Veldsman Michele, Cheng Hsiao-Ju, Ji Fang, Werden Emilio, Khlif Mohamed Salah, Ng Kwun Kei, Lim Joseph K W, Qian Xing, Yu Haoyong, Zhou Juan Helen, Brodtmann Amy
Department of Experimental Psychology, Wellcome Centre for Integrative Neuroimaging, University of Oxford, Oxford, UK.
Department of Medicine, Center for Sleep and Cognition, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore.
Brain Commun. 2020 Sep 26;2(2):fcaa155. doi: 10.1093/braincomms/fcaa155. eCollection 2020.
Over one-third of stroke patients has long-term cognitive impairment. The likelihood of cognitive dysfunction is poorly predicted by the location or size of the infarct. The macro-scale damage caused by ischaemic stroke is relatively localized, but the effects of stroke occur across the brain. Structural covariance networks represent voxelwise correlations in cortical morphometry. Atrophy and topographical changes within such distributed brain structural networks may contribute to cognitive decline after ischaemic stroke, but this has not been thoroughly investigated. We examined longitudinal changes in structural covariance networks in stroke patients and their relationship to domain-specific cognitive decline. Seventy-three patients (mean age, 67.41 years; SD = 12.13) were scanned with high-resolution magnetic resonance imaging at sub-acute (3 months) and chronic (1 year) timepoints after ischaemic stroke. Patients underwent a number of neuropsychological tests, assessing five cognitive domains including attention, executive function, language, memory and visuospatial function at each timepoint. Individual-level structural covariance network scores were derived from the sub-acute grey-matter probabilistic maps or changes in grey-matter probability maps from sub-acute to chronic using data-driven partial least squares method seeding at major nodes in six canonical high-order cognitive brain networks (i.e. dorsal attention, executive control, salience, default mode, language-related and memory networks). We then investigated co-varying patterns between structural covariance network scores within canonical distributed brain networks and domain-specific cognitive performance after ischaemic stroke, both cross-sectionally and longitudinally, using multivariate behavioural partial least squares correlation approach. We tested our models in an independent validation data set with matched imaging and behavioural testing and using split-half validation. We found that distributed degeneration in higher-order cognitive networks was associated with attention, executive function, language, memory and visuospatial function impairment in sub-acute stroke. From the sub-acute to the chronic timepoint, longitudinal structural co-varying patterns mirrored the baseline structural covariance networks, suggesting synchronized grey-matter volume decline occurred within established networks over time. The greatest changes, in terms of extent of distributed spatial co-varying patterns, were in the default mode and dorsal attention networks, whereas the rest were more focal. Importantly, faster degradation in these major cognitive structural covariance networks was associated with greater decline in attention, memory and language domains frequently impaired after stroke. Our findings suggest that sub-acute ischaemic stroke is associated with widespread degeneration of higher-order structural brain networks and degradation of these structural brain networks may contribute to longitudinal domain-specific cognitive dysfunction.
超过三分之一的中风患者存在长期认知障碍。梗死灶的位置或大小并不能很好地预测认知功能障碍的可能性。缺血性中风造成的宏观损伤相对局限,但中风的影响却遍布全脑。结构协方差网络代表了皮质形态测量中体素级别的相关性。这种分布式脑结构网络内的萎缩和地形变化可能导致缺血性中风后的认知衰退,但这一点尚未得到充分研究。我们研究了中风患者结构协方差网络的纵向变化及其与特定领域认知衰退的关系。73名患者(平均年龄67.41岁;标准差=12.13)在缺血性中风后的亚急性期(3个月)和慢性期(1年)时间点接受了高分辨率磁共振成像扫描。患者在每个时间点都接受了多项神经心理学测试,评估包括注意力、执行功能、语言、记忆和视觉空间功能在内的五个认知领域。个体水平的结构协方差网络分数是通过数据驱动的偏最小二乘法,从亚急性期灰质概率图或从亚急性期到慢性期的灰质概率图变化中得出的,以六个典型高阶认知脑网络(即背侧注意力、执行控制、突显、默认模式、语言相关和记忆网络)中的主要节点为种子点。然后,我们使用多变量行为偏最小二乘相关方法,在横截面和纵向层面上研究了典型分布式脑网络内结构协方差网络分数与缺血性中风后特定领域认知表现之间的共同变化模式。我们在一个具有匹配成像和行为测试的独立验证数据集中测试了我们的模型,并使用了对半验证。我们发现,高阶认知网络中的分布式退化与亚急性中风中的注意力、执行功能、语言、记忆和视觉空间功能损害有关。从亚急性期到慢性期时间点,纵向结构共同变化模式反映了基线结构协方差网络,表明随着时间的推移,既定网络内灰质体积同步下降。就分布式空间共同变化模式的范围而言,最大的变化发生在默认模式和背侧注意力网络,而其他网络的变化则更具局限性。重要的是,这些主要认知结构协方差网络中更快的退化与中风后经常受损的注意力、记忆和语言领域更大程度的衰退有关。我们的研究结果表明,亚急性缺血性中风与高阶结构脑网络的广泛退化有关,这些结构脑网络的退化可能导致纵向特定领域的认知功能障碍。