Optimizing Motor Intention Detection With Deep Learning: Towards Management of Intraoperative Awareness

被引:13
作者
Avilov, Oleksii [1 ,2 ]
Rimbert, Sebastien [3 ]
Popov, Anton [2 ,4 ]
Bougrain, Laurent [3 ]
机构
[1] Univ Lorraine, CNRS, LORIA, F-54000 Nancy, France
[2] Igor Sikorsky Kyiv Polytech Inst, Elect Engn Dept, UA-03056 Kiev, Ukraine
[3] Univ Lorraine, CNRS, INRIA, LORIA, Nancy, France
[4] Ciklum Data & Analyt, Kiev, Ukraine
关键词
Electroencephalography; Manganese; Electrodes; Task analysis; Deep learning; Feature extraction; Anesthesia; Brain-computer interface (BCI); deep learning; electroencephalogram (EEG); intraoperative awareness during general anesthesia; machine learning; median nerve stimulation; motor imagery; PERCEPTION; SURGERY; RHYTHMS; CORTEX;
D O I
10.1109/TBME.2021.3064794
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Objective: This article shows the interest in deep learning techniques to detect motor imagery (MI) from raw electroencephalographic (EEG) signals when a functional electrical stimulation is added or not. Impacts of electrode montages and bandwidth are also reported. The perspective of this work is to improve the detection of intraoperative awareness during general anesthesia. Methods: Various architectures of EEGNet were investigated to optimize MI detection. They have been compared to the state-of-the-art classifiers in Brain-Computer Interfaces (based on Riemannian geometry, linear discriminant analysis), and other deep learning architectures (deep convolution network, shallow convolutional network). EEG data were measured from 22 participants performing motor imagery with and without median nerve stimulation. Results: The proposed architecture of EEGNet reaches the best classification accuracy (83.2%) and false-positive rate (FPR 19.0%) for a setup with only six electrodes over the motor cortex and frontal lobe and for an extended 4-38 Hz EEG frequency range while the subject is being stimulated via a median nerve. Configurations with a larger number of electrodes result in higher accuracy (94.5%) and FPR (6.1%) for 128 electrodes (and respectively 88.0% and 12.9% for 13 electrodes). Conclusion: The present work demonstrates that using an extended EEG frequency band and a modified EEGNet deep neural network increases the accuracy of MI detection when used with as few as 6 electrodes which include frontal channels. Significance: The proposed method contributes to the development of Brain-Computer Interface systems based on MI detection from EEG.
引用
收藏
页码:3087 / 3097
页数:11
相关论文
共 46 条
[41]   Deep Learning With Convolutional Neural Networks for EEG Decoding and Visualization [J].
Schirrmeister, Robin Tibor ;
Springenberg, Jost Tobias ;
Fiederer, Lukas Dominique Josef ;
Glasstetter, Martin ;
Eggensperger, Katharina ;
Tangermann, Michael ;
Hutter, Frank ;
Burgard, Wolfram ;
Ball, Tonio .
HUMAN BRAIN MAPPING, 2017, 38 (11) :5391-5420
[42]   Involvement of primary motor cortex in motor imagery: A neuromagnetic study [J].
Schnitzler, A ;
Salenius, S ;
Salmelin, R ;
Jousmaki, V ;
Hari, R .
NEUROIMAGE, 1997, 6 (03) :201-208
[43]   Effects of somatosensory electrical stimulation on motor function and cortical oscillations [J].
Tu-Chan, Adelyn P. ;
Natraj, Nikhilesh ;
Godlove, Jason ;
Abrams, Gary ;
Ganguly, Karunesh .
JOURNAL OF NEUROENGINEERING AND REHABILITATION, 2017, 14
[44]   Size and distribution of the global volume of surgery in 2012 [J].
Weiser, Thomas G. ;
Haynes, Alex B. ;
Molina, George ;
Lipsitz, Stuart R. ;
Esquiye, Micaela M. ;
Uribe-Leitz, Tarsicio ;
Fu, Rui ;
Azad, Tej ;
Chao, Tiffany E. ;
Berry, William R. ;
Gawande, Atul A. .
BULLETIN OF THE WORLD HEALTH ORGANIZATION, 2016, 94 (03) :201-209
[45]  
World Medical Association, 2002, B WORLD HEALTH ORGAN, V79, P373
[46]   Visualizing and Understanding Convolutional Networks [J].
Zeiler, Matthew D. ;
Fergus, Rob .
COMPUTER VISION - ECCV 2014, PT I, 2014, 8689 :818-833