Literature DB >> 30250141

Meeting brain-computer interface user performance expectations using a deep neural network decoding framework.

Michael A Schwemmer1, Nicholas D Skomrock2, Per B Sederberg3, Jordyn E Ting4, Gaurav Sharma4, Marcia A Bockbrader5,6, David A Friedenberg2.   

Abstract

Brain-computer interface (BCI) neurotechnology has the potential to reduce disability associated with paralysis by translating neural activity into control of assistive devices1-9. Surveys of potential end-users have identified key BCI system features10-14, including high accuracy, minimal daily setup, rapid response times, and multifunctionality. These performance characteristics are primarily influenced by the BCI's neural decoding algorithm1,15, which is trained to associate neural activation patterns with intended user actions. Here, we introduce a new deep neural network16 decoding framework for BCI systems enabling discrete movements that addresses these four key performance characteristics. Using intracortical data from a participant with tetraplegia, we provide offline results demonstrating that our decoder is highly accurate, sustains this performance beyond a year without explicit daily retraining by combining it with an unsupervised updating procedure3,17-20, responds faster than competing methods8, and can increase functionality with minimal retraining by using a technique known as transfer learning21. We then show that our participant can use the decoder in real-time to reanimate his paralyzed forearm with functional electrical stimulation (FES), enabling accurate manipulation of three objects from the grasp and release test (GRT)22. These results demonstrate that deep neural network decoders can advance the clinical translation of BCI technology.

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Year:  2018        PMID: 30250141     DOI: 10.1038/s41591-018-0171-y

Source DB:  PubMed          Journal:  Nat Med        ISSN: 1078-8956            Impact factor:   53.440


  21 in total

1.  Identifying Diabetic Macular Edema and Other Retinal Diseases by Optical Coherence Tomography Image and Multiscale Deep Learning.

Authors:  Quan Zhang; Zhiang Liu; Jiaxu Li; Guohua Liu
Journal:  Diabetes Metab Syndr Obes       Date:  2020-12-04       Impact factor: 3.168

Review 2.  The science and engineering behind sensitized brain-controlled bionic hands.

Authors:  Chethan Pandarinath; Sliman J Bensmaia
Journal:  Physiol Rev       Date:  2021-09-20       Impact factor: 37.312

3.  Basal ganglia-cortical connectivity underlies self-regulation of brain oscillations in humans.

Authors:  Kazumi Kasahara; Charles S DaSalla; Takashi Hanakawa; Manabu Honda
Journal:  Commun Biol       Date:  2022-07-16

4.  Benefits of deep learning classification of continuous noninvasive brain-computer interface control.

Authors:  James R Stieger; Stephen A Engel; Daniel Suma; Bin He
Journal:  J Neural Eng       Date:  2021-06-09       Impact factor: 5.043

5.  Brain-Computer Interfaces in Neurorecovery and Neurorehabilitation.

Authors:  Michael J Young; David J Lin; Leigh R Hochberg
Journal:  Semin Neurol       Date:  2021-03-19       Impact factor: 3.212

6.  Detection of Solitary Pulmonary Nodules Based on Brain-Computer Interface.

Authors:  Shi Qiu; Junjun Li; Mengdi Cong; Chun Wu; Yan Qin; Ting Liang
Journal:  Comput Math Methods Med       Date:  2020-06-15       Impact factor: 2.238

7.  Principled BCI Decoder Design and Parameter Selection Using a Feedback Control Model.

Authors:  Francis R Willett; Daniel R Young; Brian A Murphy; William D Memberg; Christine H Blabe; Chethan Pandarinath; Sergey D Stavisky; Paymon Rezaii; Jad Saab; Benjamin L Walter; Jennifer A Sweet; Jonathan P Miller; Jaimie M Henderson; Krishna V Shenoy; John D Simeral; Beata Jarosiewicz; Leigh R Hochberg; Robert F Kirsch; A Bolu Ajiboye
Journal:  Sci Rep       Date:  2019-06-20       Impact factor: 4.379

8.  Deep Learning-Based Method of Diagnosing Hyperlipidemia and Providing Diagnostic Markers Automatically.

Authors:  Yuliang Liu; Quan Zhang; Geng Zhao; Guohua Liu; Zhiang Liu
Journal:  Diabetes Metab Syndr Obes       Date:  2020-03-11       Impact factor: 3.168

9.  BENDR: Using Transformers and a Contrastive Self-Supervised Learning Task to Learn From Massive Amounts of EEG Data.

Authors:  Demetres Kostas; Stéphane Aroca-Ouellette; Frank Rudzicz
Journal:  Front Hum Neurosci       Date:  2021-06-23       Impact factor: 3.169

10.  A Characterization of Brain-Computer Interface Performance Trade-Offs Using Support Vector Machines and Deep Neural Networks to Decode Movement Intent.

Authors:  Nicholas D Skomrock; Michael A Schwemmer; Jordyn E Ting; Hemang R Trivedi; Gaurav Sharma; Marcia A Bockbrader; David A Friedenberg
Journal:  Front Neurosci       Date:  2018-10-24       Impact factor: 4.677

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