首页> 外文期刊>Neurorehabilitation and neural repair >Corticospinal excitability as a predictor of functional gains at the affected upper limb following robotic training in chronic stroke survivors
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Corticospinal excitability as a predictor of functional gains at the affected upper limb following robotic training in chronic stroke survivors

机译:慢性中风幸存者接受机器人训练后,皮质脊髓兴奋性可预测受影响的上肢功能获得

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Background. Robotic training can help improve function of a paretic limb following a stroke, but individuals respond differently to the training. A predictor of functional gains might improve the ability to select those individuals more likely to benefit from robot-based therapy. Studies evaluating predictors of functional improvement after a robotic training are scarce. One study has found that white matter tract integrity predicts functional gains following a robotic training of the hand and wrist. Objective. To determine the predictive ability of behavioral and brain measures in order to improve selection of individuals for robotic training. Methods: Twenty subjects with chronic stroke participated in an 8-week course of robotic exoskeletal training for the arm. Before training, a clinical evaluation, functional magnetic resonance imaging (fMRI), diffusion tensor imaging, and transcranial magnetic stimulation (TMS) were each measured as predictors. Final functional gain was defined as change in the Box and Block Test (BBT). Measures significant in bivariate analysis were fed into a multivariate linear regression model. Results. Training was associated with an average gain of 6 ± 5 blocks on the BBT (P <.0001). Bivariate analysis revealed that lower baseline motor-evoked potential (MEP) amplitude on TMS, and lower laterality M1 index on fMRI each significantly correlated with greater BBT change. In the multivariate linear regression analysis, baseline MEP magnitude was the only measure that remained significant. Conclusion. Subjects with lower baseline MEP magnitude benefited the most from robotic training of the affected arm. These subjects might have reserve remaining for the training to boost corticospinal excitability, translating into functional gains.
机译:背景。机器人训练可以帮助改善卒中后麻痹肢体的功能,但是个人对训练的反应不同。功能获得的预测指标可能会提高选择那些更可能从基于机器人的治疗中受益的个体的能力。评估机器人训练后功能改善的预测因素的研究很少。一项研究发现,在机械手训练手和腕后,白质道的完整性可预测功能的获得。目的。确定行为和大脑指标的预测能力,以改善机器人训练人员的选择。方法:20名患有慢性中风的受试者参加了为期8周的手臂机器人外骨骼训练课程。在训练之前,将临床评估,功能磁共振成像(fMRI),弥散张量成像和经颅磁刺激(TMS)分别作为预测指标进行测量。最终功能增益定义为盒装测试(BBT)中的变化。在双变量分析中显着的量度被输入到多元线性回归模型中。结果。训练与BBT的平均增益6±5块相关(P <.0001)。双变量分析显示,TMS上较低的基线运动诱发电位(MEP)振幅和fMRI上较低的偏侧性M1指数均与更大的BBT变化显着相关。在多元线性回归分析中,基线MEP幅度是唯一保持显着性的指标。结论。基线MEP值较低的受试者从受累手臂的机器人训练中受益最大。这些受试者可能有剩余的训练时间来增强皮质脊髓兴奋性,从而转化为功能增强。

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