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Measuring the Effect of Rhythmic Auditory Stimuli on Parkinsonian Gait in Challenging Settings

机译:在挑战环境中测量节奏听觉刺激对Parkinsonian步态的影响

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Rhythmic auditory stimuli (RAS) improve the disabling motor symptom of Parkinson’s disease patients. In the large majority of studies, the effect of RAS has been assessed during common activities such as walking and turning. However, how RAS modulates parkinsonian behaviors in more challenging settings of daily living and whether a machine learning algorithm could classify them remains unclear. Eleven patients with idiopathic PD (age 72±7 years) were asked to walk under four conditions: straight walking, walking over an irregular surface, walking within a narrow pathway, and walking along a curving path (eight-shaped), with and without external stimulation. RAS pace was set at 110% of the normal cadence and spatio-temporal gait parameters were measured through two inertial measurement units placed on feet. k-Nearest Neighbor (k-NN) algorithm, with and without principal component analysis (PCA) as feature selector, was used for the classification of walking conditions. Cadence, gait speed, and gait time improved during RAS walking, regardless of challenging walking conditions. On the contrary, stride length increased only in straight walking, while gait speed showed improvement also in walking over an irregular surface and walking within narrow pathway conditions. k-NN algorithm reported higher accuracy (72.4%) in the classification of eight- shaped curving path both considering the overall feature set and a reduced one. These results open to the possibility of measuring RAS-induced effects on PD mobility in an ecological scenario and improving their administration based on the actual motor activity.
机译:节奏听觉刺激(RAS)改善了帕金森病患者的致残运动症状。在大多数研究中,RAS的效果已经在散步和转向等共同活动中进行了评估。然而,RAS如何在日常生活的更具挑战性环境中调制PARKINSONIAN行为,以及机器学习算法是否可以对其进行分类,但仍然不清楚。提出在四个条件下进行特发性PD(年龄72±7岁):直接行走,在不规则的表面上行走,行走在狭窄的途径内,沿着弯曲路径(八种形),有和没有外部刺激。 RAS PACE设定为正常节奏的110%,通过两个惯性测量单元测量时空步态参数。 k最近邻(k-nn)算法,带有主成分分析(PCA)作为特征选择器,用于步行条件的分类。在RAS行走期间,Cadence,步态速度和步态时间改善,无论挑战性的行走条件如何。相反,步幅长度仅在直线行走时增加,而步态速度也显示出在不规则的表面上行走并且在狭窄的途径条件下行走。 K-NN算法报告了八种弯曲路径的分类中的更高精度(72.4%)考虑到整体特征集和减少的曲线。这些结果对于在生态场景中测量RAS诱导的对PD流动性的影响以及基于实际电机活性来改善其给药的可能性。

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