Wearable body and wireless inertial sensors for machine learning classification of gait for people with Friedreich's ataxia

R. LeMoyne, F. Heerinckx, Tanya Aranca, R. D. Jager, T. Zesiewicz, Harry J. Saal
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引用次数: 52

Abstract

The integration of wearable and wireless inertial body sensors with machine learning offers the capacity to diagnose neurological disorders involving gait. Clinical rating scales may be unable to offer precise measurement of gait dysfunction in Friedreich's ataxia compared to wearable body and inertial sensors. Using wireless inertial sensors mounted about the ankle joint of a person with Friedreich's ataxia, the accelerometer and gyroscope signal recordings can be wirelessly transmitted to a cloud computing resource for postprocessing, such as the development of a machine learning feature set. Machine learning can be applied to distinguish between the gait features of a person with Friedreich's ataxia and a person with healthy gait characteristics as a comparator through the application of a multilayer perceptron neural network. A considerable degree of classification accuracy for distinguishing between the gait feature set for the person with Friedreich's ataxia and healthy subject was achieved. The synthesis of wearable and wireless inertial body sensors with machine learning may offer the potential to enhance clinical diagnostic acuity and conceivably prognostic foresight.
可穿戴身体和无线惯性传感器用于机器学习的步态分类与弗里德赖希共济失调的人
可穿戴和无线惯性身体传感器与机器学习的集成提供了诊断涉及步态的神经系统疾病的能力。与可穿戴身体和惯性传感器相比,临床评定量表可能无法提供弗里德里希共济失调步态功能障碍的精确测量。使用安装在弗里德里希共济失调患者踝关节周围的无线惯性传感器,加速度计和陀螺仪的信号记录可以无线传输到云计算资源进行后处理,例如开发机器学习功能集。机器学习可以通过多层感知器神经网络的应用来区分弗里德里希共济失调患者的步态特征和健康步态特征的人作为比较者。在区分弗里德赖希共济失调患者和健康受试者的步态特征集方面取得了相当程度的分类准确性。将可穿戴和无线惯性身体传感器与机器学习相结合,可能会提高临床诊断的敏锐度,并有可能提高预后的预见性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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