Capturing spike train temporal pattern with wavelet average coefficient for brain machine interface
Abstract Motor brain machine interfaces (BMIs) directly link the brain to artificial actuators and have the potential to mitigate severe body paralysis caused by neurological injury or disease. Most BMI systems involve a decoder that analyzes neural spike counts to infer movement intent. However, ma...
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doaj-d5836d99c3f14482b691c159979bcd532021-09-26T11:30:55ZengNature Publishing GroupScientific Reports2045-23222021-09-0111111010.1038/s41598-021-98578-5Capturing spike train temporal pattern with wavelet average coefficient for brain machine interfaceShixian Wen0Allen Yin1Po-He Tseng2Laurent Itti3Mikhail A. Lebedev4Miguel Nicolelis5Department of Computer science, University of Southern CaliforniaDepartment of Neurobiology, Duke UniversityDepartment of Neurobiology, Duke UniversityDepartment of Computer science, University of Southern CaliforniaV.Zelman Center For Neurobiology and Brain Restoration, Skolkovo Institute of Science and TechnologyDepartment of Neurobiology, Duke UniversityAbstract Motor brain machine interfaces (BMIs) directly link the brain to artificial actuators and have the potential to mitigate severe body paralysis caused by neurological injury or disease. Most BMI systems involve a decoder that analyzes neural spike counts to infer movement intent. However, many classical BMI decoders (1) fail to take advantage of temporal patterns of spike trains, possibly over long time horizons; (2) are insufficient to achieve good BMI performance at high temporal resolution, as the underlying Gaussian assumption of decoders based on spike counts is violated. Here, we propose a new statistical feature that represents temporal patterns or temporal codes of spike events with richer description—wavelet average coefficients (WAC)—to be used as decoder input instead of spike counts. We constructed a wavelet decoder framework by using WAC features with a sliding-window approach, and compared the resulting decoder against classical decoders (Wiener and Kalman family) and new deep learning based decoders ( Long Short-Term Memory) using spike count features. We found that the sliding-window approach boosts decoding temporal resolution, and using WAC features significantly improves decoding performance over using spike count features.https://doi.org/10.1038/s41598-021-98578-5 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Shixian Wen Allen Yin Po-He Tseng Laurent Itti Mikhail A. Lebedev Miguel Nicolelis |
spellingShingle |
Shixian Wen Allen Yin Po-He Tseng Laurent Itti Mikhail A. Lebedev Miguel Nicolelis Capturing spike train temporal pattern with wavelet average coefficient for brain machine interface Scientific Reports |
author_facet |
Shixian Wen Allen Yin Po-He Tseng Laurent Itti Mikhail A. Lebedev Miguel Nicolelis |
author_sort |
Shixian Wen |
title |
Capturing spike train temporal pattern with wavelet average coefficient for brain machine interface |
title_short |
Capturing spike train temporal pattern with wavelet average coefficient for brain machine interface |
title_full |
Capturing spike train temporal pattern with wavelet average coefficient for brain machine interface |
title_fullStr |
Capturing spike train temporal pattern with wavelet average coefficient for brain machine interface |
title_full_unstemmed |
Capturing spike train temporal pattern with wavelet average coefficient for brain machine interface |
title_sort |
capturing spike train temporal pattern with wavelet average coefficient for brain machine interface |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2021-09-01 |
description |
Abstract Motor brain machine interfaces (BMIs) directly link the brain to artificial actuators and have the potential to mitigate severe body paralysis caused by neurological injury or disease. Most BMI systems involve a decoder that analyzes neural spike counts to infer movement intent. However, many classical BMI decoders (1) fail to take advantage of temporal patterns of spike trains, possibly over long time horizons; (2) are insufficient to achieve good BMI performance at high temporal resolution, as the underlying Gaussian assumption of decoders based on spike counts is violated. Here, we propose a new statistical feature that represents temporal patterns or temporal codes of spike events with richer description—wavelet average coefficients (WAC)—to be used as decoder input instead of spike counts. We constructed a wavelet decoder framework by using WAC features with a sliding-window approach, and compared the resulting decoder against classical decoders (Wiener and Kalman family) and new deep learning based decoders ( Long Short-Term Memory) using spike count features. We found that the sliding-window approach boosts decoding temporal resolution, and using WAC features significantly improves decoding performance over using spike count features. |
url |
https://doi.org/10.1038/s41598-021-98578-5 |
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