Schlachetzki Johannes C M, Barth Jens, Marxreiter Franz, Gossler Julia, Kohl Zacharias, Reinfelder Samuel, Gassner Heiko, Aminian Kamiar, Eskofier Bjoern M, Winkler Jürgen, Klucken Jochen
Department of Molecular Neurology, University Hospital Erlangen, Friedrich-Alexander Universität Erlangen-Nürnberg (FAU), Erlangen, Germany.
Digital Sports Group, Pattern Recognition Lab, Department of Computer Science, FAU Erlangen-Nürnberg, Erlangen, Germany.
PLoS One. 2017 Oct 11;12(10):e0183989. doi: 10.1371/journal.pone.0183989. eCollection 2017.
Distinct gait characteristics like short steps and shuffling gait are prototypical signs commonly observed in Parkinson's disease. Routinely assessed by observation through clinicians, gait is rated as part of categorical clinical scores. There is an increasing need to provide quantitative measurements of gait, e.g. to provide detailed information about disease progression. Recently, we developed a wearable sensor-based gait analysis system as diagnostic tool that objectively assesses gait parameter in Parkinson's disease without the need of having a specialized gait laboratory. This system consists of inertial sensor units attached laterally to both shoes. The computed target of measures are spatiotemporal gait parameters including stride length and time, stance phase time, heel-strike and toe-off angle, toe clearance, and inter-stride variation from gait sequences. To translate this prototype into medical care, we conducted a cross-sectional study including 190 Parkinson's disease patients and 101 age-matched controls and measured gait characteristics during a 4x10 meter walk at the subjects' preferred speed. To determine intraindividual changes in gait, we monitored the gait characteristics of 63 patients longitudinally. Cross-sectional analysis revealed distinct spatiotemporal gait parameter differences reflecting typical Parkinson's disease gait characteristics including short steps, shuffling gait, and postural instability specific for different disease stages and levels of motor impairment. The longitudinal analysis revealed that gait parameters were sensitive to changes by mirroring the progressive nature of Parkinson's disease and corresponded to physician ratings. Taken together, we successfully show that wearable sensor-based gait analysis reaches clinical applicability providing a high biomechanical resolution for gait impairment in Parkinson's disease. These data demonstrate the feasibility and applicability of objective wearable sensor-based gait measurement in Parkinson's disease reaching high technological readiness levels for both, large scale clinical studies and individual patient care.
独特的步态特征,如步幅短小和拖步,是帕金森病中常见的典型症状。步态通常由临床医生通过观察进行评估,并作为分类临床评分的一部分进行评级。越来越需要提供步态的定量测量,例如以提供有关疾病进展的详细信息。最近,我们开发了一种基于可穿戴传感器的步态分析系统作为诊断工具,可客观评估帕金森病患者的步态参数,而无需专门的步态实验室。该系统由横向附着在两只鞋子上的惯性传感器单元组成。测量的计算目标是时空步态参数,包括步幅长度和时间、站立相时间、足跟撞击和足趾离地角度、足趾间隙以及步态序列中的步幅变化。为了将这个原型应用于医疗护理,我们进行了一项横断面研究,包括190名帕金森病患者和101名年龄匹配的对照组,并在受试者以其偏好速度进行4×10米步行时测量步态特征。为了确定个体步态的变化,我们对63名患者进行了纵向步态特征监测。横断面分析揭示了明显的时空步态参数差异,反映了典型的帕金森病步态特征,包括步幅短小、拖步以及不同疾病阶段和运动障碍水平特有的姿势不稳。纵向分析表明,步态参数通过反映帕金森病的进展性质对变化敏感,并且与医生的评级相符。综上所述,我们成功表明基于可穿戴传感器的步态分析达到了临床适用性,为帕金森病的步态障碍提供了高生物力学分辨率。这些数据证明了基于可穿戴传感器的客观步态测量在帕金森病中的可行性和适用性,在大规模临床研究和个体患者护理方面都达到了较高的技术成熟度水平。