Costalago-Meruelo Alicia, Simpson David M, Veres Sandor M, Newland Philip L
Faculty of Engineering and the Environment, University of Southampton, Southampton, UK.
Neurologisches Forschungshaus, Ludwig-Maximilians-Universität, München, Germany.
J Comput Neurosci. 2017 Aug;43(1):5-15. doi: 10.1007/s10827-017-0644-x. Epub 2017 Apr 22.
In many animals intersegmental reflexes are important for postural and movement control but are still poorly undesrtood. Mathematical methods can be used to model the responses to stimulation, and thus go beyond a simple description of responses to specific inputs. Here we analyse an intersegmental reflex of the foot (tarsus) of the locust hind leg, which raises the tarsus when the tibia is flexed and depresses it when the tibia is extended. A novel method is described to measure and quantify the intersegmental responses of the tarsus to a stimulus to the femoro-tibial chordotonal organ. An Artificial Neural Network, the Time Delay Neural Network, was applied to understand the properties and dynamics of the reflex responses. The aim of this study was twofold: first to develop an accurate method to record and analyse the movement of an appendage and second, to apply methods to model the responses using Artificial Neural Networks. The results show that Artificial Neural Networks provide accurate predictions of tarsal movement when trained with an average reflex response to Gaussian White Noise stimulation compared to linear models. Furthermore, the Artificial Neural Network model can predict the individual responses of each animal and responses to others inputs such as a sinusoid. A detailed understanding of such a reflex response could be included in the design of orthoses or functional electrical stimulation treatments to improve walking in patients with neurological disorders as well as the bio/inspired design of robots.
在许多动物中,节间反射对于姿势和运动控制很重要,但仍未得到充分理解。数学方法可用于对刺激反应进行建模,从而超越对特定输入反应的简单描述。在此,我们分析了蝗虫后腿足部(跗节)的节间反射,当胫节弯曲时跗节会抬起,而当胫节伸展时跗节会下压。我们描述了一种新方法来测量和量化跗节对股胫弦音器刺激的节间反应。应用了一种人工神经网络——时延神经网络来理解反射反应的特性和动态。本研究的目的有两个:一是开发一种准确的方法来记录和分析附肢的运动,二是应用方法使用人工神经网络对反应进行建模。结果表明,与线性模型相比,当时延神经网络用对高斯白噪声刺激的平均反射反应进行训练时,它能准确预测跗节运动。此外,人工神经网络模型可以预测每只动物的个体反应以及对其他输入(如正弦波)的反应。对这种反射反应的详细理解可纳入矫形器或功能性电刺激治疗的设计中,以改善神经疾病患者的行走能力,以及机器人的生物启发式设计。