•  91
    Prediction of Freezing of Gait in Parkinson’s Disease Using a Random Forest Model Based on an Orthogonal Experimental Design: A Pilot Study
    with Zhonelue Chen, Gen Li, Chao Gao, Jun Liu, Jin Zhao, Yun Ling, Xiaoliu Yu, Kang Ren, and Shengdi Chen
    Frontiers in Human Neuroscience 15. 2021.
    PurposeThe purpose of this study was to introduce an orthogonal experimental design to improve the efficiency of building and optimizing models for freezing of gait prediction.MethodsA random forest model was developed to predict FOG by using acceleration signals and angular velocity signals to recognize possible precursor signs of FOG. An OED was introduced to optimize the feature extraction parameters.ResultsThe main effects and interaction among the feature extraction hyperparameters were ana…Read more