Colantonio Lisandro D, Bittner Vera
Department of Epidemiology, University of Alabama at Birmingham, Birmingham, AL, USA.
Department of Medicine, Division of Cardiovascular Disease, University of Alabama at Birmingham, 521 19th Street South-GSB 444, Birmingham, AL, 35233, USA.
Curr Atheroscler Rep. 2025 Sep 9;27(1):88. doi: 10.1007/s11883-025-01339-2.
This review examines cardiovascular disease (CVD) risk prediction models relevant to older adults, a rapidly expanding population with elevated CVD risk. It discusses model characteristics, performance metrics, and clinical implications.
Some models have been developed specifically for older adults, while several others consider a broader age range, including some older individuals. These models vary in terms of predictors, outcomes, horizon, and statistical approaches, with some accounting for competing risks and considering age-predictor interactions. Discrimination is generally acceptable and more modest in older versus younger individuals. Calibration shows great variation across populations. Accurate CVD risk prediction is essential to guide individualized prevention strategies and support shared decision-making in older adults. CVD risk prediction in this population is challenged by age-related CVD risk heterogeneity, elevated competing risk due to non-CVD mortality, and comorbidities. Further refinement by incorporating geriatric-specific factors may help to enhance discrimination.
本综述探讨与老年人相关的心血管疾病(CVD)风险预测模型,这是一个心血管疾病风险不断上升的快速增长人群。它讨论了模型特征、性能指标和临床意义。
一些模型是专门为老年人开发的,而其他一些模型则考虑了更广泛的年龄范围,包括一些老年人。这些模型在预测因素、结局、预测期和统计方法方面各不相同,一些模型考虑了竞争风险并考虑了年龄与预测因素的相互作用。在老年人中,鉴别能力通常是可以接受的,但比年轻人更适度。校准在不同人群中差异很大。准确的心血管疾病风险预测对于指导老年人的个体化预防策略和支持共同决策至关重要。该人群的心血管疾病风险预测受到与年龄相关的心血管疾病风险异质性、非心血管疾病死亡率导致的竞争风险升高以及合并症的挑战。纳入老年特异性因素的进一步改进可能有助于提高鉴别能力。