帕金森病患者运动波动的步态划分方法:比较分析

Ilaria Mileti, M. Germanotta, S. Alcaro, Alessandra Pacilli, Isabella Imbimbo, M. Petracca, C. Erra, E. D. Sipio, I. Aprile, S. Rossi, A. Bentivoglio, L. Padua, E. Palermo
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引用次数: 22

摘要

通过可穿戴传感器测量患者的步态质量已成为辅助给药的有用工具。在过去的十年中,已经提出了几种基于放置在下肢的惯性传感器的方法来估计临床有意义的参数,如步态相位分布。将这些算法应用于监测步态异常,在帕金森病患者中具有巨大的潜力。然而,它们对严重步态障碍患者的适用性尚未得到充分的测试和比较。在本研究中,我们对左旋多巴关闭和打开两种情况下帕金森病患者的步态相位检测方法进行了对比分析。我们比较了基于阈值法和隐马尔可夫模型方法的三种步态划分算法的性能。本研究招募了14名特发性PD患者,并在同一天进行了两次评估:OFF和ON状态。所有患者都在20米的走道上进行了三次步行任务,在小腿和脚上放置了四个惯性测量单元。收集了所有节段的矢状角速度和足部的线加速度来评估姿态和摇摆阶段。在足下放置力电阻传感器作为脚开关来估计参考步态相位序列。方法的优度(G)通过接受者工作特性进行评价。结果为所有检测方法提供了最佳优度(0 < G < 0.25)。在左旋多巴OFF (G=0.01)和ON (G=0.01)条件下,隐马尔可夫模型的性能都达到了最佳。我们的结果鼓励HMM在运动波动患者日常监测可穿戴系统开发中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gait partitioning methods in Parkinson's disease patients with motor fluctuations: A comparative analysis
Measuring gait quality of patients through wearable sensors has become an useful tool to assist in drug administration. Several methods, based on inertial sensors placed on lower limbs, have been proposed over the last decade to estimate clinical meaningful parameters such as gait phase distribution. Application of those algorithms for monitoring gait abnormalities would have a tremendous potential in patients with Parkinson's disease. However, their applicability to patients with severe gait impairment has not been fully tested and compared. In the present study, we conducted a comparative analysis of gait phase detection methods applied to patients with Parkinson's disease both in OFF and ON levodopa conditions. We compared gait partitioning performance of three already proposed algorithms based on a threshold method and a novel Hidden Markov Model approach. Fourteen subjects with idiopathic PD have been enrolled in this study, and evaluated twice during the same day: both in OFF and in ON conditions. All patients have performed three walking tasks along a 20 m walkway in with four Inertial Measured Units placed on shanks and feet. The sagittal angular velocity of all segments and the linear acceleration of feet have been gathered to evaluate stance and swing phases. Force resistive sensors used as foot-switches have been placed under the feet to estimate the reference gait phase sequence. The goodness (G) of methods was evaluated through the Receiver Operating Characteristic. The results provided an optimum goodness for all examined methods (0 < G < 0.25). The best performance has been achieved with the Hidden Model Markov both in OFF (G=0.01) and ON (G=0.01) levodopa conditions. Our results encourage the applicability of HMM in developments of wearable systems for daily monitoring in patients with motor fluctuations.
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