医学
四分位间距
心房颤动
优势比
冲程(发动机)
物理疗法
干预(咨询)
急诊医学
儿科
内科学
护理部
机械工程
工程类
作者
Kam Cheong Wong,Tu Ngoc Nguyen,Simone Marschner,Samual Turnbull,Anupama Balasuriya Indrawansa,Rose White,Mason Jenner Burns,Vishal Gopal,Haeri Min,Desi Quintans,Amy Von Huben,Steven A Trankle,Tim Usherwood,Richard I. Lindley,Saurabh Kumar,Clara K Chow
标识
DOI:10.1093/eurjpc/zwae312
摘要
Abstract Aims Diagnosis of atrial fibrillation (AF) provides opportunities to reduce stroke risk. This study aimed to compare AF diagnosis rates, participant satisfaction and feasibility of an electrocardiogram (ECG) self-screening virtual care system with usual care. Methods This randomised controlled implementation study involving community-dwelling people aged ≥75 years was conducted from May 2021 to June 2023. Participants were given a handheld single-lead ECG device and trained to self-record ECGs once daily on weekdays for 12 months. The control group received usual care with their general practitioners in the first 6 months and participated in the subsequent 6 months. AF diagnosis and participant satisfaction were assessed at 6 months. Results 200 participants (mean age 79.0±3.4 years; 54.0% female; 72.5% urban). AF was diagnosed in 10/97 (10.3%) intervention participants and 2/100 (2.0%) in the control group (Odds Ratio 5.6, 95% CI 1.4-37.3, p=0.03). In the intervention, 80% of AF cases were diagnosed within 3 months. 91/93 (97.9%) intervention participants and 55/93 (59.1%) control-waitlisted participants (p<0.001) were satisfied with AF screening. Of the expected 20 days per month, the overall monthly median number of days participants self-recorded ECGs was 20 (interquartile range 17-22). Participants were confident using the device (93%), reported it was easy to use (98%) and found screening efficient (96%). Conclusions Patient-led AF self-screening using single-lead ECG devices with a remote central monitoring system was feasible, acceptable, and effective in diagnosing AF among older people. This screening model could be adapted for implementation, interfacing with integrated care models within existing health systems.
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