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Automatic determination of synergies by radial basis function artificial neural networks for the control of a neural prosthesis

机译:通过径向基函数人工神经网络自动确定协同作用,以控制神经假体

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This paper describes an automatic method for synthesizing the control for a neural prosthesis (NP) that could augment elbow flexion/extension and forearm pronation/supination in persons with hemiplegia. The basis for the control was a synergistic model of reaching and grasping that uses temporal and spatial synergies between the arm and body segments. The synergies were determined from the movement data measured in nondisabled persons during the performance of functional tasks. The work space was divided into six zones: distance (two attributes) and laterality (three attributes). Radial basis function artificial neural networks (RBF ANN) were used to determine synergies. Sets of RBF ANN characterized with good generalization were selected as control laws for elbow flexion/extension and forearm pronation/supination. The validation was performed for three categories: inter-subject, distance, and laterality generalization. For all of the defined spatial synergies, the correlation was high for inter-subject and distance, yet low for the laterality scenario. This suggests the necessity for implementing different maps for different directions, but the same maps for different distances. The natural movements of the upper arm then drive the lower arm (elbow flexion/extension and forearm pronation/supination) in a way that is very well suited for the administration of functional electrical therapy (FET) in persons with hemiplegia soon after the onset of impairment.
机译:本文介绍了一种合成神经假体(NP)控制的自动方法,该方法可以增强偏瘫患者的肘部屈伸/前臂屈伸和前臂旋前/旋前。控制的基础是达到伸张和抓握的协同模型,该模型利用手臂和身体各部分之间的时间和空间协同作用。协同作用是根据执行功能任务期间非残疾人的运动数据确定的。工作空间分为六个区域:距离(两个属性)和侧面(三个属性)。径向基函数人工神经网络(RBF ANN)用于确定协同作用。选择具有良好泛化特性的RBF神经网络集作为肘部屈伸/前臂屈伸和前臂旋前/旋后的控制律。对三个类别执行了验证:对象间,距离和横向泛化。对于所有定义的空间协同作用,对象间和距离的相关性很高,而对于侧面场景则相关性很低。这表明有必要为不同的方向实现不同的地图,但为不同的距离实现相同的地图。然后,上臂的自然运动以一种非常适合于偏瘫发作后不久进行功能性电疗(FET)的方式驱动下臂(肘部弯曲/伸展和前臂内旋/旋前)。损害。

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