FoG Finder:步态检测和治疗的实时冻结。

Kenneth Koltermann, Woosub Jung, GinaMari Blackwell, Abbott Pinney, Matthew Chen, Leslie Cloud, Ingrid Pretzer-Aboff, Gang Zhou
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引用次数: 0

摘要

步态僵硬是帕金森病的一种严重症状,它会增加跌倒受伤的风险,并降低生活质量。目前的临床步态冻结治疗未能充分解决步态症状冻结带来的跌倒风险,并且目前的实时治疗系统具有较高的假阳性率。为了解决这个问题,我们设计了一个闭环、非侵入性、实时冻结步态检测和治疗系统FoG Finder,该系统可以自动检测和治疗步态冻结。为了评估FoG Finder,我们首先收集了11名患者的716个步态冻结事件。然后,我们用我们的数据集将FoG Finder与其他实时系统进行了比较。与其他经验证的步态检测和治疗系统的实时冻结相比,我们的系统能够实现13.4%的F1得分和10.7%的总体准确率,同时实现85.8%的假阳性治疗率降低。此外,FoG Finder在受试者依赖和排除一个受试者的设置中分别实现了427ms和615ms的平均治疗延迟,使其成为现实世界中治疗步态冻结的可行系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FoG-Finder: Real-time Freezing of Gait Detection and Treatment.

Freezing of gait is a serious symptom of Parkinson's disease that increases the risk of injury through falling, and reduces quality of life. Current clinical freezing of gait treatments fail to adequately address the fall risk posed by freezing of gait symptoms, and current real-time treatment systems have high false positive rates. To address this problem, we designed a closed-loop, non-intrusive, and real-time freezing of gait detection and treatment system, FoG-Finder, that automatically detects and treats freezing of gait. To evaluate FoG-Finder, we first collected 716 freezing of gait events from 11 patients. We then compared FoG-Finder against other real-time systems with our dataset. Our system was able to achieve a 13.4% higher F1 score and a 10.7% higher overall accuracy while achieving a reduction of 85.8% in the false positive treatment rate compared with other validated real-time freezing of gait detection and treatment systems. Additionally, FoG-Finder achieved an average treatment latency of 427ms and 615ms for subject-dependent and leave-one-subject-out settings, respectively, making it a viable system to treat freezing of gait in the real-world.

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