Stern Yaakov, Habeck Christian, Steffener Jason, Barulli Daniel, Gazes Yunglin, Razlighi Qolamreza, Shaked Danielle, Salthouse Timothy
Cognitive Neuroscience Division, Department of Neurology and Taub Institute for Research on Alzheimer's Disease and The Aging Brain, Columbia University College of Physicians and Surgeons, 630 W 168th St, P&S Box 16, New York, NY 10032, USA.
Department of Psychology, University of Virginia, 102 Gilmer Hall, PO Box 400400, Charlottesville, VA 22904, USA.
Neuroimage. 2014 Dec;103:139-151. doi: 10.1016/j.neuroimage.2014.09.029. Epub 2014 Sep 20.
We introduce and describe the Reference Ability Neural Network Study and provide initial feasibility data. Based on analyses of large test batteries administered to individuals ranging from young to old, four latent variables, or reference abilities (RAs) that capture the majority of the variance in age-related cognitive change have been identified: episodic memory, fluid reasoning, perceptual speed, and vocabulary. We aim to determine whether spatial fMRI networks can be derived that are uniquely associated with the performance of each reference ability. We plan to image 375 healthy adults (50 per decade from age 20 to 50; 75 per decade from age 50 to 80) while performing a set of 12 cognitive tasks. Data on 174 participants are reported here. Three tasks were grouped a priori into each of the four reference ability domains. We first assessed to what extent both cognitive task scores and activation patterns readily show convergent and discriminant validity, i.e. increased similarity between tasks within the same domain and decreased similarity between tasks between domains, respectively. Block-based time-series analysis of each individual task was conducted for each participant via general linear modeling. We partialled activation common to all tasks out of the imaging data. For both test scores and activation topographies, we then calculated correlations for each of 66 possible pairings of tasks, and compared the magnitude of correlation of tasks within reference ability domains to that of tasks between domains. For the behavioral data, globally there were significantly stronger inter-task correlations within than between domains. When examining individual abilities, 3 of the domains also met these criteria but memory reached only borderline significance. Overall there was greater topographic similarity within reference abilities than between them (p<0.0001), but when examined individually, statistical significance was reached only for episodic memory and perceptual speed. We then turned to a multivariate technique, linear indicator regression analysis, to derive four unique linear combinations of Principal Components (PC) of imaging data that were associated with each RA. We investigated the ability of the identified PCs to predict the reference domain associated with the activation of individual subjects for individual tasks. Median accuracy rates for associating component task activation with a particular reference ability were quite good: memory: 82%; reasoning: 87%; speed: 84%; vocabulary: 77%. These results demonstrate that even using basic GLM analysis, the topography of activation of tasks within a domain is more similar than tasks between domains. The follow-up regression analyses suggest that all tasks with each RA rely on a common network, unique to that RA. Our ultimate goal is to better characterize these RA neural networks and then study how their expression changes across the age span. Our hope is that by focusing on these networks associated with key features of cognitive aging, as opposed to task-related activation associated with individual tasks, we will be able to advance our knowledge regarding the key brain changes that underlie cognitive aging.
我们介绍并描述了参考能力神经网络研究,并提供了初步的可行性数据。基于对不同年龄段个体进行的大量测试组分析,已确定了四个潜在变量,即参考能力(RAs),它们捕获了与年龄相关的认知变化中的大部分方差:情景记忆、流体推理、感知速度和词汇。我们旨在确定是否可以推导与每种参考能力表现独特相关的空间功能磁共振成像(fMRI)网络。我们计划对375名健康成年人(20至50岁每十年50人;50至80岁每十年75人)进行成像,同时他们执行一组12项认知任务。本文报告了174名参与者的数据。事先将三项任务分组到四个参考能力领域中的每一个。我们首先评估认知任务分数和激活模式在多大程度上易于显示出收敛效度和区分效度,即分别在同一领域内任务之间的相似性增加,以及不同领域之间任务之间的相似性降低。通过一般线性模型对每个参与者的每个单独任务进行基于块的时间序列分析。我们从成像数据中去除所有任务共有的激活。对于测试分数和激活地形图,然后我们计算了66种可能任务配对中每一对的相关性,并比较了参考能力领域内任务与不同领域任务的相关程度。对于行为数据,总体而言,领域内任务间的相关性明显强于领域间的相关性。在检查个体能力时,其中3个领域也符合这些标准,但记忆仅达到临界显著性。总体而言,参考能力内部的地形图相似性大于它们之间的相似性(p<0.0001),但单独检查时,仅情景记忆和感知速度达到统计学显著性。然后我们转向一种多变量技术,即线性指标回归分析,以推导与每个参考能力相关的成像数据主成分(PC)的四个独特线性组合。我们研究了所确定的主成分预测与个体任务中个体受试者激活相关的参考领域的能力。将成分任务激活与特定参考能力相关联的中位数准确率相当不错:记忆:82%;推理:87%;速度:84%;词汇:77%。这些结果表明,即使使用基本的一般线性模型分析,一个领域内任务的激活地形图也比不同领域任务的激活地形图更相似。后续的回归分析表明,与每个参考能力相关的所有任务都依赖于一个该参考能力独有的共同网络。我们的最终目标是更好地表征这些参考能力神经网络,然后研究它们的表达如何随年龄变化。我们希望通过关注与认知衰老关键特征相关的这些网络,而不是与个体任务相关的任务相关激活,我们将能够推进我们对认知衰老背后关键脑变化的认识。