Yin Wenchao, Zhu Wencheng, Gao Hong, Niu Xiaohui, Shen Chenxin, Fan Xiangmin, Wang Cui
Department of Neurology, Central Hospital of Dalian University of Technology, Dalian, China.
Beijing CAS-Ruiyi Information Technology Co., Ltd., Beijing, China.
Front Neurol. 2024 Oct 8;15:1472956. doi: 10.3389/fneur.2024.1472956. eCollection 2024.
Gait disorder is a prominent motor symptom in Parkinson's disease (PD), objective and quantitative assessment of gait is essential for diagnosing and treating PD, particularly in its early stage.
This study utilized a non-contact gait assessment system to investigate gait characteristics between individuals with PD and healthy controls, with a focus on early-stage PD. Additionally, we trained two machine learning models to differentiate early-stage PD patients from controls and to predict MDS-UPDRS III score.
Early-stage PD patients demonstrated reduced stride length, decreased gait speed, slower stride and swing speeds, extended turning time, and reduced cadence compared to controls. Our model, after an integrated analysis of gait parameters, accurately identified early-stage PD patients. Moreover, the model indicated that gait parameters could predict the MDS-UPDRS III score using a machine learning regression approach.
The non-contact gait assessment system facilitates the objective and quantitative evaluation of gait disorder in PD patients, effectively distinguishing those in the early stage from healthy individuals. The system holds significant potential for the early detection of PD. It also harnesses gait parameters for a reasoned prediction of the MDS-UPDRS III score, thereby quantifying disease severity. Overall, gait assessment is a valuable method for the early identification and ongoing monitoring of PD.
步态障碍是帕金森病(PD)的一个突出运动症状,对步态进行客观定量评估对于PD的诊断和治疗至关重要,尤其是在疾病早期。
本研究采用非接触式步态评估系统,研究PD患者与健康对照者之间的步态特征,重点关注早期PD患者。此外,我们训练了两个机器学习模型,以区分早期PD患者与对照者,并预测MDS-UPDRS III评分。
与对照者相比,早期PD患者步幅减小、步态速度降低、步幅和摆动速度减慢、转弯时间延长以及步频降低。我们的模型在对步态参数进行综合分析后,准确识别出早期PD患者。此外,该模型表明,使用机器学习回归方法,步态参数可以预测MDS-UPDRS III评分。
非接触式步态评估系统有助于对PD患者的步态障碍进行客观定量评估,有效区分早期患者与健康个体。该系统在PD早期检测方面具有巨大潜力。它还利用步态参数合理预测MDS-UPDRS III评分,从而量化疾病严重程度。总体而言,步态评估是早期识别和持续监测PD的一种有价值的方法。