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Early Detection of Freezing of Gait during Walking Using Inertial Measurement Unit and Plantar Pressure Distribution Data

机译:使用惯性测量单元和跖跖分布数据在步行期间早期检测步态冻结

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摘要

Freezing of gait (FOG) is a sudden and highly disruptive gait dysfunction that appears in mid to late-stage Parkinson’s disease (PD) and can lead to falling and injury. A system that predicts freezing before it occurs or detects freezing immediately after onset would generate an opportunity for FOG prevention or mitigation and thus enhance safe mobility and quality of life. This research used accelerometer, gyroscope, and plantar pressure sensors to extract 861 features from walking data collected from 11 people with FOG. Minimum-redundancy maximum-relevance and Relief-F feature selection were performed prior to training boosted ensembles of decision trees. The binary classification models identified Total-FOG or No FOG states, wherein the Total-FOG class included data windows from 2 s before the FOG onset until the end of the FOG episode. Three feature sets were compared: plantar pressure, inertial measurement unit (IMU), and both plantar pressure and IMU features. The plantar-pressure-only model had the greatest sensitivity and the IMU-only model had the greatest specificity. The best overall model used the combination of plantar pressure and IMU features, achieving 76.4% sensitivity and 86.2% specificity. Next, the Total-FOG class components were evaluated individually (i.e., Pre-FOG windows, Freeze windows, transition windows between Pre-FOG and Freeze). The best model detected windows that contained both Pre-FOG and FOG data with 85.2% sensitivity, which is equivalent to detecting FOG less than 1 s after the freeze began. Windows of FOG data were detected with 93.4% sensitivity. The IMU and plantar pressure feature-based model slightly outperformed models that used data from a single sensor type. The model achieved early detection by identifying the transition from Pre-FOG to FOG while maintaining excellent FOG detection performance (93.4% sensitivity). Therefore, if used as part of an intelligent, real-time FOG identification and cueing system, even if the Pre-FOG state were missed, the model would perform well as a freeze detection and cueing system that could improve the mobility and independence of people with PD during their daily activities.
机译:步态冻结(雾)是一种突然和高度破坏性的步态功能障碍,其出现在晚期帕金森病(PD)中,并导致跌幅和伤害。在发生之前预测冻结或检测发作后立即冻结的系统将产生雾预防或减轻的机会,从而提高安全性和生活质量。这项研究使用了加速度计,陀螺和跖形压力传感器,从11人收集的步行数据提取861个功能。在培训决策树的培训集合之前执行最小冗余最大相关性和救济F功能选择。二进制分类模型识别出总雾或没有雾状态,其中总雾类包括从2 s之前的数据窗口,直到雾集结束。比较了三个特征集:Purtomar压力,惯性测量单元(IMU)和Purtorar压力和IMU功能。仅限跖慢的模型具有最大的敏感性,而IMU模型具有最大的特异性。最佳整体模型使用跖跖和IMU的组合,达到76.4%的灵敏度和86.2%的特异性。接下来,单独评估总雾类组件(即,雾前窗口,冻结窗口,在雾前与冻结之间的过渡窗口)。检测到窗户的最佳模型,其中包含85.2%的灵敏度预先雾和雾数据,这相当于冻结后的雾少于1秒。雾数据的窗户被检测到93.4%的灵敏度。基于IMU和Purtorar压力特征的模型略高于单个传感器类型的数据。该模型通过识别从雾前到雾的过渡而达到早期检测,同时保持出色的雾检测性能(灵敏度为93.4%)。因此,如果用作智能,实时雾识别和提示系统的一部分,即使错过了雾化状态,该模型也会表现出冻结检测和提示系统,可以改善人们的流动性和独立性在他们的日常活动期间与PD。

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