Unsupervised decoding of spinal motor neuron spike trains for estimating hand kinematics following targeted muscle reinnervation
Arash Andalib, Dario Farina, Ivan Vujaklija, Francesco Negro, Oskar C, Aszmann, Rizwan Bashirullah, Jose C Principe

TL;DR
This paper introduces an unsupervised method to decode spinal motor neuron spike trains from EMG signals into hand kinematics, enabling more intuitive prosthetic control with robustness to data limitations.
Contribution
It presents a novel unsupervised PCA-based approach to extract control signals from motor neuron spike trains for prosthetic hand movement estimation.
Findings
Successful estimation of up to three degrees of freedom in hand movements.
Robustness of the decoding method to reduced training data in space and time.
Potential for clinical application due to data efficiency and simplicity.
Abstract
The performance of upper-limb prostheses is currently limited by the relatively poor functionality of unintuitive control schemes. This paper proposes to extract, from multichannel electromyographic signals (EMG), motor neuron spike trains and project them into lower dimensional continuous signals, which are used as multichannel proportional inputs to control the prosthetic's actuators. These control signals are an estimation of the common synaptic input that the motor neurons receive. We use the simplest of metric learning approaches known as principal component analysis (PCA), as a linear unsupervised metric projection to extract the spectral information of high dimensional data into the subspace of the prosthetic hand degrees of freedom. We also investigate the importance of a rotation in the projection space that best aligns the PCA subspace with the space of degrees of freedom of…
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