Graduate School of Medical Science and Engineering, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea; KI for Health Science and Technology, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea.
KI for Health Science and Technology, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea; Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea.
Neuroimage. 2019 Feb 1;186:690-702. doi: 10.1016/j.neuroimage.2018.11.053. Epub 2018 Nov 29.
The concept of cognitive reserve (CR) originated from discrepancies between the degree of brain pathology and the severity of clinical manifestations. CR has been characterized through CR proxies, such as education and occupation complexity; however, such approaches have inherent limitations. Although several methods have been developed to overcome these limitations, they fail to reflect the entire Alzheimer's disease (AD) pathology. Meanwhile, graph theory analysis, one of most powerful and flexible approaches, have established remarkable network properties of the brain. The functional and structural brain networks are damaged in neurodegenerative diseases. Therefore, network analysis has been applied to clarify the characteristics of the disease or give insight. Here, using multimodal neuroimaging, we propose an intuitive model to estimate CR based on its original definition, and explore the neural substrates of CR from the perspective of networks and functional connectivity. A total of 87 subjects (21 AD, 32 mild cognitive impairment, and 34 normal aging) underwent tau and amyloid PET, 3D T1-weighted MR, and resting-state fMRI. We hypothesized CR as a residual of actual cognitive performance and expected performance to be related to quantitative factors, such as AD pathology, demographics, and a genetic factor. Then, we correlated this marker using education and occupation complexity as conventional CR proxies. We validated this marker by testing whether it would modulate the effect of brain pathology on memory function. To examine the neural substrates associated with CR, we performed graph analysis to investigate the association between the CR marker and network measures at different granularities in total subjects, AD spectrum and normal aging, respectively. The CR marker from our model was well associated with education and occupation complexity. More directly, the CR marker was revealed to modify the relationship between brain pathology and memory function among AD spectrum. The CR marker was correlated with the global efficiency of the entire network, nodal clustering coefficient, and local efficiency of the right middle-temporal pole. In connectivity analysis, one cluster of edges centered on right middle-temporal pole was significantly correlated with the CR marker. In subgroup analysis, the network measures of right middle-temporal pole still correlated with the CR marker among AD spectrum. However, right precentral gyrus was revealed to be associated with the CR marker in normal aging. This study demonstrates that our intuitive model using multimodal neuroimaging and network perspective adequately and comprehensively captures CR. From a network perspective, CR is associated with the capacity to process information efficiently in the brain. The right middle-temporal pole was revealed to be a pivotal neural substrate of CR in AD spectrum. These findings foster understanding of AD and will be useful to help identify individuals with vulnerability or resistance to AD pathology, and characterize patients for intervention or drug trials.
认知储备(CR)的概念源于脑病理学程度与临床表现严重程度之间的差异。CR 已通过 CR 代理(如教育和职业复杂性)进行了描述;然而,这些方法存在固有局限性。尽管已经开发了几种方法来克服这些局限性,但它们无法反映整个阿尔茨海默病(AD)病理学。同时,图论分析作为最强大和灵活的方法之一,已经确定了大脑的显著网络属性。神经退行性疾病会损害功能和结构的大脑网络。因此,网络分析已被应用于阐明疾病的特征或提供深入了解。在这里,我们使用多模态神经影像学,根据其原始定义提出了一种直观的模型来估计 CR,并从网络和功能连接的角度探索 CR 的神经基础。总共 87 名受试者(21 名 AD、32 名轻度认知障碍和 34 名正常衰老)接受了 tau 和淀粉样蛋白 PET、3D T1 加权磁共振成像和静息状态 fMRI。我们假设 CR 是实际认知表现的剩余部分,预期表现与 AD 病理学、人口统计学和遗传因素等定量因素有关。然后,我们将该标志物与作为传统 CR 代理的教育和职业复杂性相关联。我们通过测试该标志物是否会调节脑病理学对记忆功能的影响来验证该标志物。为了检查与 CR 相关的神经基础,我们在总样本、AD 谱和正常衰老中分别进行了图分析,以研究 CR 标志物与不同粒度的网络测量之间的关联。我们模型中的 CR 标志物与教育和职业复杂性很好地相关。更直接地说,CR 标志物揭示了 AD 谱中脑病理学与记忆功能之间关系的调节作用。CR 标志物与整个网络的全局效率、节点聚类系数和右侧颞中极的局部效率相关。在连接分析中,以右侧颞中极为中心的一个边缘簇与 CR 标志物显著相关。在亚组分析中,AD 谱中右中央前回的网络测量仍与 CR 标志物相关。然而,在正常衰老中,右侧中央前回与 CR 标志物相关。这项研究表明,我们使用多模态神经影像学和网络视角的直观模型充分而全面地捕捉到了 CR。从网络角度来看,CR 与大脑中有效处理信息的能力有关。右侧颞中极被揭示为 AD 谱中 CR 的关键神经基础。这些发现促进了对 AD 的理解,并将有助于帮助识别易患 AD 病理学或对 AD 病理学具有抵抗力的个体,并为干预或药物试验对患者进行特征描述。