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Ferrero L, Soriano-Segura P, Navarro J, Jones O, Ortiz M, Iáñez E, Azorín JM, Contreras-Vidal JL. Brain-machine interface based on deep learning to control asynchronously a lower-limb robotic exoskeleton: a case-of-study. J Neuroeng Rehabil 2024; 21:48. [PMID: 38581031 PMCID: PMC10996198 DOI: 10.1186/s12984-024-01342-9] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Grants] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Received: 09/12/2023] [Accepted: 03/15/2024] [Indexed: 04/07/2024] Open
Abstract
BACKGROUND This research focused on the development of a motor imagery (MI) based brain-machine interface (BMI) using deep learning algorithms to control a lower-limb robotic exoskeleton. The study aimed to overcome the limitations of traditional BMI approaches by leveraging the advantages of deep learning, such as automated feature extraction and transfer learning. The experimental protocol to evaluate the BMI was designed as asynchronous, allowing subjects to perform mental tasks at their own will. METHODS A total of five healthy able-bodied subjects were enrolled in this study to participate in a series of experimental sessions. The brain signals from two of these sessions were used to develop a generic deep learning model through transfer learning. Subsequently, this model was fine-tuned during the remaining sessions and subjected to evaluation. Three distinct deep learning approaches were compared: one that did not undergo fine-tuning, another that fine-tuned all layers of the model, and a third one that fine-tuned only the last three layers. The evaluation phase involved the exclusive closed-loop control of the exoskeleton device by the participants' neural activity using the second deep learning approach for the decoding. RESULTS The three deep learning approaches were assessed in comparison to an approach based on spatial features that was trained for each subject and experimental session, demonstrating their superior performance. Interestingly, the deep learning approach without fine-tuning achieved comparable performance to the features-based approach, indicating that a generic model trained on data from different individuals and previous sessions can yield similar efficacy. Among the three deep learning approaches compared, fine-tuning all layer weights demonstrated the highest performance. CONCLUSION This research represents an initial stride toward future calibration-free methods. Despite the efforts to diminish calibration time by leveraging data from other subjects, complete elimination proved unattainable. The study's discoveries hold notable significance for advancing calibration-free approaches, offering the promise of minimizing the need for training trials. Furthermore, the experimental evaluation protocol employed in this study aimed to replicate real-life scenarios, granting participants a higher degree of autonomy in decision-making regarding actions such as walking or stopping gait.
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Affiliation(s)
- Laura Ferrero
- Brain-Machine Interface Systems Lab, Miguel Hernández University of Elche, Elche, Spain.
- Instituto de Investigación en Ingeniería de Elche-I3E, Miguel Hernández University of Elche, Elche, Spain.
- International Affiliate NSF IUCRC BRAIN Site, Miguel Hernández University of Elche, Elche, Spain.
- NSF IUCRC BRAIN, University of Houston, Houston, USA.
- Non-Invasive Brain Machine Interface Systems, University of Houston, Houston, TX, USA.
| | - Paula Soriano-Segura
- Brain-Machine Interface Systems Lab, Miguel Hernández University of Elche, Elche, Spain
- Instituto de Investigación en Ingeniería de Elche-I3E, Miguel Hernández University of Elche, Elche, Spain
- International Affiliate NSF IUCRC BRAIN Site, Miguel Hernández University of Elche, Elche, Spain
| | - Jacobo Navarro
- NSF IUCRC BRAIN, University of Houston, Houston, USA
- International Affiliate NSF IUCRC BRAIN Site, Tecnológico de Monterrey, Monterrey, Mexico
- Non-Invasive Brain Machine Interface Systems, University of Houston, Houston, TX, USA
| | - Oscar Jones
- NSF IUCRC BRAIN, University of Houston, Houston, USA
- Non-Invasive Brain Machine Interface Systems, University of Houston, Houston, TX, USA
| | - Mario Ortiz
- Brain-Machine Interface Systems Lab, Miguel Hernández University of Elche, Elche, Spain
- Instituto de Investigación en Ingeniería de Elche-I3E, Miguel Hernández University of Elche, Elche, Spain
- International Affiliate NSF IUCRC BRAIN Site, Miguel Hernández University of Elche, Elche, Spain
| | - Eduardo Iáñez
- Brain-Machine Interface Systems Lab, Miguel Hernández University of Elche, Elche, Spain
- Instituto de Investigación en Ingeniería de Elche-I3E, Miguel Hernández University of Elche, Elche, Spain
- International Affiliate NSF IUCRC BRAIN Site, Miguel Hernández University of Elche, Elche, Spain
| | - José M Azorín
- Brain-Machine Interface Systems Lab, Miguel Hernández University of Elche, Elche, Spain
- Instituto de Investigación en Ingeniería de Elche-I3E, Miguel Hernández University of Elche, Elche, Spain
- International Affiliate NSF IUCRC BRAIN Site, Miguel Hernández University of Elche, Elche, Spain
- Valencian Graduate School and Research Network of Artificial Intelligence-valgrAI, Valencia, Spain
| | - José L Contreras-Vidal
- NSF IUCRC BRAIN, University of Houston, Houston, USA
- Non-Invasive Brain Machine Interface Systems, University of Houston, Houston, TX, USA
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