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The Reference Ability Neural Network Study: Life-time stability of reference-ability neural networks derived from task maps of young adults

机译:参考能力神经网络研究:参考能力神经网络的生命周期稳定性这些信息来自年轻人的任务图

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摘要

Analyses of large test batteries administered to individuals ranging from young to old have consistently yielded a set of latent variables representing reference abilities (RAs) that capture the majority of the variance in age-related cognitive change: Episodic Memory, Fluid Reasoning, Perceptual Processing Speed, and Vocabulary. In a previous paper (), we introduced the Reference Ability Neural Network Study, which administers 12 cognitive neuroimaging tasks (3 for each RA) to healthy adults age 20–80 in order to derive unique neural networks underlying these 4 RAs and investigate how these networks may be affected by aging.We used a multivariate approach, linear indicator regression, to derive a unique covariance pattern or Reference Ability Neural Network (RANN) for each of the 4 RAs. The RANNs were derived from the neural task data of 64 younger adults of age 30 and below. We then prospectively applied the RANNs to fMRI data from the remaining sample of 227 adults of age 31 and above in order to classify each subject-task map into one of the 4 possible reference domains. Overall classification accuracy across subjects in the sample age 31 and above was 0.80 ± 0.18. Classification accuracy by RA domain was also good, but variable; memory: 0.72 ± 0.32; reasoning: 0.75 ± 0.35; speed: 0.79 ± 0.31; vocabulary: 0.94 ± 0.16. Classification accuracy was not associated with cross-sectional age, suggesting that these networks, and their specificity to the respective reference domain, might remain intact throughout the age range. Higher mean brain volume was correlated with increased overall classification accuracy; better overall performance on the tasks in the scanner was also associated with classification accuracy.For the RANN network scores, we observed for each RANN that a higher score was associated with a higher corresponding classification accuracy for that reference ability. Despite the absence of behavioral performance information in the derivation of these networks, we also observed some brain-behavioral correlations, notably for the fluid-reasoning network whose network score correlated with performance on the memory and fluid-reasoning tasks. While age did not influence the expression of this RANN, the slope of the association between network score and fluid-reasoning performance was negatively associated with higher ages. These results provide support for the hypothesis that a set of specific, age-invariant neural networks underlies these four RAs, and that these networks maintain their cognitive specificity and level of intensity across age.Activation common to all 12 tasks was identified as another activation pattern resulting from a mean-contrast Partial-Least-Squares technique. This common pattern did show associations with age and some subject demographics for some of the reference domains, lending support to the overall conclusion that aspects of neural processing that are specific to any cognitive reference ability stay constant across age, while aspects that are common to all reference abilities differ across age.
机译:对从年轻人到老年人的个人使用的大型测试电池的分析不断产生一组代表参考能力(RA)的潜在变量,这些变量捕获了与年龄有关的认知变化的大部分差异:情节记忆,流体推理,知觉处理速度和词汇。在上一篇文章()中,我们介绍了参考能力神经网络研究,该研究对20-80岁的健康成年人管理12项认知神经成像任务(每个RA进行3项),以便得出这4个RA的独特神经网络,并研究它们如何网络可能会受到老化的影响。我们使用多变量方法,线性指标回归来为4个RA中的每一个派生唯一的协方差模式或参考能力神经网络(RANN)。 RANNs来自64位30岁及以下的年轻成年人的神经任务数据。然后,我们前瞻性地将RANN应用于来自227名31岁及以上成年人的剩余样本的fMRI数据,以便将每个受试者任务图分类为4种可能的参考域之一。样本年龄在31岁及以上的受试者的总体分类准确度为0.80±0.18。 RA域的分类准确性也不错,但变化很大;记忆:0.72±0.32;推理:0.75±0.35;速度:0.79±0.31;词汇:0.94±0.16。分类的准确性与横断面年龄无关,这表明这些网络及其对相应参考域的特异性在整个年龄范围内可能都保持不变。平均脑容量较高与总体分类准确性提高相关;扫描程序在任务上的更好总体性能还与分类准确度相关。对于RANN网络得分,我们观察到每个RANN得分越高,对应于该参考能力的相应分类准确度越高。尽管在这些网络的派生中没有行为表现信息,但我们也观察到了一些脑行为相关性,特别是对于流体推理网络,其网络得分与记忆和流体推理任务的表现相关。虽然年龄不影响该RANN的表达,但网络得分与流体推理表现之间的关联斜率与更高的年龄负相关。这些结果为以下假设提供了支持:一组特定的,年龄不变的神经网络是这四个RA的基础,并且这些网络在整个年龄段内都保持了其认知特异性和强度水平。所有12个任务共有的激活被认为是另一种激活模式由均值偏最小二乘技术得出。这种常见的模式确实显示出与某些参考领域的年龄和某些主题的人口统计数据相关,这为总体结论提供了支持,即对于任何认知参考能力而言特定的神经加工方面在整个年龄段中都保持不变,而对于所有人而言都是相同的。参考能力因年龄而异。

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