Auyeung Tung Wai, Kng Carolyn Poey Lyn, Chan Tak Yeung, Hui Elsie, Leung Chi Shing, Luk James Ka Hay, Sha Kwok Yiu, Yu Teresa Kim Kum
Department of Medicine and Geriatrics, Pok Oi Hospital, Hong Kong.
Department of Medicine and Geriatrics, Ruttonjee Hospital and Tang Shiu Kin Hospital, Hong Kong.
J Frailty Aging. 2025 Apr;14(2):100021. doi: 10.1016/j.tjfa.2025.100021. Epub 2025 Mar 7.
Electronic health record (EHR) has been in place in many parts of the world. This fits in very well to the frailty index calculation proposed by Rockwood and thus a frailty index can potentially be generated automatically from an EHR database. Therefore, the Hong Kong Hospital Authority (HA) attempted to develop an electronic frailty index (HK eFI), by employing thirty-eight health variables from her own EHR database.
Five cohorts of patients aged 60 years or above ever attended any services provided by the Hong Kong HA in the year 2015, 2016, 2017, 2018 and 2019, were included. The HK eFI trajectory with ageing, generated by the five cohorts, were compared to the one described by Rockwood's group. Following the UK eFI method, 4 levels of frailty were categorized, and they were examined whether they were related to mortality, readmission rate and hospitalization patient days.
Each successive cohort consisted of increasing number of patients aged 60 years or above. (2015, 1.14 million; 2016, 1.19 million; 2017,1.25 million; 2018, 1.31 million; 2019, 1.38 million). The gradients of the five trajectories ranged from 0.035 to 0.037, representing an increase in FI approximately 3.6 % annually. The intercept of the curves converged at 0.1, representing the FI at age 60 years was 0.1. Compared to the fit group, the adjusted hazard ratios of mortality of the mild, moderate and severe frail group were 1.77, 3.31 and 6.65 respectively and they were all statistically higher than the fit group. (p < 0.005) Likewise, there was a stepwise increase in readmission rate and hospital patient days utilization with increasing frailty levels.
It is feasible to develop an eFI and a biological age trajectory from a large EHR database with local adaptation.
电子健康记录(EHR)已在世界许多地方应用。这与Rockwood提出的衰弱指数计算方法非常契合,因此可以从EHR数据库中自动生成衰弱指数。因此,香港医院管理局(HA)尝试利用其自身EHR数据库中的38个健康变量开发电子衰弱指数(HK eFI)。
纳入2015年、2016年、2017年、2018年和2019年曾接受香港医管局提供的任何服务的五组60岁及以上患者。将这五组患者生成的HK eFI随年龄变化的轨迹与Rockwood团队描述的轨迹进行比较。按照英国eFI方法,将衰弱分为4个等级,并检查它们是否与死亡率、再入院率和住院天数相关。
每连续一组中60岁及以上患者的数量都在增加。(2015年,114万;2016年,119万;2017年,125万;2018年,131万;2019年,138万)。五条轨迹的斜率范围为0.035至0.037,表明衰弱指数每年约增加3.6%。曲线的截距在0.1处收敛,表明60岁时的衰弱指数为0.1。与健康组相比,轻度、中度和重度衰弱组的调整后死亡风险比分别为1.77、3.31和6.65,且均在统计学上高于健康组。(p<0.005)同样,随着衰弱程度的增加,再入院率和住院天数利用率也呈逐步上升趋势。
通过对大型EHR数据库进行本地化调整来开发电子衰弱指数和生物年龄轨迹是可行的。