Mori Yuichiro, Komura Toshiaki, Adomi Motohiko, Yagi Ryuichiro, Fukuma Shingo, Kawakami Koji, Kondo Naoki, Tsugawa Yusuke, Yabe Daisuke, Yanagita Motoko, Inoue Kosuke
Department of Human Health Sciences, Graduate School of Medicine, Kyoto University, Kyoto, Japan.
Department of Epidemiology, Boston University School of Public Health, Boston, MA, USA.
Eur J Prev Cardiol. 2025 Sep 1. doi: 10.1093/eurjpc/zwaf539.
Evidence is limited as to who benefit the most from sodium-glucose cotransporter-2 inhibitors (SGLT2i), especially among people without elevated cardiovascular disease (CVD) risk. To address this knowledge gap, we investigated the heterogeneity in the effect of SGLT2i across CVD risk profiles.
Using a target trial emulation framework, we compared SGLT2i versus dipeptidyl peptidase 4 inhibitors (DPP4i) in a nationwide insurer-based database of working-age Japanese citizens in 2015-2023. The primary outcome was a composite of all-cause death, myocardial infarction, stroke, or heart failure over three years. Machine-learning causal forest was applied to assess heterogeneity by predicting individual-level risk reduction in primary outcomes by SGLT2i, and its correlation with CVD risk score.
Overall, among 150,830 individuals included in this study (mean age, 54 years; female, 13.3%), SGLT2i was associated with decreased risk of primary outcomes (3-year risk difference, +0.38 [95%CI, 0.16-0.61] percentage points). The causal forest model revealed heterogeneity in the effectiveness of SGLT2i, with estimated benefit correlating weakly with CVD risk score (r=0.287, p<0.001). In particular, among 107,425 individuals with low CVD risk, 97,757 (91.0%) were predicted to benefit from SGLT2i. This subpopulation was characterized as individuals with higher blood pressure, body mass index, and fasting plasma glucose levels even with low CVD risk score.
The cardioprotective effect of SGLT2i was heterogeneous and more strongly predicted by individual patient characteristics than by overall CVD risk score, highlighting the importance of considering its benefit beyond the conventional risk stratification approach.
关于谁能从钠-葡萄糖协同转运蛋白2抑制剂(SGLT2i)中获益最多的证据有限,尤其是在心血管疾病(CVD)风险未升高的人群中。为了填补这一知识空白,我们研究了SGLT2i在不同CVD风险谱中的疗效异质性。
采用目标试验模拟框架,我们在一个基于全国保险公司的2015 - 2023年在职年龄日本公民数据库中比较了SGLT2i与二肽基肽酶4抑制剂(DPP4i)。主要结局是三年全因死亡、心肌梗死、中风或心力衰竭的复合结局。应用机器学习因果森林通过预测SGLT2i在主要结局中的个体水平风险降低及其与CVD风险评分的相关性来评估异质性。
总体而言,在本研究纳入的150,830名个体中(平均年龄54岁;女性占13.3%),SGLT2i与主要结局风险降低相关(3年风险差异为 +0.38 [95%CI,0.16 - 0.61] 个百分点)。因果森林模型揭示了SGLT2i疗效的异质性,估计获益与CVD风险评分弱相关(r = 0.287,p < 0.001)。特别是,在107,425名CVD风险较低的个体中,预计97,757名(91.0%)将从SGLT2i中获益。该亚组的特征是即使CVD风险评分较低,但血压、体重指数和空腹血糖水平较高的个体。
SGLT2i的心脏保护作用是异质性的,个体患者特征比总体CVD风险评分更能强烈预测其作用,这突出了在传统风险分层方法之外考虑其获益的重要性。