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Activity-aware essential tremor evaluation using deep learning method based on acceleration data

机译:基于加速度数据的深度学习方法,活动感知的必要震颤评估

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Background: Essential tremor (ET), one of the most common neurological disorders is typically evaluated with validated rating scales which only provide a subjective assessment during a clinical visit, underestimating the fluctuations tremor during different daily activities. Motion sensors have shown favorable performances in both quantifying tremor and voluntary human activity recognition (HAR).
机译:背景:基本震颤(ET),最常见的神经障碍之一通常通过验证的评级尺度评估,该评级尺度仅在临床访问期间提供主观评估,低估了在不同日常活动期间的波动震颤。 运动传感器在量化震颤和自愿人类活动识别(Har)中都表现出有利的性能。

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