Yin Wenchao, Gao Hong, Liang Beichen, Liu Ruichen, Liu Yue, Shen Chenxin, Niu Xiaohui, Wang Cui
Department of Neurology, Central Hospital of Dalian University of Technology, Dalian, China.
School of Science, Dalian Maritime University, Dalian, China.
Front Neurol. 2025 Aug 20;16:1527020. doi: 10.3389/fneur.2025.1527020. eCollection 2025.
Gait disorder is one of the clinical manifestations of Parkinson's disease (PD). Investigating the characteristics of gait disorder in patients with PD and the changes in gait before and after taking levodopa is crucial for the recognition, diagnosis and treatment of gait disorders in PD patients.
In this study, we measured the gait parameters of 20 patients with PD and 17 healthy controls and analyzed the changes of gait parameters of these patients before and after taking levodopa. We also used gait parameters as input features and MDS-UPDRS III score (which was further subdivided into tremor and non-tremor part score) as output labels to train machine learning regression models.
We found that except for cadence and stride time, most gait parameters of PD patients, including plantar dorsiflexion angle, plantar flexion angle, stride length, velocity were all smaller than those of the healthy controls. Moreover, the severity of gait disorders correlated with the severity of motor symptoms. After taking levodopa, the stride length, velocity and cadence were increased, but stride time was decreased. We also found that the trained machine learning model could explain and predict the MDS-UPDRS III score and non-tremor part score, and the non-tremor part score was better than the MDS-UPDRS III score.
Our gait assessment work can help clinicians recognize gait disorder in PD patients and predict the severity of clinical symptoms.
步态障碍是帕金森病(PD)的临床表现之一。研究PD患者步态障碍的特征以及服用左旋多巴前后步态的变化对于PD患者步态障碍的识别、诊断和治疗至关重要。
在本研究中,我们测量了20例PD患者和17名健康对照者的步态参数,并分析了这些患者服用左旋多巴前后步态参数的变化。我们还将步态参数作为输入特征,将MDS-UPDRS III评分(进一步细分为震颤和非震颤部分评分)作为输出标签来训练机器学习回归模型。
我们发现,除步频和步幅时间外,PD患者的大多数步态参数,包括足底背屈角、足底屈曲角、步长、速度均小于健康对照者。此外,步态障碍的严重程度与运动症状的严重程度相关。服用左旋多巴后,步长、速度和步频增加,但步幅时间减少。我们还发现,训练后的机器学习模型可以解释和预测MDS-UPDRS III评分和非震颤部分评分,且非震颤部分评分优于MDS-UPDRS III评分。
我们的步态评估工作可以帮助临床医生识别PD患者的步态障碍并预测临床症状的严重程度。