Department of Pharmacy, The First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, Zhejiang, China (mainland).
Sydney Nursing School, Faculty of Medicine and Health, The University of Sydney, Sydney, Australia.
Med Sci Monit. 2020 Apr 14;26:e923696. doi: 10.12659/MSM.923696.
BACKGROUND This study evaluated the impact of clinical features and concomitant conditions on the clinical selection of different renin-angiotensin system (RAS) inhibitors in patients with hypertension, and built a renin-angiotensin inhibitors selection model (RAISM) to provide a reference for clinical decision making. MATERIAL AND METHODS We included 213 hypertensive patients in the study cohort; patients were divided into two groups: the angiotensin-converting enzyme inhibitor (ACEI) combined with calcium channel blocker (CCB) group (ACEI+CCB group) and the angiotensin receptor antagonist (ARB) combined with CCB group (ARB+CCB group). Basic demographic characteristics and concomitant conditions of the patients were compared. Single-factor and multi-factor analysis was performed by adopting logistic regression model. The RAISM was established by utilizing the nomograph technology. C-index and calibration curve were used to evaluate the model's efficacy. RESULTS In the study, 34.27% of the patients used ACEI+CCB and 65.73% of patients used ARB+CCB. The difference in age, body mass index (BMI), elderly patient, diabetes, renal dysfunction, and hyperlipidemia between the 2 groups determined medication selection. To be specific, compared to the group using ARB+CCB, the odds ratios and 95% confidence interval (CI) of the aforementioned factors for the ACEI+CCB group were 0.476 (0.319-0.711), 1.274 (1.001-1.622), 0.365 (0.180-0.743), 0.471 (0.203-1.092), 0.542 (0.268-1.094), and 0.270 (0.100-0.728), respectively; The C-index of RAISM acquired from the model construction parameters was 0.699, and the correction curve demonstrated that the model has good discriminative ability. CONCLUSIONS The outcome of our study suggests that independent discriminating factors that influence the clinical selection of different RAS inhibitors were elderly patient, renal insufficiency, and hyperlipidemia; and the RAISM constructed in this study has good predictability and clinical benefit.
本研究评估了临床特征和合并症对高血压患者选择不同肾素-血管紧张素系统(RAS)抑制剂的临床影响,并构建了肾素-血管紧张素抑制剂选择模型(RAISM),为临床决策提供参考。
我们纳入了 213 名高血压患者进行研究,将患者分为血管紧张素转换酶抑制剂(ACEI)联合钙通道阻滞剂(CCB)组(ACEI+CCB 组)和血管紧张素受体拮抗剂(ARB)联合 CCB 组(ARB+CCB 组),比较患者的基本人口统计学特征和合并症。采用 logistic 回归模型进行单因素和多因素分析。利用列线图技术建立 RAISM。采用 C 指数和校准曲线评估模型的效能。
在本研究中,34.27%的患者使用 ACEI+CCB,65.73%的患者使用 ARB+CCB。年龄、体重指数(BMI)、老年患者、糖尿病、肾功能不全和高血脂在两组间的差异决定了药物的选择。具体来说,与使用 ARB+CCB 的患者相比,ACEI+CCB 组上述因素的比值比(OR)和 95%置信区间(CI)分别为 0.476(0.319-0.711)、1.274(1.001-1.622)、0.365(0.180-0.743)、0.471(0.203-1.092)、0.542(0.268-1.094)和 0.270(0.100-0.728)。从模型构建参数中获得的 RAISM 的 C 指数为 0.699,校正曲线表明该模型具有良好的判别能力。
本研究结果表明,影响不同 RAS 抑制剂临床选择的独立判别因素为老年患者、肾功能不全和高血脂;本研究构建的 RAISM 具有良好的预测性和临床获益。