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Validation of a New Model-Free Signal Processing Method for Gait Feature Extraction Using Inertial Measurement Units to Diagnose and Quantify the Severity of Parkinson's Disease

机译:使用惯性测量单元验证用于步态特征提取的新型无模型信号处理方法,以诊断和量化帕金森病的严重程度

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摘要

Gait analysis is important in diagnosing and quantifying the severity of Parkinson's disease. Different motion tracking systems such as inertial measurement units (IMU) are widely used to detect gait parameters associated with the severity of Parkinson's disease. Although these systems are accurate enough to measure different gait parameters, they utilize a predefined model of human gait to measure these parameters. Model-based signal processing, that takes into account the kinematics of human body, enforces that sensors be placed in a certain configuration in terms of orientation and location which introduces a burden at the signal processing development phase. In addition, it affects the accuracy and robustness of the system when the user does not place the sensors at their pre-defined locations and with a pre-define orientation. In this paper, we introduce a set of model-free features to estimate gait parameters for the applications of diagnosing and quantifying the severity of Parkinson's disease. A model-free signal processing technique does not limit sensor placement, in addition, it does not require the knowledge on the kinematics of the users and the human subjects. We show that our proposed features, using a model-free signal processing technique, are highly correlated (R-value up to 0.96 for suitable locations) with gait parameters obtained from model-based sophisticated algorithms. Therefore, these simple model-free features may be suitable for ongoing assessment of Parkinson's disease and they can be an alternative for conventional gait parameters used for rapid application development.
机译:步态分析对于诊断和量化帕金森病的严重程度是重要的。诸如惯性测量单元(IMU)之类的不同运动跟踪系统被广泛用于检测与帕金森病的严重程度相关的步态参数。虽然这些系统足够准确以测量不同的步态参数,但它们利用预定的人体步态模型来测量这些参数。基于模型的信号处理,考虑到人体的运动学,从而强制执行传感器在某种程度上放置在某些配置中,在某种方向和位置引入信号处理开发阶段的负担。此外,它会影响系统的精度和鲁棒性,当用户不将传感器在它们的预定义位置,并用一个预先确定的取向。在本文中,我们介绍了一系列的无模型功能来估计诊断和量化帕金森病的严重程度的应用的步态参数。无模型信号处理技术不限制传感器放置,此外,它不需要对用户和人类受试者的运动学知识。我们表明,我们的建议功能使用无模型信号处理技术,具有与基于模型的复杂算法获得的步态参数的高度相关(R值高达0.96)。因此,这些简单的无模型特征可能适合于对帕金森病的持续评估,并且可以是用于快速应用开发的传统步态参数的替代方案。

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