A piecewise probabilistic regression model to decode hand movement trajectories from epidural and subdural ECoG signals.
J Neural Eng. 2018 Feb 27;:
Authors: Farrokhi B, Erfanian A
Abstract
OBJECTIVE: The primary concern of this study is to develop a probabilistic regression method that would improve the decoding of the hand movement trajectories from epidural ECoG as well as from subdural ECoG signals.
APPROACH: The model is characterized by the conditional expectation of the hand position given the ECoG signals. The conditional expectation of the hand position is then modeled by a linear combination of the conditional probability density functions defined for each segment of the movement. Moreover, a spatial linear filter is proposed for reducing the dimension of the feature space. The spatial linear filter is applied to each frequency band of the ECoG signals and extract the features with highest decoding performance.
MAIN RESULTS: For evaluating the proposed method, a dataset including 28 ECoG recordings from four adult Japanese macaques is used. The results show that the proposed decoding method outperforms the results with respect to the state of the art methods using this dataset. The relative kinematic information of each frequency band is also investigated using mutual information and decoding performance. The decoding performance shows that the best performance was obtained for high gamma bands from 50 to 200 Hz as well as high frequency ECoG band from 200 to 400 Hz for subdural recordings. However, the decoding performance was decreased for these frequency bands using epidural recordings. The mutual information shows that, on average, the high gamma band from 50 to 200Hz and high frequency ECoG band from 200 to 400Hz contains significantly more information than the average of the rest of the frequency bands (p<0.001) for both subdural and epidural recordings. The results of high resolution time-frequency analysis show that ERD/ERS patterns in all frequency bands could reveal the dynamics of the ECoG responses during the movement. The onset and offset of the movement can be clearly identified by the ERD/ERS patterns.
SIGNIFICANCE: Reliable decoding the kinematic information from the brain signals paves the way for robust control of external devices.
PMID: 29485407 [PubMed - as supplied by publisher]
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