Gavett Brandon E, Tomaszewski Farias Sarah, Fletcher Evan, Widaman Keith, Whitmer Rachel A, Mungas Dan
Department of Neurology, University of California Davis School of Medicine, Sacramento, CA 95816, USA.
School of Education, University of California, Riverside, Riverside, CA 92521, USA.
Brain Commun. 2024 Jul 17;6(4):fcae240. doi: 10.1093/braincomms/fcae240. eCollection 2024.
Elucidating the mechanisms by which late-life neurodegeneration causes cognitive decline requires understanding why some individuals are more resilient than others to the effects of brain change on cognition (cognitive reserve). Currently, there is no way of measuring cognitive reserve that is valid (e.g. capable of moderating brain-cognition associations), widely accessible (e.g. does not require neuroimaging and large sample sizes), and able to provide insight into resilience-promoting mechanisms. To address these limitations, this study sought to determine whether a machine learning approach to combining standard clinical variables could (i) predict a residual-based cognitive reserve criterion standard and (ii) prospectively moderate brain-cognition associations. In a training sample combining data from the University of California (UC) Davis and the Alzheimer's Disease Neuroimaging Initiative-2 (ADNI-2) cohort ( = 1665), we operationalized cognitive reserve using an MRI-based residual approach. An eXtreme Gradient Boosting machine learning algorithm was trained to predict this residual reserve index (RRI) using three models: Minimal (basic clinical data, such as age, education, anthropometrics, and blood pressure), Extended (Minimal model plus cognitive screening, word reading, and depression measures), and Full [Extended model plus Clinical Dementia Rating (CDR) and Everyday Cognition (ECog) scale]. External validation was performed in an independent sample of ADNI 1/3/GO participants ( = 1640), which examined whether the effects of brain change on cognitive change were moderated by the machine learning models' cognitive reserve estimates. The three machine learning models differed in their accuracy and validity. The Minimal model did not correlate strongly with the criterion standard ( = 0.23) and did not moderate the effects of brain change on cognitive change. In contrast, the Extended and Full models were modestly correlated with the criterion standard ( = 0.49 and 0.54, respectively) and prospectively moderated longitudinal brain-cognition associations, outperforming other cognitive reserve proxies (education, word reading). The primary difference between the Minimal model-which did not perform well as a measure of cognitive reserve-and the Extended and Full models-which demonstrated good accuracy and validity-is the lack of cognitive performance and informant-report data in the Minimal model. This suggests that basic clinical variables like anthropometrics, vital signs, and demographics are not sufficient for estimating cognitive reserve. Rather, the most accurate and valid estimates of cognitive reserve were obtained when cognitive performance data-ideally augmented by informant-reported functioning-was used. These results indicate that a dynamic and accessible proxy for cognitive reserve can be generated for individuals without neuroimaging data and gives some insight into factors that may promote resilience.
要阐明晚年神经退行性变导致认知衰退的机制,需要理解为什么有些人比其他人更能抵御大脑变化对认知的影响(认知储备)。目前,尚无一种有效的认知储备测量方法(例如能够调节大脑与认知的关联)、广泛可用(例如不需要神经影像学检查和大样本量)且能够深入了解促进恢复力的机制。为解决这些局限性,本研究试图确定一种结合标准临床变量的机器学习方法是否能够:(i)预测基于残差的认知储备标准;(ii)前瞻性地调节大脑与认知的关联。在一个合并了加利福尼亚大学戴维斯分校(UC Davis)和阿尔茨海默病神经影像学计划 - 2(ADNI - 2)队列数据的训练样本(n = 1665)中,我们使用基于磁共振成像(MRI)的残差方法来操作化认知储备。使用极端梯度提升机器学习算法训练三个模型来预测这个残差储备指数(RRI):最小模型(基本临床数据,如年龄、教育程度、人体测量学和血压)、扩展模型(最小模型加上认知筛查、单词阅读和抑郁测量)和完整模型(扩展模型加上临床痴呆评定量表(CDR)和日常认知(ECog)量表)。在ADNI 1/3/GO参与者的独立样本(n = 1640)中进行外部验证,该样本检验了大脑变化对认知变化的影响是否被机器学习模型的认知储备估计值所调节。这三个机器学习模型在准确性和有效性方面存在差异。最小模型与标准之间的相关性不强(r = 0.23),并且不能调节大脑变化对认知变化的影响。相比之下,扩展模型和完整模型与标准有适度的相关性(分别为r = 0.49和0.54),并且前瞻性地调节了纵向大脑与认知的关联,优于其他认知储备替代指标(教育程度、单词阅读)。作为认知储备测量方法表现不佳的最小模型与表现出良好准确性和有效性的扩展模型和完整模型之间的主要区别在于,最小模型缺乏认知表现和知情人报告的数据。这表明人体测量学、生命体征和人口统计学等基本临床变量不足以估计认知储备。相反,当使用认知表现数据(理想情况下通过知情人报告的功能进行补充)时,能够获得最准确和有效的认知储备估计值。这些结果表明,可以为没有神经影像学数据的个体生成一个动态且可用的认知储备替代指标,并对可能促进恢复力的因素提供一些见解。