论文标题
将运动皮层刺激映射到肌肉反应:深层神经网络建模方法
Mapping Motor Cortex Stimulation to Muscle Responses: A Deep Neural Network Modeling Approach
论文作者
论文摘要
可以可靠地对相应的大脑刺激对肌肉反应进行可靠模拟肌肉反应的深神经网络(DNN),有可能增加对众多基础科学和应用用例的协调运动控制知识。此类情况包括理解中风神经损伤引起的异常运动模式,以及基于刺激的神经恢复的干预措施,例如配对的缔合刺激。 In this work, potential DNN models are explored and the one with the minimum squared errors is recommended for the optimal performance of the M2M-Net, a network that maps transcranial magnetic stimulation of the motor cortex to corresponding muscle responses, using: a finite element simulation, an empirical neural response profile, a convolutional autoencoder, a separate deep network mapper, and recordings of multi-muscle activation.我们讨论了不同建模方法和体系结构背后的理由,并将其对比。此外,为了获得对复杂性和绩效分析之间权衡的比较见解,我们探索了不同的技术,包括扩展M2M-NET的两个经典信息标准。最后,我们发现该模型类似于将运动皮层刺激映射到直接和协同连接与肌肉的结合时,当在输入中使用神经反应谱时,表现最好。
A deep neural network (DNN) that can reliably model muscle responses from corresponding brain stimulation has the potential to increase knowledge of coordinated motor control for numerous basic science and applied use cases. Such cases include the understanding of abnormal movement patterns due to neurological injury from stroke, and stimulation based interventions for neurological recovery such as paired associative stimulation. In this work, potential DNN models are explored and the one with the minimum squared errors is recommended for the optimal performance of the M2M-Net, a network that maps transcranial magnetic stimulation of the motor cortex to corresponding muscle responses, using: a finite element simulation, an empirical neural response profile, a convolutional autoencoder, a separate deep network mapper, and recordings of multi-muscle activation. We discuss the rationale behind the different modeling approaches and architectures, and contrast their results. Additionally, to obtain a comparative insight of the trade-off between complexity and performance analysis, we explore different techniques, including the extension of two classical information criteria for M2M-Net. Finally, we find that the model analogous to mapping the motor cortex stimulation to a combination of direct and synergistic connection to the muscles performs the best, when the neural response profile is used at the input.