From the Alzheimer Center Amsterdam, Department of Neurology, Amsterdam Neuroscience (D.I.B., A.C.v.L., C.G., W.M.v.d.F., R.O.), and Department of Radiology and Nuclear Medicine (F.B.), Vrije Universiteit Amsterdam, Amsterdam UMC, the Netherlands; Institutes of Neurology and Healthcare Engineering (F.B.), University College London, UK; Department of Epidemiology and Biostatistics (W.M.v.d.F.), VU University Medical Center, Amsterdam, the Netherlands; and Clinical Memory Research Unit (R.O.), Lund University, Sweden.
Neurology. 2021 Sep 7;97(10):474-488. doi: 10.1212/WNL.0000000000012499. Epub 2021 Jul 15.
There is a lack of consensus on how to optimally define and measure resistance and resilience in brain and cognitive aging. Residual methods use residuals from regression analysis to quantify the capacity to avoid (resistance) or cope (resilience) "better or worse than expected" given a certain level of risk or cerebral damage. We reviewed the rapidly growing literature on residual methods in the context of aging and Alzheimer disease (AD) and performed meta-analyses to investigate associations of residual method-based resilience and resistance measures with longitudinal cognitive and clinical outcomes.
A systematic literature search of PubMed and Web of Science databases (consulted until March 2020) and subsequent screening led to 54 studies fulfilling eligibility criteria, including 10 studies suitable for the meta-analyses.
We identified articles using residual methods aimed at quantifying resistance (n = 33), cognitive resilience (n = 23), and brain resilience (n = 2). Critical examination of the literature revealed that there is considerable methodologic variability in how the residual measures were derived and validated. Despite methodologic differences across studies, meta-analytic assessments showed significant associations of levels of resistance (hazard ratio [HR] [95% confidence interval (CI)] 1.12 [1.07-1.17]; < 0.0001) and levels of resilience (HR [95% CI] 0.46 [0.32-0.68]; < 0.001) with risk of progression to dementia/AD. Resilience was also associated with rate of cognitive decline (β [95% CI] 0.05 [0.01-0.08]; < 0.01).
This review and meta-analysis supports the usefulness of residual methods as appropriate measures of resilience and resistance, as they capture clinically meaningful information in aging and AD. More rigorous methodologic standardization is needed to increase comparability across studies and, ultimately, application in clinical practice.
在大脑和认知老化领域,如何最优地定义和衡量抵抗和弹性,目前尚无共识。残余方法使用回归分析的残差来量化在给定一定风险或大脑损伤水平下“好于或差于预期”避免(抵抗)或应对(弹性)的能力。我们回顾了与衰老和阿尔茨海默病(AD)相关的快速增长的残余方法文献,并进行了荟萃分析,以研究基于残余方法的弹性和抵抗措施与纵向认知和临床结局的相关性。
对 PubMed 和 Web of Science 数据库进行系统文献检索(检索至 2020 年 3 月),随后进行筛选,得出符合纳入标准的 54 项研究,其中 10 项研究适合进行荟萃分析。
我们确定了使用残余方法来量化抵抗(n = 33)、认知弹性(n = 23)和大脑弹性(n = 2)的文章。对文献的批判性检查表明,残余测量的推导和验证方法存在相当大的方法学差异。尽管研究之间存在方法学差异,但荟萃分析评估显示,抵抗水平(危险比[HR] [95%置信区间(CI)] 1.12 [1.07-1.17];<0.0001)和弹性水平(HR [95% CI] 0.46 [0.32-0.68];<0.001)与进展为痴呆/AD 的风险显著相关。弹性也与认知衰退率相关(β [95% CI] 0.05 [0.01-0.08];<0.01)。
本综述和荟萃分析支持残余方法作为适当的抵抗和弹性测量方法的有效性,因为它们在衰老和 AD 中捕获了具有临床意义的信息。需要更严格的方法学标准化来提高研究之间的可比性,并最终将其应用于临床实践。