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Automatic Identification of Motor Patterns Leading to Freezing of Gait in Parkinson's Disease An Exploratory Study

机译:在帕金森病中冻结步态冻结的电动机模式自动识别探究性研究

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Freezing of gait (FOG) is a common and disabling gait disturbance among patients with advanced Parkinson's Disease (PD). FOG episodes are often overcome using attention or cues from the environment. Hence, identification of events prior to FOG may be very effective to improve mobility in PD patients. Previous work has suggested that there are changes in the gait pattern just prior to freezing. Nonetheless, little work has been done to explore the possibility of identifying motor patterns that are characteristic of the pre-FOG phase (few seconds before the FOG). We analysed the acceleration signals from sensors worn on the ankle, thigh, and trunk of eight patients with PD who experienced freezing. We translated windows of the raw signals in symbols by using Symbolic Aggregate approXimation. The aim was to discriminate the patterns of symbols characterizing pre-FOG from the ones characterizing normal activity (standing and walking with no FOG). Sensitivity over 50% and Specificity over 70% were obtained by using a classifier on symbolic data, with different combinations of sensor position/sampling/windows duration. These preliminary findings demonstrate that it is possible to automatically identify (some of) the motor patterns that eventually lead to FOG events before they occur by using wearable sensors.
机译:步态(雾)冷冻是高级帕金森病(PD)患者的常见和致残的步态障碍。雾剧通常使用来自环境的注意力或提示来克服。因此,在雾之前鉴定雾前的事件可能非常有效地改善PD患者的迁移率。以前的工作表明,在冻结之前的步态模式发生了变化。尽管如此,已经完成了很少的工作来探索识别雾阶段特征的电动机模式的可能性(雾前几秒钟)。我们分析了来自踝关节,大腿,大腿和八名患者的传感器的加速信号,八名PD患者经历过冻结。我们通过使用符号聚合近似来在符号中翻译原始信号的窗口。目的是区分特征在特征正常活动的雾前的符号的模式(站立和没有雾的行走)。通过在符号数据上使用分类器获得超过50%的灵敏度和70%的特异性,具有不同的传感器位置/采样/窗口持续时间的组合。这些初步调查结果表明,在通过使用可穿戴传感器发生之前,可以自动识别最终导致雾事件的电动机图案。

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