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无偏移动步态分析可检测帕金森病的运动障碍。

Unbiased and mobile gait analysis detects motor impairment in Parkinson's disease.

机构信息

Department of Molecular Neurology, University Hospital Erlangen, Erlangen, Germany.

出版信息

PLoS One. 2013;8(2):e56956. doi: 10.1371/journal.pone.0056956. Epub 2013 Feb 19.

Abstract

Motor impairments are the prerequisite for the diagnosis in Parkinson's disease (PD). The cardinal symptoms (bradykinesia, rigor, tremor, and postural instability) are used for disease staging and assessment of progression. They serve as primary outcome measures for clinical studies aiming at symptomatic and disease modifying interventions. One major caveat of clinical scores such as the Unified Parkinson Disease Rating Scale (UPDRS) or Hoehn&Yahr (H&Y) staging is its rater and time-of-assessment dependency. Thus, we aimed to objectively and automatically classify specific stages and motor signs in PD using a mobile, biosensor based Embedded Gait Analysis using Intelligent Technology (eGaIT). eGaIT consist of accelerometers and gyroscopes attached to shoes that record motion signals during standardized gait and leg function. From sensor signals 694 features were calculated and pattern recognition algorithms were applied to classify PD, H&Y stages, and motor signs correlating to the UPDRS-III motor score in a training cohort of 50 PD patients and 42 age matched controls. Classification results were confirmed in a second independent validation cohort (42 patients, 39 controls). eGaIT was able to successfully distinguish PD patients from controls with an overall classification rate of 81%. Classification accuracy increased with higher levels of motor impairment (91% for more severely affected patients) or more advanced stages of PD (91% for H&Y III patients compared to controls), supporting the PD-specific type of analysis by eGaIT. In addition, eGaIT was able to classify different H&Y stages, or different levels of motor impairment (UPDRS-III). In conclusion, eGaIT as an unbiased, mobile, and automated assessment tool is able to identify PD patients and characterize their motor impairment. It may serve as a complementary mean for the daily clinical workup and support therapeutic decisions throughout the course of the disease.

摘要

运动障碍是帕金森病(PD)诊断的前提。主要症状(运动迟缓、僵硬、震颤和姿势不稳)用于疾病分期和进展评估。它们是旨在进行症状和疾病修饰干预的临床研究的主要结局指标。临床评分(如统一帕金森病评定量表(UPDRS)或 Hoehn&Yahr(H&Y)分期)的一个主要缺点是其评估者和评估时间的依赖性。因此,我们旨在使用基于移动的、生物传感器的智能技术嵌入式步态分析(eGaIT)客观且自动地对 PD 中的特定阶段和运动体征进行分类。eGaIT 由附在鞋子上的加速度计和陀螺仪组成,可在标准化步态和腿部功能期间记录运动信号。从传感器信号中计算出 694 个特征,并应用模式识别算法来对训练队列中的 50 名 PD 患者和 42 名年龄匹配的对照组进行分类,这些队列与 UPDRS-III 运动评分相关联。分类结果在第二个独立验证队列(42 名患者,39 名对照组)中得到了确认。eGaIT 能够成功地将 PD 患者与对照组区分开来,整体分类率为 81%。分类准确性随着运动障碍程度的增加而提高(对病情较重的患者为 91%)或 PD 阶段的增加而提高(与对照组相比,H&Y III 患者为 91%),支持 eGaIT 进行特定于 PD 的分析。此外,eGaIT 能够对不同的 H&Y 分期或不同程度的运动障碍(UPDRS-III)进行分类。总之,eGaIT 作为一种无偏、移动和自动化的评估工具,能够识别 PD 患者并描述其运动障碍程度。它可能成为日常临床评估的补充手段,并在疾病过程中支持治疗决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b46a/3576377/f0d33c9a86e1/pone.0056956.g001.jpg

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