wang, Michele Morris, Mohammed Moro, Ratnam Srivastava, Yunqing Han, Riddhi Patira, Sarah Berman, Oscar Lopez, Shyam Visweswaran, Tianrun Cai, Tianxi Cai, Zongqi Xia
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引用次数: 0
Abstract
Background: Alzheimer's disease (AD) carries a high societal burden inequitably distributed across demographic groups.
Objective: To examine differences in readily ascertainable clinical outcomes of AD decline among demographic groups.
Methods: Leveraging the electronic health record (EHR) data (1994-2022) of patients with ≥1 diagnosis code for AD or related dementia from two large healthcare systems, we applied a knowledge graph-guided unsupervised phenotyping algorithm to predict AD diagnosis status and validated using gold-standard chart-reviewed and registry-derived diagnosis labels. After excluding patients with <24 months of data or who were admitted to nursing homes prior to AD diagnosis, we performed survival analyses at each healthcare system to assess the time to two readily ascertainable clinical outcomes of AD decline ( i.e., nursing home admission, death), stratified by demographic groups and accounting for baseline covariates ( e.g., age, gender, race, ethnicity, healthcare utilization, and comorbidities). We then performed a fixed-effects meta-analysis of the survival analysis data from both healthcare systems.
Results: The AD diagnosis phenotyping algorithm demonstrated high accuracy in identifying AD patients across both healthcare systems (AUROC score range: 0.835-0.923). Of the 34,181 AD patients in both healthcare systems (62% women, 90% non-Hispanic White, 80.39±9.28 years of age at AD diagnosis), 32% were admitted to nursing homes and 50% died during follow- up. In the fixed-effect meta-analysis, non-Hispanic White patients had a lower risk of nursing home admission (HR[95% CI]=0.825[0.776-0.877], p <0.001) and higher risk of death (HR[95% CI]=1.381[1.283-1.487], p <.0001) than racial and ethnic minorities. There was no difference between women and men in their risk of nursing home admission (HR[95% CI]=1.008[0.967-1.050], p =.762), but women had a lower risk of death (HR[95% CI]=0.873[0.837-0.910], p <.0001) than men.
Conclusion: This study creates two large EHR-based AD cohorts and adds to the real-world evidence of demographic differences in clinical AD decline, which could potentially inform individual clinical management and future public health policies.
背景:阿尔茨海默病(AD)具有很高的社会负担,不公平地分布在不同的人口群体中。目的:探讨易确定的阿尔茨海默病下降的临床结果在不同人口统计学群体中的差异。方法:利用来自两个大型医疗保健系统的AD或相关痴呆诊断代码≥1的患者的电子健康记录(EHR)数据(1994-2022),我们应用知识图引导的无监督表型算法来预测AD诊断状态,并使用金标准图表审查和注册表派生的诊断标签进行验证。在排除患者(例如,养老院入住,死亡)后,按人口统计学分组分层并考虑基线协变量(例如,年龄,性别,种族,民族,医疗保健利用和合并症)。然后,我们对两个医疗系统的生存分析数据进行了固定效应荟萃分析。结果:阿尔茨海默病诊断表型算法在识别两种医疗系统的阿尔茨海默病患者方面表现出较高的准确性(AUROC评分范围:0.835-0.923)。在两个医疗系统的34,181例AD患者中(62%为女性,90%为非西班牙裔白人,AD诊断时年龄为80.39±9.28岁),32%被送入养老院,50%在随访期间死亡。在固定效应荟萃分析中,非西班牙裔白人患者入院的风险较低(HR[95% CI]=0.825[0.776-0.877], p p =.762),但女性患者的死亡风险较低(HR[95% CI]=0.873[0.837-0.910], p结论:本研究创建了两个大型基于ehr的AD队列,并为临床AD下降的人口统计学差异提供了现实世界的证据,这可能为个人临床管理和未来的公共卫生政策提供信息。