Williams McKenna E, Elman Jeremy A, McEvoy Linda K, Andreassen Ole A, Dale Anders M, Eglit Graham M L, Eyler Lisa T, Fennema-Notestine Christine, Franz Carol E, Gillespie Nathan A, Hagler Donald J, Hatton Sean N, Hauger Richard L, Jak Amy J, Logue Mark W, Lyons Michael J, McKenzie Ruth E, Neale Michael C, Panizzon Matthew S, Puckett Olivia K, Reynolds Chandra A, Sanderson-Cimino Mark, Toomey Rosemary, Tu Xin M, Whitsel Nathan, Xian Hong, Kremen William S
Center for Behavior Genetics of Aging, University of California San Diego, La Jolla, CA 92093, USA.
Joint Doctoral Program in Clinical Psychology, San Diego State University/University of California, San Diego, CA 92093, USA.
Brain Commun. 2021 Jul 23;3(3):fcab167. doi: 10.1093/braincomms/fcab167. eCollection 2021.
Neuroimaging signatures based on composite scores of cortical thickness and hippocampal volume predict progression from mild cognitive impairment to Alzheimer's disease. However, little is known about the ability of these signatures among cognitively normal adults to predict progression to mild cognitive impairment. Towards that end, a signature sensitive to microstructural changes that may predate macrostructural atrophy should be useful. We hypothesized that: (i) a validated MRI-derived Alzheimer's disease signature based on cortical thickness and hippocampal volume in cognitively normal middle-aged adults would predict progression to mild cognitive impairment; and (ii) a novel grey matter mean diffusivity signature would be a better predictor than the thickness/volume signature. This cohort study was part of the Vietnam Era Twin Study of Aging. Concurrent analyses compared cognitively normal and mild cognitive impairment groups at each of three study waves (s = 246-367). Predictive analyses included 169 cognitively normal men at baseline (age = 56.1, range = 51-60). Our previously published thickness/volume signature derived from independent data, a novel mean diffusivity signature using the same regions and weights as the thickness/volume signature, age, and an Alzheimer's disease polygenic risk score were used to predict incident mild cognitive impairment an average of 12 years after baseline (follow-up age = 67.2, range = 61-71). Additional analyses adjusted for predicted brain age difference scores (chronological age minus predicted brain age) to determine if signatures were Alzheimer-related and not simply ageing-related. In concurrent analyses, individuals with mild cognitive impairment had higher (worse) mean diffusivity signature scores than cognitively normal participants, but thickness/volume signature scores did not differ between groups. In predictive analyses, age and polygenic risk score yielded an area under the curve of 0.74 (sensitivity = 80.00%; specificity = 65.10%). Prediction was significantly improved with addition of the mean diffusivity signature (area under the curve = 0.83; sensitivity = 85.00%; specificity = 77.85%; = 0.007), but not with addition of the thickness/volume signature. A model including both signatures did not improve prediction over a model with only the mean diffusivity signature. Results held up after adjusting for predicted brain age difference scores. The novel mean diffusivity signature was limited by being yoked to the thickness/volume signature weightings. An independently derived mean diffusivity signature may thus provide even stronger prediction. The young age of the sample at baseline is particularly notable. Given that the brain signatures were examined when participants were only in their 50 s, our results suggest a promising step towards improving very early identification of Alzheimer's disease risk and the potential value of mean diffusivity and/or multimodal brain signatures.
基于皮质厚度和海马体体积综合评分的神经影像特征可预测从轻度认知障碍进展为阿尔茨海默病。然而,对于认知正常的成年人中这些特征预测进展为轻度认知障碍的能力知之甚少。为此,一种对可能早于宏观结构萎缩的微观结构变化敏感的特征可能会很有用。我们假设:(i)基于认知正常的中年成年人皮质厚度和海马体体积的经过验证的MRI衍生阿尔茨海默病特征可预测进展为轻度认知障碍;(ii)一种新的灰质平均扩散率特征将比厚度/体积特征是更好的预测指标。这项队列研究是越南时代双胞胎衰老研究的一部分。同时分析在三个研究波次中的每一波次比较了认知正常组和轻度认知障碍组(样本量s = 246 - 367)。预测分析纳入了169名基线时认知正常的男性(年龄 = 56.1岁,范围 = 51 - 60岁)。我们先前从独立数据得出的厚度/体积特征、使用与厚度/体积特征相同区域和权重的新平均扩散率特征、年龄以及阿尔茨海默病多基因风险评分被用于预测基线后平均12年发生的轻度认知障碍(随访年龄 = 67.2岁,范围 = 61 - 71岁)。额外的分析对预测的脑年龄差异分数(实际年龄减去预测脑年龄)进行了校正,以确定这些特征是否与阿尔茨海默病相关而非仅仅与衰老相关。在同时分析中,轻度认知障碍个体的平均扩散率特征得分高于(更差)认知正常参与者,但厚度/体积特征得分在两组之间没有差异。在预测分析中,年龄和多基因风险评分的曲线下面积为0.74(敏感性 = 80.00%;特异性 = 65.10%)。加入平均扩散率特征后预测有显著改善(曲线下面积 = 0.83;敏感性 = 85.00%;特异性 = 77.85%;P = 0.007),但加入厚度/体积特征后没有改善。包含两个特征的模型与仅包含平均扩散率特征的模型相比,预测效果并未改善。在对预测脑年龄差异分数进行校正后结果依然成立。新的平均扩散率特征受限于与厚度/体积特征权重相关。因此,一个独立得出的平均扩散率特征可能会提供更强的预测能力。基线时样本的年轻年龄尤其值得注意。鉴于在参与者仅50多岁时就对脑特征进行了检查,我们的结果表明在改善阿尔茨海默病风险的极早期识别以及平均扩散率和/或多模态脑特征的潜在价值方面迈出了有前景的一步。