M2M-InvNet: Human Motor Cortex Mapping From Multi-Muscle Response Using TMS and Generative 3D Convolutional Network

Md Navid Akbar, Mathew Yarossi,Sumientra Rampersad, Kyle Lockwood, Aria Masoomi,Eugene Tunik, Dana Brooks,Deniz Erdogmus

IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING(2024)

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摘要
Transcranial magnetic stimulation (TMS) is often applied to the motor cortex to stimulate a collection of motor evoked potentials (MEPs) in groups of peripheral muscles. The causal interface between TMS and MEP is the selective activation of neurons in the motor cortex; moving around the TMS 'spot' over the motor cortex causes different MEP responses. A question of interest is whether a collection of MEP responses can be used to identify the stimulated locations on the cortex, which could potentially be used to then place the TMS coil to produce chosen sets of MEPs. In this work we leverage our previous report on a 3D convolutional neural network (CNN) architecture that predicted MEPs from the induced electric field, to tackle an inverse imaging task in which we start with the MEPs and estimate the stimulated regions on the motor cortex. We present and evaluate five different inverse imaging CNN architectures, both conventional and generative, in terms of several measures of reconstruction accuracy. We found that one architecture, which we propose as M2M-InvNet, consistently achieved the best performance.
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关键词
Muscles,Motors,Convolutional neural networks,Brain modeling,Three-dimensional displays,Coils,Solid modeling,Transcranial magnetic stimulation (TMS),electromyography (EMG),3D convolutional neural network (3D CNN),inverse imaging,generative modeling
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