Hohman Timothy J, McLaren Donald G, Mormino Elizabeth C, Gifford Katherine A, Libon David J, Jefferson Angela L
From the Vanderbilt Memory & Alzheimer's Center (T.J.H., K.A.G., A.L.J.), Vanderbilt University Medical Center, Nashville, TN; Biospective Inc (D.G.M.), Montreal, Quebec, Canada; Department of Neurology (E.C.M.), Massachusetts General Hospital, Harvard Medical School, Boston; and Department of Geriatric and Gerontology (D.J.L.), New Jersey Institute for Successful Aging and Department of Psychology, Rowan University School of Osteopathic Medicine, Stratford.
Neurology. 2016 Dec 6;87(23):2443-2450. doi: 10.1212/WNL.0000000000003397. Epub 2016 Nov 4.
To define robust resilience metrics by leveraging CSF biomarkers of Alzheimer disease (AD) pathology within a latent variable framework and to demonstrate the ability of such metrics to predict slower rates of cognitive decline and protection against diagnostic conversion.
Participants with normal cognition (n = 297) and mild cognitive impairment (n = 432) were drawn from the Alzheimer's Disease Neuroimaging Initiative. Resilience metrics were defined at baseline by examining the residuals when regressing brain aging outcomes (hippocampal volume and cognition) on CSF biomarkers. A positive residual reflected better outcomes than expected for a given level of pathology (high resilience). Residuals were integrated into a latent variable model of resilience and validated by testing their ability to independently predict diagnostic conversion, cognitive decline, and the rate of ventricular dilation.
Latent variables of resilience predicted a decreased risk of conversion (hazard ratio < 0.54, p < 0.0001), slower cognitive decline (β > 0.02, p < 0.001), and slower rates of ventricular dilation (β < -4.7, p < 2 × 10). These results were significant even when analyses were restricted to clinically normal individuals. Furthermore, resilience metrics interacted with biomarker status such that biomarker-positive individuals with low resilience showed the greatest risk of subsequent decline.
Robust phenotypes of resilience calculated by leveraging AD biomarkers and baseline brain aging outcomes provide insight into which individuals are at greatest risk of short-term decline. Such comprehensive definitions of resilience are needed to further our understanding of the mechanisms that protect individuals from the clinical manifestation of AD dementia, especially among biomarker-positive individuals.
在潜在变量框架内利用阿尔茨海默病(AD)病理学的脑脊液生物标志物来定义稳健的恢复力指标,并证明这些指标预测认知衰退速度减慢和预防诊断转换的能力。
从阿尔茨海默病神经影像学倡议中招募认知正常(n = 297)和轻度认知障碍(n = 432)的参与者。通过在将脑老化结果(海马体积和认知)对脑脊液生物标志物进行回归时检查残差,在基线时定义恢复力指标。正残差反映了在给定病理水平下比预期更好的结果(高恢复力)。残差被整合到恢复力的潜在变量模型中,并通过测试它们独立预测诊断转换、认知衰退和脑室扩张率的能力来进行验证。
恢复力的潜在变量预测转换风险降低(风险比<0.54,p<0.0001)、认知衰退减慢(β>0.02,p<0.001)和脑室扩张率减慢(β<-4.7,p<2×10)。即使分析仅限于临床正常个体,这些结果也具有显著性。此外,恢复力指标与生物标志物状态相互作用,使得恢复力低的生物标志物阳性个体显示出随后衰退的最大风险。
通过利用AD生物标志物和基线脑老化结果计算出的稳健恢复力表型,为了解哪些个体短期衰退风险最大提供了见解。需要这样全面的恢复力定义来加深我们对保护个体免受AD痴呆临床表现影响的机制的理解,特别是在生物标志物阳性个体中。