Haussler Allison M, Tueth Lauren E, May David S, Earhart Gammon M, Mazzoni Pietro
Program in Physical Therapy, School of Medicine, Washington University in St. Louis, St. Louis, MO 63108, USA.
Department of Neurology, School of Medicine, Washington University in St. Louis, St. Louis, MO 63108, USA.
Sensors (Basel). 2024 Dec 28;25(1):124. doi: 10.3390/s25010124.
Freezing of gait (FOG) is a debilitating symptom of Parkinson disease (PD). It is episodic and variable in nature, making assessment difficult. Wearable sensors used in conjunction with specialized algorithms, such as our group's pFOG algorithm, provide objective data to better understand this phenomenon. While these methods are effective at detecting FOG retrospectively, more work is needed. The purpose of this paper is to explore how the existing pFOG algorithm can be refined to improve the detection and prediction of FOG. To accomplish this goal, previously collected data were utilized to assess the prediction ability of the current algorithm, the potency of each FOG assessment task(s) for eliciting FOG, and the maintenance of detection accuracy when modifying the sampling rate. Results illustrate that the algorithm was able to predict upcoming FOG episodes, but false positive rates were high. The Go Out and Turn-Dual Task was most potent for eliciting FOG, and the 360-Dual Task elicited the longest duration of FOG. The detection accuracy of the pFOG algorithm was maintained at a sampling rate of 60 Hz but significantly worse at 30 Hz. This work is an important step in refining the pFOG algorithm for improved clinical utility.
冻结步态(FOG)是帕金森病(PD)的一种致残症状。它具有发作性且本质上具有变异性,使得评估困难。与诸如我们团队的pFOG算法等专门算法结合使用的可穿戴传感器,能提供客观数据以更好地理解这一现象。虽然这些方法在回顾性检测FOG方面很有效,但仍需要更多工作。本文的目的是探索如何改进现有的pFOG算法,以提高对FOG的检测和预测能力。为实现这一目标,利用先前收集的数据来评估当前算法的预测能力、每个FOG评估任务引发FOG的效力,以及修改采样率时检测准确性的维持情况。结果表明,该算法能够预测即将发生的FOG发作,但假阳性率很高。外出和转身双重任务引发FOG的效力最强,360度双重任务引发的FOG持续时间最长。pFOG算法的检测准确性在采样率为60Hz时得以维持,但在30Hz时显著变差。这项工作是改进pFOG算法以提高临床实用性的重要一步。