4.6 Article

Non-human primate epidural ECoG analysis using explainable deep learning technology

期刊

JOURNAL OF NEURAL ENGINEERING
卷 18, 期 6, 页码 -

出版社

IOP Publishing Ltd
DOI: 10.1088/1741-2552/ac3314

关键词

brain-machine interface; epidural ECoG; deep learning; explainable artificial intelligence; bimanual

资金

  1. Brain Research Program through the National Research Foundation of Korea (NRF) - Ministry of Science and ICT [2016M3C7A1904987]
  2. National Research Foundation of Korea (NRF) - Ministry of Science and ICT (MSIT) [NRF-2019M3C7A1031278]
  3. NRF [NRF-2021R1A6A3A14045108]
  4. Technology Innovation Program - Ministry of Trade, Industry Energy (MOTIE) [20012461]
  5. Brain Convergence Research Program of the NRF - MSIT [NRF-2021M3E5D2A01021156]
  6. Korea Evaluation Institute of Industrial Technology (KEIT) [20012461] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)
  7. National Research Foundation of Korea [2016M3C7A1904987] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

向作者/读者索取更多资源

This study focused on using deep neural networks to explain high-dimensional neurophysiological information extracted from XAI, compared to previous neuroscientific studies. The 3D DNN classifier showed superior accuracy in classifying monkey ECoG data, with the 3D CAM revealing activation patterns in different brain regions during unimanual movements. The study highlights the potential of using XAI for explainability in neuroscience and electrophysiology research.
Objective. With the development in the field of neural networks, explainable AI (XAI), is being studied to ensure that artificial intelligence models can be explained. There are some attempts to apply neural networks to neuroscientific studies to explain neurophysiological information with high machine learning performances. However, most of those studies have simply visualized features extracted from XAI and seem to lack an active neuroscientific interpretation of those features. In this study, we have tried to actively explain the high-dimensional learning features contained in the neurophysiological information extracted from XAI, compared with the previously reported neuroscientific results. Approach. We designed a deep neural network classifier using 3D information (3D DNN) and a 3D class activation map (3D CAM) to visualize high-dimensional classification features. We used those tools to classify monkey electrocorticogram (ECoG) data obtained from the unimanual and bimanual movement experiment. Main results. The 3D DNN showed better classification accuracy than other machine learning techniques, such as 2D DNN. Unexpectedly, the activation weight in the 3D CAM analysis was high in the ipsilateral motor and somatosensory cortex regions, whereas the gamma-band power was activated in the contralateral areas during unimanual movement, which suggests that the brain signal acquired from the motor cortex contains information about both contralateral movement and ipsilateral movement. Moreover, the hand-movement classification system used critical temporal information at movement onset and offset when classifying bimanual movements. Significance. As far as we know, this is the first study to use high-dimensional neurophysiological information (spatial, spectral, and temporal) with the deep learning method, reconstruct those features, and explain how the neural network works. We expect that our methods can be widely applied and used in neuroscience and electrophysiology research from the point of view of the explainability of XAI as well as its performance.

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