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Motor imagery decoding using source optimized transfer learning based on multi-loss fusion CNN.

Jun Ma1, Banghua Yang1, Fenqi Rong1

  • 1School of Mechatronic Engineering and Automation, School of Medicine, Research Center of Brain-Computer Engineering, Shanghai University, Shanghai, 200444 China.

Cognitive Neurodynamics
|November 18, 2024
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Summary
This summary is machine-generated.

This study introduces Source Optimized Transfer Learning (SOTL) for motor imagery (MI) tasks, improving accuracy in stroke patients. The novel approach enhances model adaptability, outperforming existing methods in classifying upper limb movements.

Keywords:
Motor imageryMulti-loss fusion convolutional neural networkSource optimized transfer learningStroke rehabilitation

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Area of Science:

  • Neuroscience
  • Biomedical Engineering
  • Machine Learning

Background:

  • Transfer learning is vital for decoding complex motor imagery (MI) tasks.
  • Existing transfer learning methods often neglect source model optimizability, limiting target domain adaptation and performance.
  • This gap hinders effective application in clinical settings like stroke rehabilitation.

Purpose of the Study:

  • To develop an optimizable source model for enhanced transfer learning in motor imagery.
  • To introduce a novel Source Optimized Transfer Learning (SOTL) framework to improve target domain adaptability.
  • To evaluate SOTL's effectiveness in classifying motor imagery tasks for stroke patients.

Main Methods:

  • Proposed a Multi-Loss Fusion Convolutional Neural Network (MF-CNN) to create an optimizable source model.
  • Developed the SOTL approach to align source model features with target domain characteristics.
  • Transferred a model trained on 16 healthy subjects to 16 stroke patients for unilateral upper limb MI tasks.

Main Results:

  • Achieved an average classification accuracy of 51.2 ± 0.17% for four types of unilateral upper limb MI tasks in stroke patients.
  • Demonstrated significantly higher accuracy compared to traditional deep learning (p < 0.001) and standard transfer learning (p < 0.05).
  • Validated the feasibility of using MI models from healthy subjects for stroke patient classification.

Conclusions:

  • SOTL significantly enhances the performance of motor imagery decoding in stroke patients.
  • The MF-CNN and SOTL framework offer a promising approach for personalized stroke rehabilitation.
  • This study provides empirical evidence supporting transfer learning applications in neurological recovery and assistive technology development.