半侧空间忽略
心理学
忽视
神经科学
默认模式网络
功能磁共振成像
任务正网络
听力学
神经心理学
物理医学与康复
认知
医学
精神科
作者
Lenny Ramsey,Joshua S. Siegel,Antonello Baldassarre,Nicholas V. Metcalf,Kristina Zinn,Gordon L. Shulman,Maurizio Corbetta
摘要
Objective We recently reported that spatial and nonspatial attention deficits in stroke patients with hemispatial neglect are correlated at 2 weeks postonset with widespread alterations of interhemispheric and intrahemispheric functional connectivity (FC) measured with resting‐state functional magnetic resonance imaging across multiple brain networks. The mechanisms underlying neglect recovery are largely unknown. In this study, we test the hypothesis that recovery of hemispatial neglect correlates with a return of network connectivity toward a normal pattern, herein defined as “network normalization.” Methods We measured attention deficits with a neuropsychological battery and FC in a large cohort of stroke patients at, on average, 2 weeks (n = 99), 3 months (n = 77), and 12 months (n = 64) postonset. The relationship between behavioral improvement and changes in FC was analyzed both in terms of a priori regions and networks known to be abnormal subacutely and in a data‐driven manner. Results Attention deficit recovery was mostly complete by 3 months and was significantly correlated with a normalization of abnormal FC across many networks. Improvement of attention deficits, independent of initial severity, was correlated with improvements of previously depressed interhemispheric FC across attention, sensory, and motor networks, and a restoration of the normal anticorrelation between dorsal attention/motor regions and default‐mode/frontoparietal regions, particularly in the damaged hemisphere. Interpretation These results demonstrate that abnormal network connectivity in hemispatial neglect is behaviorally relevant. A return toward normal network interactions, and presumably optimal information processing, is therefore a systems‐level mechanism that is associated with improvements of attention over time after focal injury. Ann Neurol 2016;80:127–141
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