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Switching Markov decoders for asynchronous trajectory reconstruction from ECoG signals in monkeys for BCI applications. | LitMetric

Switching Markov decoders for asynchronous trajectory reconstruction from ECoG signals in monkeys for BCI applications.

J Physiol Paris

Univ. Grenoble Alpes, CEA, LETI, CLINATEC, MINATEC Campus, 38000 Grenoble, France. Electronic address:

Published: November 2016

AI Article Synopsis

  • Brain-Computer Interfaces (BCIs) convert brain activity into commands for devices, with users alternating between No-Control (NC) and Intentional Control (IC) periods, making accurate state detection vital for applications like exoskeletons.
  • The article introduces a new hybrid decoder called the Markov Switching Linear Model (MSLM), which dynamically detects NC/IC states and integrates continuous movement models based on probabilistic state detection, improving upon existing static models.
  • Evaluation of the MSLM in decoding wrist position from ECoG data in monkeys shows it outperforms other decoders, including a Switching Kalman Filter and a thresholded Wiener filter, with better accuracy and lower error rates.

Article Abstract

Brain-Computer Interfaces (BCIs) are systems which translate brain neural activity into commands for external devices. BCI users generally alternate between No-Control (NC) and Intentional Control (IC) periods. NC/IC discrimination is crucial for clinical BCIs, particularly when they provide neural control over complex effectors such as exoskeletons. Numerous BCI decoders focus on the estimation of continuously-valued limb trajectories from neural signals. The integration of NC support into continuous decoders is investigated in the present article. Most discrete/continuous BCI hybrid decoders rely on static state models which don't exploit the dynamic of NC/IC state succession. A hybrid decoder, referred to as Markov Switching Linear Model (MSLM), is proposed in the present article. The MSLM assumes that the NC/IC state sequence is generated by a first-order Markov chain, and performs dynamic NC/IC state detection. Linear continuous movement models are probabilistically combined using the NC and IC state posterior probabilities yielded by the state decoder. The proposed decoder is evaluated for the task of asynchronous wrist position decoding from high dimensional space-time-frequency ElectroCorticoGraphic (ECoG) features in monkeys. The MSLM is compared with another dynamic hybrid decoder proposed in the literature, namely a Switching Kalman Filter (SKF). A comparison is additionally drawn with a Wiener filter decoder which infers NC states by thresholding trajectory estimates. The MSLM decoder is found to outperform both the SKF and the thresholded Wiener filter decoder in terms of False Positive Ratio and NC/IC state detection error. It additionally surpasses the SKF with respect to the Pearson Correlation Coefficient and Root Mean Squared Error between true and estimated continuous trajectories.

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Source
http://dx.doi.org/10.1016/j.jphysparis.2017.03.002DOI Listing

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