Tailoring brain–machine interface rehabilitation training based on neural reorganization: towards personalized treatment for stroke patients

Author:

Jia Tianyu1ORCID,Li Chong1,Mo Linhong2,Qian Chao1,Li Wei1,Xu Quan13,Pan Yu3,Liu Aixian2,Ji Linhong1

Affiliation:

1. Division of Intelligent and Bio-mimetic Machinery , The State Key Laboratory of Tribology, Tsinghua University, Beijing 100084 , China

2. Beijing Rehabilitation Hospital of Capital Medical University , Capital Medical University, Beijing 100144 , China

3. Department of Physical Medicine and Rehabilitation , Beijing Tsinghua Changgung Hospital, Tsinghua University, Beijing 102218 , China

Abstract

Abstract Electroencephalogram (EEG)-based brain–machine interface (BMI) has the potential to enhance rehabilitation training efficiency, but it still remains elusive regarding how to design BMI training for heterogeneous stroke patients with varied neural reorganization. Here, we hypothesize that tailoring BMI training according to different patterns of neural reorganization can contribute to a personalized rehabilitation trajectory. Thirteen stroke patients were recruited in a 2-week personalized BMI training experiment. Clinical and behavioral measurements, as well as cortical and muscular activities, were assessed before and after training. Following treatment, significant improvements were found in motor function assessment. Three types of brain activation patterns were identified during BMI tasks, namely, bilateral widespread activation, ipsilesional focusing activation, and contralesional recruitment activation. Patients with either ipsilesional dominance or contralesional dominance can achieve recovery through personalized BMI training. Results indicate that personalized BMI training tends to connect the potentially reorganized brain areas with event-contingent proprioceptive feedback. It can also be inferred that personalization plays an important role in establishing the sensorimotor loop in BMI training. With further understanding of neural rehabilitation mechanisms, personalized treatment strategy is a promising way to improve the rehabilitation efficacy and promote the clinical use of rehabilitation robots and other neurotechnologies.

Funder

Beijing Nova Program

National Natural Science Foundation of China

Publisher

Oxford University Press (OUP)

Subject

Cellular and Molecular Neuroscience,Cognitive Neuroscience

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