首页> 外文期刊>Neuroscience Letters: An International Multidisciplinary Journal Devoted to the Rapid Publication of Basic Research in the Brain Sciences >Recognition of the physiological actions of the triphasic EMG pattern by a dynamic recurrent neural network.
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Recognition of the physiological actions of the triphasic EMG pattern by a dynamic recurrent neural network.

机译:通过动态递归神经网络识别三相肌电图模式的生理作用。

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Triphasic electromyographic (EMG) patterns with a sequence of activity in agonist (AG1), antagonist (ANT) and again in agonist (AG2) muscles are characteristic of ballistic movements. They have been studied in terms of rectangular pulse-width or pulse-height modulation. In order to take into account the complexity of the EMG signal within the bursts, we used a dynamic recurrent neural network (DRNN) for the identification of this pattern in subjects performing fast elbow flexion movements. Biceps and triceps EMGs were fed to all 35 fully-connected hidden units of the DRNN for mapping onto elbow angular acceleration signals. DRNN training was supervised, involving learning rule adaptations of synaptic weights and time constants of each unit. We demonstrated that the DRNN is able to perfectly reproduce the acceleration profile of the ballistic movements. Then we tested the physiological plausibility of all the networks that reached an error level below 0.001 by selectively increasing the amplitude of each burst of the triphasic pattern and evaluating the effects on the simulated accelerating profile. Nineteen percent of these simulations reproduced the physiological action classically attributed to the 3 EMG bursts: AG1 increase showed an increase of the first accelerating pulse, ANT an increase of the braking pulse and AG2 an increase of the clamping pulse. These networks also recognized the physiological function of the time interval between AG1 and ANT, reproducing the linear relationship between time interval and movement amplitude. This task-dynamics recognition has implications for the development of DRNN as diagnostic tools and prosthetic controllers.
机译:弹道运动的特征是在激动剂(AG1),拮抗剂(ANT)和激动剂(AG2)肌肉中具有一系列活动的三相肌电图(EMG)模式。已经根据矩形脉冲宽度或脉冲高度调制对它们进行了研究。为了考虑到突发内肌电信号的复杂性,我们使用动态递归神经网络(DRNN)来识别执行快速肘部弯曲运动的受试者中的这种模式。将二头肌和三头肌EMG馈入DRNN的所有35个完全连接的隐藏单元,以映射到肘部角加速度信号上。监督DRNN培训,包括学习调整每个单元的突触权重和时间常数的规则。我们证明了DRNN能够完美地再现弹道运动的加速度曲线。然后,我们通过有选择地增加三边形图案的每个猝发的幅度并评估对模拟加速曲线的影响,测试了所有误差在0.001以下的网络的生理合理性。这些模拟中有19%再现了经典地归因于3个EMG脉冲的生理作用:AG1的增加表明第一个加速脉冲的增加,ANT的制动脉冲增加了,AG2的钳制脉冲增加了。这些网络还识别了AG1和ANT之间时间间隔的生理功能,从而再现了时间间隔和运动幅度之间的线性关系。这种对任务动力学的认识对于DRNN作为诊断工具和假肢控制器的发展具有重要意义。

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