可穿戴设备评估帕金森病伴冻结步态患者的步态特征研究

A study of gait characteristics in Parkinson’s disease patients with freezing of gait assessed using wearable devices

  • 摘要:
    目的  利用可穿戴传感器识别帕金森病(PD)伴冻结步态(FOG)患者的特征步态参数,探讨基于临床和传感器参数的FOG影响因素,并构建识别模型。
    方法 纳入83例PD患者(FOG组20例,非FOG组63例)。所有患者在“关”期状态下完成计时起立-行走测试,同时佩戴10个惯性测量单元传感器采集步态数据。采用协方差分析控制年龄、统一帕金森病评定量表第三部分(UPDRS-Ⅲ)评分及大腿长度的影响,并通过控制错误发现率进行多重比较。采用单因素和分层Logistic回归分析筛选影响因素并构建识别模型。通过受试者操作特征曲线下面积(AUC)等指标评估模型性能。
    结果 控制混杂因素后,FOG组患者在支撑相不对称性上仍高于非FOG组。单因素分析显示,步速降低、步态变异性和不对称性增高等是FOG的影响因素。分层Logistic分析表明,在包含年龄和UPDRS-Ⅲ评分的基准模型中加入支撑相不对称性可提升模型性能,模型灵敏度从75.0%提高至85.0%,AUC从0.810提升至0.840。
    结论 支撑相不对称性是PD伴FOG患者区别于普遍运动迟缓的核心步态特征。在常规临床评估中加入该传感器客观参数,能有效提高FOG的识别能力,为FOG的客观评估、早期识别及针对性康复干预提供了依据

     

    Abstract:
    Objective  To identify characteristic gait parameters in Parkinson’s disease (PD) patients with freezing of gait (FOG) using wearable sensors, explore factors influencing FOG based on clinical and sensor-derived parameters, and develop an identification model.
    Methods A total of 83 PD patients were enrolled (FOG group, n = 20; non-FOG group, n = 63). All patients completed the Timed Up and Go (TUG) test in the “OFF” state while wearing 10 inertial measurement unit (IMU) sensors to collect gait data. Analysis of covariance (ANCOVA) was employed to control for the effects of age, Unified Parkinson's Disease Rating Scale Part Ⅲ (UPDRS-Ⅲ) scores, and thigh length, and multiple comparisons were adjusted using false discovery rate (FDR). Univariate and stratified logistic regression analyses were performed to screen influencing factors and construct an identification model. Model performance was evaluated using indices such as the area under the receiver operating characteristic curve (AUC).
    Results After controlling for confounding factors, patients in the FOG group still exhibited higher stance-phase asymmetry than those in the non-FOG group. Univariate analysis indicated that decreased gait speed, increased gait variability, and increased asymmetry were influencing factors for FOG. Stratified logistic regression analysis demonstrated that adding stance-phase asymmetry to a baseline model including age and UPDRS-Ⅲ scores improved model performance, increasing sensitivity from 75.0% to 85.0% and AUC from 0.810 to 0.840.
    Conclusions Stance-phase asymmetry is a core gait characteristic that distinguishes PD patients with FOG from generalized bradykinesia. Incorporating this objective sensor-derived parameter into routine clinical assessment can effectively improve FOG identification, providing evidence for objective assessment, early detection, and targeted rehabilitation intervention for FOG.

     

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