Frontotemporal Dementia Unit, Massachusetts General Hospital and Harvard Medical School Boston, MA, USA ; Department of Neurology, Massachusetts General Hospital and Harvard Medical School Boston, MA, USA ; Massachusetts Alzheimer's Disease Research Center, Massachusetts General Hospital and Harvard Medical School Boston, MA, USA ; Athinoula A. Martinos Center for Biomedical Imaging, Massachusetts General Hospital and Harvard Medical School Boston, MA, USA.
Front Aging Neurosci. 2013 Oct 11;5:55. doi: 10.3389/fnagi.2013.00055. eCollection 2013.
New diagnostic criteria for mild cognitive impairment (MCI) due to Alzheimer's disease (AD) have been developed using biomarkers aiming to establish whether the clinical syndrome is likely due to underlying AD. We investigated the utility of magnetic resonance imaging (MRI) and cerebrospinal fluid (CSF) biomarkers in predicting progression from amnesic MCI to dementia, testing the hypotheses that (1) markers of amyloid and neurodegeneration provide distinct and complementary prognostic information over different time intervals, and that (2) evidence of neurodegeneration in amyloid-negative MCI individuals would be useful prognostically.
Data were obtained from the ADNI-1 (Alzheimer's Disease Neuroimaging Initiative Phase 1) database on all individuals with a baseline diagnosis of MCI, baseline MRI and CSF data, and at least one follow-up visit. MRI data were processed using a published set of a priori regions of interest to derive a measure known as the ``AD signature,'' as well as hippocampal volume. The CSF biomarkers amyloid-β, total tau, and phospho tau were also examined. We performed logistic regression analyses to identify the best baseline biomarker predictors of progression to dementia over 1 or 3 years, and Cox regression models to test the utility of these markers for predicting time-to-dementia.
For prediction of dementia in MCI, the AD signature cortical thickness biomarker performed better than hippocampal volume. Although CSF tau measures were better than CSF amyloid-β at predicting dementia within 1 year, the AD signature was better than all CSF measures at prediction over this relatively short-term interval. CSF amyloid-β was superior to tau and AD signature at predicting dementia over 3 years. When CSF amyloid-β was dichotomized using previously published cutoff values and treated as a categorical variable, a multivariate stepwise Cox regression model indicated that both the AD signature MRI marker and the categorical CSF amyloid-β marker were useful in predicting time-to-event diagnosis of AD dementia.
In amnesic MCI, short-term (1 year) prognosis of progression to dementia relates strongly to baseline markers of neurodegeneration, with the AD signature MRI biomarker of cortical thickness performing the best among MRI and CSF markers studied here. Longer-term (3 year) prognosis in these individuals was better predicted by a marker indicative of brain amyloid. Prediction of time-to-event in a survival model was predicted by the combination of these biomarkers. These results provide further support for emerging models of the temporal relationship of pathophysiologic events in AD and demonstrate the utility of these biomarkers at the prodromal stage of the illness.
为了确定临床综合征是否可能是由潜在的阿尔茨海默病(AD)引起的,目前已经使用生物标志物为轻度认知障碍(MCI)制定了新的 AD 诊断标准。我们研究了磁共振成像(MRI)和脑脊液(CSF)生物标志物在预测遗忘型 MCI 向痴呆进展方面的效用,检验了以下两个假设:(1)淀粉样蛋白和神经退行性变的标志物在不同的时间间隔内提供了独特且互补的预后信息;(2)在淀粉样蛋白阴性的 MCI 个体中存在神经退行性变的证据在预测方面将是有用的。
本研究的数据来自 ADNI-1(阿尔茨海默病神经影像学倡议第 1 期)数据库,纳入所有基线诊断为 MCI、基线 MRI 和 CSF 数据、且至少有一次随访的个体。使用一套预先设定的感兴趣区对 MRI 数据进行处理,以得出被称为“AD 特征”的指标,以及海马体积。还检查了 CSF 生物标志物β-淀粉样蛋白、总 tau 和磷酸化 tau。我们进行了逻辑回归分析,以确定最佳的基线生物标志物预测因子,用于在 1 年或 3 年内进展为痴呆,并进行 Cox 回归模型以检验这些标志物对预测痴呆时间的效用。
对于 MCI 向痴呆的预测,AD 特征皮质厚度生物标志物的表现优于海马体积。尽管 CSF tau 测量值在预测 1 年内的痴呆方面优于 CSF 淀粉样蛋白-β,但在该相对短期的时间间隔内,AD 特征优于所有 CSF 测量值。CSF 淀粉样蛋白-β在预测 3 年内的痴呆方面优于 tau 和 AD 特征。当使用先前发表的截止值将 CSF 淀粉样蛋白-β进行二分法处理并作为分类变量时,多变量逐步 Cox 回归模型表明,AD 特征 MRI 标志物和 CSF 淀粉样蛋白-β的分类标志物都可用于预测 AD 痴呆的事件时间诊断。
在遗忘型 MCI 中,向痴呆进展的短期(1 年)预后与神经退行性变的基线标志物密切相关,皮质厚度的 AD 特征 MRI 生物标志物在本研究中研究的 MRI 和 CSF 标志物中表现最佳。在这些个体中,更长时间(3 年)的预后预测由脑淀粉样蛋白的标志物更好地预测。在生存模型中的时间到事件的预测由这些生物标志物的组合预测。这些结果为 AD 中病理生理事件的时间关系的新模型提供了进一步的支持,并证明了这些生物标志物在疾病的前驱期的效用。