Laboratory of Brain and Cognition, Department of Human Development, Cornell University, Ithaca, New York, 14853, Human Neuroscience Institute, Cornell University, Ithaca, New York, 14853, and Department of Psychology, York University, Toronto, Ontario M3J 1P3, Canada.
J Neurosci. 2013 Sep 18;33(38):15226-34. doi: 10.1523/JNEUROSCI.2261-13.2013.
Significant progress has been made uncovering functional brain networks, yet little is known about the corresponding structural covariance networks. The default network's functional architecture has been shown to change over the course of healthy and pathological aging. We examined cross-sectional and longitudinal datasets to reveal the structural covariance of the human default network across the adult lifespan and through the progression of Alzheimer's disease (AD). We used a novel approach to identify the structural covariance of the default network and derive individual participant scores that reflect the covariance pattern in each brain image. A seed-based multivariate analysis was conducted on structural images in the cross-sectional OASIS (N = 414) and longitudinal Alzheimer's Disease Neuroimaging Initiative (N = 434) datasets. We reproduced the distributed topology of the default network, based on a posterior cingulate cortex seed, consistent with prior reports of this intrinsic connectivity network. Structural covariance of the default network scores declined in healthy and pathological aging. Decline was greatest in the AD cohort and in those who progressed from mild cognitive impairment to AD. Structural covariance of the default network scores were positively associated with general cognitive status, reduced in APOEε4 carriers versus noncarriers, and associated with CSF biomarkers of AD. These findings identify the structural covariance of the default network and characterize changes to the network's gray matter integrity across the lifespan and through the progression of AD. The findings provide evidence for the large-scale network model of neurodegenerative disease, in which neurodegeneration spreads through intrinsically connected brain networks in a disease specific manner.
在揭示功能大脑网络方面已经取得了重大进展,但对于相应的结构协变网络知之甚少。默认网络的功能结构已被证明在健康和病理性衰老过程中发生变化。我们检查了横断面和纵向数据集,以揭示人类默认网络在整个成年期以及阿尔茨海默病(AD)进展过程中的结构协变。我们使用一种新的方法来识别默认网络的结构协变,并得出个体参与者的分数,反映每个大脑图像中的协变模式。在横断面 OASIS(N = 414)和纵向阿尔茨海默病神经影像学倡议(N = 434)数据集的结构图像上进行了基于种子的多变量分析。我们基于后扣带回皮层种子再现了默认网络的分布式拓扑结构,这与该内在连接网络的先前报告一致。默认网络分数的结构协变在健康和病理性衰老中下降。在 AD 队列中和从轻度认知障碍进展为 AD 的患者中下降最大。默认网络分数的结构协变与一般认知状态呈正相关,在 APOEε4 携带者中比非携带者减少,并且与 AD 的 CSF 生物标志物相关。这些发现确定了默认网络的结构协变,并描述了网络的灰质完整性在整个生命周期以及通过 AD 进展过程中的变化。这些发现为神经退行性疾病的大规模网络模型提供了证据,在该模型中,神经退行性变以疾病特异性的方式通过内在连接的大脑网络传播。