A data-driven machine learning approach for brain-computer interfaces targeting lower limb neuroprosthetics

被引:5
|
作者
Dillen, Arnau [1 ,2 ,3 ]
Lathouwers, Elke [1 ,2 ]
Miladinovic, Aleksandar [4 ,5 ,6 ]
Marusic, Uros [4 ,7 ]
Ghaffari, Fakhreddine [3 ]
Romain, Olivier [3 ]
Meeusen, Romain [1 ,2 ]
De Pauw, Kevin [1 ,2 ]
机构
[1] Vrije Univ Brussel, Human Physiol & Sports Physiotherapy Res Grp, Brussels, Belgium
[2] Vrije Univ Brussel, Brussels Human Robot Res Ctr, Brussels, Belgium
[3] CY Cergy Paris Univ, Equipes Traitement Informat & Syst, Cergy, France
[4] Inst Kinesiol Res Sci & Res Ctr Koper, Koper, Slovenia
[5] IRCCS Burlo Garofolo, Inst Maternal & Child Hlth, Trieste, Italy
[6] Univ Trieste, Dept Engn & Architecture, Trieste, Italy
[7] Alma Mater Europaea ECM, Dept Hlth Sci, Maribor, Slovenia
来源
FRONTIERS IN HUMAN NEUROSCIENCE | 2022年 / 16卷
基金
欧盟地平线“2020”;
关键词
neuroprosthetics; brain-computer interface; machine learning; electroencephalography; data-driven learning; lower limb amputation; MOTOR; PATTERN; COMPONENTS; REJECTION; SIGNALS; ABILITY; KERNEL; CORTEX; KNEE;
D O I
10.3389/fnhum.2022.949224
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Prosthetic devices that replace a lost limb have become increasingly performant in recent years. Recent advances in both software and hardware allow for the decoding of electroencephalogram (EEG) signals to improve the control of active prostheses with brain-computer interfaces (BCI). Most BCI research is focused on the upper body. Although BCI research for the lower extremities has increased in recent years, there are still gaps in our knowledge of the neural patterns associated with lower limb movement. Therefore, the main objective of this study is to show the feasibility of decoding lower limb movements from EEG data recordings. The second aim is to investigate whether well-known neuroplastic adaptations in individuals with an amputation have an influence on decoding performance. To address this, we collected data from multiple individuals with lower limb amputation and a matched able-bodied control group. Using these data, we trained and evaluated common BCI methods that have already been proven effective for upper limb BCI. With an average test decoding accuracy of 84% for both groups, our results show that it is possible to discriminate different lower extremity movements using EEG data with good accuracy. There are no significant differences (p = 0.99) in the decoding performance of these movements between healthy subjects and subjects with lower extremity amputation. These results show the feasibility of using BCI for lower limb prosthesis control and indicate that decoding performance is not influenced by neuroplasticity-induced differences between the two groups.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] Enhancing Wireless Non-invasive Brain-Computer Interfaces with an Encoder/Decoder Machine Learning Model Pair
    Fanfan, Ernst R.
    Blankenship, Joe
    Chakravarty, Sumit
    Randolph, Adriane B.
    INFORMATION SYSTEMS AND NEUROSCIENCE, NEUROIS RETREAT 2022, 2022, 58 : 53 - 59
  • [22] Prediction of casing damage: A data-driven, machine learning approach
    Zhao Y.
    Jiang H.
    Li H.
    International Journal of Circuits, Systems and Signal Processing, 2020, 14 : 1047 - 1053
  • [23] Clustering suicides: A data-driven, exploratory machine learning approach
    Ludwig, Birgit
    Koenig, Daniel
    Kapusta, Nestor D.
    Blueml, Victor
    Dorffner, Georg
    Vyssoki, Benjamin
    EUROPEAN PSYCHIATRY, 2019, 62 : 15 - 19
  • [24] Evaluating Performance of EEG Data-Driven Machine Learning for Traumatic Brain Injury Classification
    Vivaldi, Nicolas
    Caiola, Michael
    Solarana, Krystyna
    Ye, Meijun
    IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2021, 68 (11) : 3205 - 3216
  • [25] Riemannian Procrustes Analysis: Transfer Learning for Brain-Computer Interfaces
    Rodrigues, Pedro Luiz Coelho
    Jutten, Christian
    Congedo, Marco
    IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2019, 66 (08) : 2390 - 2401
  • [26] Different Set Domain Adaptation for Brain-Computer Interfaces: A Label Alignment Approach
    He, He
    Wu, Dongrui
    IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2020, 28 (05) : 1091 - 1108
  • [27] Combining brain-computer interfaces with deep reinforcement learning for robot training: a feasibility study in a simulation environment
    Vukelic, Mathias
    Bui, Michael
    Vorreuther, Anna
    Lingelbach, Katharina
    FRONTIERS IN NEUROERGONOMICS, 2023, 4
  • [28] A machine learning approach for implementing data-driven production control policies
    Khayyati, Siamak
    Tan, Baris
    INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH, 2022, 60 (10) : 3107 - 3128
  • [29] A data-driven machine learning approach for discovering potent LasR inhibitors
    Koh, Christabel Ming Ming
    Ping, Lilian Siaw Yung
    Xuan, Christopher Ha Heng
    Theng, Lau Bee
    San, Hwang Siaw
    Palombo, Enzo A.
    Wezen, Xavier Chee
    BIOENGINEERED, 2023, 14 (01) : 2243416
  • [30] A data-driven approach to predicting diabetes and cardiovascular disease with machine learning
    Dinh, An
    Miertschin, Stacey
    Young, Amber
    Mohanty, Somya D.
    BMC MEDICAL INFORMATICS AND DECISION MAKING, 2019, 19 (01)