The Department of Epidemiology (Licher, Leening, Yilmaz, Wolters, Heeringa, Vernooij, M.K. Ikram, M.A. Ikram), the Department of Neurology (Wolters, M.K. Ikram), the Department of Cardiology (Leening), the Department of Radiology and Nuclear Medicine (Yilmaz, Vernooij), and the Department of General Practice (Bindels), Erasmus MC-University Medical Center Rotterdam, Rotterdam, the Netherlands; the Department of Epidemiology, Harvard T.H. Chan School of Public Health, Boston (Leening, Wolters); the Institute of Health and Society, Newcastle University, Newcastle, U.K. (Stephan); the Department of Biomedical Data Sciences, Leiden University Medical Center, Leiden, the Netherlands (Steyerberg); and the Center for Medical Decision Making, Department of Public Health, Erasmus MC-University Medical Center Rotterdam, Rotterdam, the Netherlands (Steyerberg).
Am J Psychiatry. 2019 Jul 1;176(7):543-551. doi: 10.1176/appi.ajp.2018.18050566. Epub 2018 Dec 11.
Identification of individuals at high risk of dementia is essential for development of prevention strategies, but reliable tools are lacking for risk stratification in the population. The authors developed and validated a prediction model to calculate the 10-year absolute risk of developing dementia in an aging population.
In a large, prospective population-based cohort, data were collected on demographic, clinical, neuropsychological, genetic, and neuroimaging parameters from 2,710 nondemented individuals age 60 or older, examined between 1995 and 2011. A basic and an extended model were derived to predict 10-year risk of dementia while taking into account competing risks from death due to other causes. Model performance was assessed using optimism-corrected C-statistics and calibration plots, and the models were externally validated in the Dutch population-based Epidemiological Prevention Study of Zoetermeer and in the Alzheimer's Disease Neuroimaging Initiative cohort 1 (ADNI-1).
During a follow-up of 20,324 person-years, 181 participants developed dementia. A basic dementia risk model using age, history of stroke, subjective memory decline, and need for assistance with finances or medication yielded a C-statistic of 0.78 (95% CI=0.75, 0.81). Subsequently, an extended model incorporating the basic model and additional cognitive, genetic, and imaging predictors yielded a C-statistic of 0.86 (95% CI=0.83, 0.88). The models performed well in external validation cohorts from Europe and the United States.
In community-dwelling individuals, 10-year dementia risk can be accurately predicted by combining information on readily available predictors in the primary care setting. Dementia prediction can be further improved by using data on cognitive performance, genotyping, and brain imaging. These models can be used to identify individuals at high risk of dementia in the population and are able to inform trial design.
识别痴呆高危个体对于制定预防策略至关重要,但目前缺乏人群风险分层的可靠工具。作者开发并验证了一种预测模型,用于计算老龄化人群中发生痴呆的 10 年绝对风险。
在一项大型前瞻性人群队列研究中,作者从 1995 年至 2011 年间对 2710 名年龄在 60 岁及以上、无痴呆的个体进行了人口统计学、临床、神经心理学、遗传学和神经影像学参数的采集。作者构建了一个基本模型和一个扩展模型,以预测 10 年痴呆风险,同时考虑了因其他原因导致的死亡竞争风险。通过校正后的 C 统计量和校准图评估模型性能,并在荷兰基于人群的 Zoetermeer 流行病学预防研究和阿尔茨海默病神经影像学倡议队列 1(ADNI-1)中对模型进行外部验证。
在 20324 人年的随访期间,有 181 名参与者发生痴呆。一个基于年龄、中风史、主观记忆减退以及需要财务或药物帮助的基本痴呆风险模型的 C 统计量为 0.78(95%置信区间[CI]:0.75,0.81)。随后,纳入基本模型和其他认知、遗传和影像学预测因子的扩展模型的 C 统计量为 0.86(95%CI:0.83,0.88)。这些模型在欧洲和美国的外部验证队列中表现良好。
在社区居住的个体中,通过结合初级保健环境中易于获得的预测因子信息,可以准确预测 10 年痴呆风险。通过使用认知表现、基因分型和脑成像数据,痴呆预测可以进一步提高。这些模型可用于识别人群中痴呆风险较高的个体,并为临床试验设计提供信息。