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Modeling the motor cortex: Optimality, recurrent neural networks, and spatial dynamics

机译:运动皮层建模:最优性,递归神经网络和空间动力学

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Specialization of motor function in the frontal lobe was first discovered in the seminal experiments by Fritsch and Hitzig and subsequently by Ferrier in the 19th century. It is, however, ironical that the functional and computational role of the motor cortex still remains unresolved. A computational understanding of the motor cortex equals to understanding what movement variables the motor neurons represent (movement representation problem) and how such movement variables are computed through the interaction with anatomically connected areas (neural computation problem). Electrophysiological experiments in the 20th century demonstrated that the neural activities in motor cortex correlated with a number of motor-related and cognitive variables, thereby igniting the controversy over movement representations in motor cortex. Despite substantial experimental efforts, the overwhelming complexity found in neural activities has impeded our understanding of how movements are represented in the motor cortex. Recent progresses in computational modeling have rekindled this controversy in the 21st century. Here, I review the recent developments in computational models of the motor cortex, with a focus on optimality models, recurrent neural network models and spatial dynamics models. Although individual models provide consistent pictures within their domains, our current understanding about functions of the motor cortex is still fragmented. (C) 2015 Elsevier Ireland Ltd and the Japan Neuroscience Society. All rights reserved.
机译:Fritsch和Hitzig在开创性实验中首先发现了额叶运动功能的专业化,随后在19世纪由Ferrier进行了发现。然而,具有讽刺意味的是,运动皮层的功能和计算作用仍未解决。对运动皮层的计算理解等于理解运动神经元代表哪些运动变量(运动表示问题)以及如何通过与解剖学连接的区域的交互作用来计算此类运动变量(神经计算问题)。 20世纪的电生理实验表明,运动皮层中的神经活动与许多运动相关和认知变量相关,从而引发了运动皮层中运动表示的争议。尽管进行了大量的实验性努力,但神经活动中发现的压倒性复杂性阻碍了我们对运动在运动皮层中如何表示的理解。计算建模的最新进展重新点燃了21世纪的这一争议。在这里,我回顾了运动皮层计算模型的最新发展,重点是最优性模型,递归神经网络模型和空间动力学模型。尽管各个模型在其域内提供一致的图像,但是我们对运动皮层功能的当前理解仍然是零散的。 (C)2015 Elsevier Ireland Ltd和日本神经科学学会。版权所有。

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