帕金森病分期自动识别

V. Aharonson, Nabeel Seedat, S. Israeli-korn, S. Hassin-Baer, M. Postema, G. Yahalom
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引用次数: 3

摘要

背景:帕金森病(PD)的治疗计划基于疾病分期量表,通常使用人工观察程序确定。自动化的、基于传感器的鉴别在临床环境中节省了劳动力和成本,并且可以提高阶段测定的准确性。以前的自动化设备要么笨重要么昂贵,不适合没有支撑就不能行走的人。方法:自2017年以来,已经有一种设备成功检测PD并为没有支持无法行走的人进行操作。在本研究中,测试了该装置用于PD分期自动判别的适用性。该设备由一个装有传感器的行走框架组成,同时支持行走和监测患者的步态。65名Hoehn和Yahr (HY)期1至4期PD患者和24名健康对照者在使用行走架的情况下进行了支持的定时起身(TUG)测试。在整个测试过程中,设备记录行走轨迹、速度、加速度和力。这些物理参数被转换成症状时空量,通常用于PD步态评估。结果:通过置信区间(CI)分析的方差分析(ANOVA)检验表明,HY阶段在以下时空数量上具有统计学意义上的可分性:TUG时间(p < 0.001)、直线行走时间(p < 0.001)、转弯时间(p < 0.001)和步数(p < 0.001)。平均步速(p < 0.001)与平均步长(p < 0.001)呈负相关。此外,这些以及额外的时空量与疾病持续时间、l -二羟基苯丙氨酸(L-DOPA)剂量、运动波动、运动障碍和统一帕金森病评定量表(UPDRS)的运动部分之间建立了相关性。结论:我们已经证明,PD的分期识别可以自动化,甚至对无法自理的患者也是如此。类似的方法可能成功地应用于其他步态障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Stage Discrimination of Parkinson’s Disease
Abstract Background: Treatment plans for Parkinson’s disease (PD) are based on a disease stage scale, which is generally determined using a manual, observational procedure. Automated, sensor-based discrimination saves labor and costs in clinical settings and may offer augmented stage determination accuracy. Previous automated devices were either cumbersome or costly and were not suitable for individuals who cannot walk without support.Methods: Since 2017, a device has been available that successfully detects PD and operates for people who cannot walk without support. In the present study, the suitability of this device for automated discrimination of PD stages was tested. The device consists of a walking frame fitted with sensors to simultaneously support walking and monitor patient gait. Sixty-five PD patients in Hoehn and Yahr (HY) stages 1 to 4 and 24 healthy controls were subjected to supported Timed Up and Go (TUG) tests, while using the walking frame. The walking trajectory, velocity, acceleration and force were recorded by the device throughout the tests. These physical parameters were converted into symptomatic spatiotemporal quantities that are conventionally used in PD gait assessment.Results: An analysis of variance (ANOVA) test extended by a confidence interval (CI) analysis indicated statistically significant separability between HY stages for the following spatiotemporal quantities: TUG time (p < 0.001), straight line walking time (p < 0.001), turning time (p < 0.001), and step count (p < 0.001). A negative correlation was obtained for mean step velocity (p < 0.001) and mean step length (p < 0.001). Moreover, correlations were established between these, as well as additional spatiotemporal quantities, and disease duration, L-dihydroxyphenylalanine-(L-DOPA) dose, motor fluctuation, dyskinesia and the mobile part of the Unified Parkinson Disease Rating Scale (UPDRS).Conclusions: We have proven that stage discrimination of PD can be automated, even to patients who cannot support themselves. A similar method might be successfully applied to other gait disorders.
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