Division of Cardiovascular Medicine, Electrophysiology Section, Perelman School of Medicine at the University of Pennsylvania, One Convention Avenue, Level 2 / City Side, Philadelphia, PA 19104, USA.
Division of Nephrology, University of Texas Southwestern Medical Center, 5323 Harry Hines Blvd, Dallas, TX 75390, USA.
Eur Heart J. 2023 Jun 20;44(23):2095-2110. doi: 10.1093/eurheartj/ehad115.
Chronic kidney disease (CKD) is widely prevalent and independently increases cardiovascular risk. Cardiovascular risk prediction tools derived in the general population perform poorly in CKD. Through large-scale proteomics discovery, this study aimed to create more accurate cardiovascular risk models.
Elastic net regression was used to derive a proteomic risk model for incident cardiovascular risk in 2182 participants from the Chronic Renal Insufficiency Cohort. The model was then validated in 485 participants from the Atherosclerosis Risk in Communities cohort. All participants had CKD and no history of cardiovascular disease at study baseline when ∼5000 proteins were measured. The proteomic risk model, which consisted of 32 proteins, was superior to both the 2013 ACC/AHA Pooled Cohort Equation and a modified Pooled Cohort Equation that included estimated glomerular filtrate rate. The Chronic Renal Insufficiency Cohort internal validation set demonstrated annualized receiver operating characteristic area under the curve values from 1 to 10 years ranging between 0.84 and 0.89 for the protein and 0.70 and 0.73 for the clinical models. Similar findings were observed in the Atherosclerosis Risk in Communities validation cohort. For nearly half of the individual proteins independently associated with cardiovascular risk, Mendelian randomization suggested a causal link to cardiovascular events or risk factors. Pathway analyses revealed enrichment of proteins involved in immunologic function, vascular and neuronal development, and hepatic fibrosis.
In two sizeable populations with CKD, a proteomic risk model for incident cardiovascular disease surpassed clinical risk models recommended in clinical practice, even after including estimated glomerular filtration rate. New biological insights may prioritize the development of therapeutic strategies for cardiovascular risk reduction in the CKD population.
慢性肾脏病(CKD)广泛存在,并独立增加心血管风险。从普通人群中得出的心血管风险预测工具在 CKD 中的表现不佳。通过大规模蛋白质组学发现,本研究旨在创建更准确的心血管风险模型。
使用弹性网络回归从 2182 名慢性肾功能不全队列参与者中得出了用于预测心血管风险的蛋白质组学风险模型。然后在来自动脉粥样硬化风险社区研究的 485 名参与者中验证了该模型。所有参与者在研究开始时均患有 CKD,且无心血管疾病史,当时测量了约 5000 种蛋白质。该蛋白质组学风险模型由 32 种蛋白质组成,优于 2013 年 ACC/AHA 汇总队列方程和包含估计肾小球滤过率的改良汇总队列方程。慢性肾功能不全队列内部验证集的 1 至 10 年的年化接收者操作特征曲线下面积值在蛋白质组学和临床模型中分别为 0.84 至 0.89 和 0.70 至 0.73。在动脉粥样硬化风险社区验证队列中也观察到了类似的发现。对于与心血管风险独立相关的近一半个体蛋白,孟德尔随机化表明与心血管事件或风险因素存在因果关系。途径分析显示,参与免疫功能、血管和神经元发育以及肝纤维化的蛋白质富集。
在两个具有 CKD 的大型人群中,用于预测心血管疾病的蛋白质组学风险模型超过了临床实践中推荐的临床风险模型,甚至在包括估计肾小球滤过率后也是如此。新的生物学见解可能会优先为 CKD 人群的心血管风险降低制定治疗策略。