Different aspects of hand grip performance associated with structural connectivity of distinct sensorimotor networks in chronic stroke.

慢性中风患者手部握力表现的不同方面与不同感觉运动网络的结构连接性相关

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作者:Schranz Christian, Srivastava Shraddha, Seamon Bryant A, Marebwa Barbara, Bonilha Leonardo, Ramakrishnan Viswanathan, Wilmskoetter Janina, Neptune Richard R, Kautz Steve A, Seo Na Jin
Knowledge regarding the neural origins of distinct upper extremity impairments may guide the choice of interventions to target neural structures responsible for specific impairments. This cross-sectional pilot study investigated whether different brain networks explain distinct aspects of hand grip performance in stroke survivors. In 22 chronic stroke survivors, hand grip performance was characterized as grip strength, reaction, relaxation times, and control of grip force magnitude and direction. In addition, their brain structural connectomes were constructed from diffusion tensor MRI. Prominent networks were identified based on a two-step factor analysis using the number of streamlines among brain regions relevant to sensorimotor function. We used regression models to estimate the predictive value of sensorimotor network connectivity for hand grip performance measures while controlling for stroke lesion volumes. Each hand grip performance measure correlated with the connectivity of distinct brain sensorimotor networks. These results suggest that different brain networks may be responsible for different aspects of hand grip performance, which leads to varying clinical presentations of upper extremity impairment following stroke. Understanding the brain network correlates for different hand grip performances may facilitate the development of personalized rehabilitation interventions to directly target the responsible brain network for specific impairments in individual patients, thus improving outcomes.

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