Shuoshu Lin, Dan Wang, Haojun Sang, Hongjun Xiao, Kecheng Yan, Dongyang Wang, Yizheng Zhang, Li Yi, Guangjian Shao, Zhiyong Shao, Aoran Yang, Lei Zhang, Jinyan Sun
Neurophotonics, Vol. 10, Issue 02, 025001, (April 2023) https://doi.org/10.1117/1.NPh.10.2.025001
TOPICS: Near infrared spectroscopy, Brain, Machine learning, Matrices, Neurophotonics, Control systems, Neuroimaging, Network security, Hemodynamics, Terrain classification
Significance
Motor function evaluation is essential for poststroke dyskinesia rehabilitation. Neuroimaging techniques combined with machine learning help decode a patient’s functional status. However, more research is needed to investigate how individual brain function information predicts the dyskinesia degree of stroke patients.
Aim
We investigated stroke patients’ motor network reorganization and proposed a machine learning-based method to predict the patients’ motor dysfunction.
Approach
Near-infrared spectroscopy (NIRS) was used to measure hemodynamic signals of the motor cortex in the resting state (RS) from 11 healthy subjects and 31 stroke patients, 15 with mild dyskinesia (Mild), and 16 with moderate-to-severe dyskinesia (MtS). The graph theory was used to analyze the motor network characteristics.
Results
The small-world properties of the motor network were significantly different between groups: (1) clustering coefficient, local efficiency, and transitivity: MtS > Mild > Healthy and (2) global efficiency: MtS < Mild < Healthy. These four properties linearly correlated with patients’ Fugl-Meyer Assessment scores. Using the small-world properties as features, we constructed support vector machine (SVM) models that classified the three groups of subjects with an accuracy of 85.7%.
Conclusions
Our results show that NIRS, RS functional connectivity, and SVM together constitute an effective method for assessing the poststroke dyskinesia degree at the individual level.