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首页> 外文期刊>Translational Engineering in Health and Medicine, IEEE Journal of >Quantifying Tremor in Essential Tremor Using Inertial Sensors—Validation of an Algorithm
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Quantifying Tremor in Essential Tremor Using Inertial Sensors—Validation of an Algorithm

机译:使用惯性传感器来量化基本震颤中的震颤 - 算法验证

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摘要

Background Assessment of essential tremor is often done by a trained clinician who observes the limbs during different postures and actions and subsequently rates the tremor. While this method has been shown to be reliable, the inter- and intra-rater reliability and need for training can make the use of this method for symptom progression difficult. Many limitations of clinical rating scales can potentially be overcome by using inertial sensors, but to date many algorithms designed to quantify tremor have key limitations. Methods We propose a novel algorithm to characterize tremor using inertial sensors. It uses a two-stage approach that 1) estimates the tremor frequency of a subject and only quantifies tremor near that range; 2) estimates the tremor amplitude as the portion of signal power above baseline activity during recording, allowing tremor estimation even in the presence of other activity; and 3) estimates tremor amplitude in physical units of translation (cm) and rotation (degrees), consistent with current tremor rating scales. We validated the algorithm technically using a robotic arm and clinically by comparing algorithm output with data reported by a trained clinician administering a tremor rating scale to a cohort of essential tremor patients. Results Technical validation demonstrated rotational amplitude accuracy better than +/- 0.2 degrees and position amplitude accuracy better than +/- 0.1 cm. Clinical validation revealed that both rotation and position components were significantly correlated with tremor rating scale scores. Conclusion We demonstrate that our algorithm can quantify tremor accurately even in the presence of other activities, perhaps providing a step forward for at-home monitoring.
机译:背景技术对必要的震颤的评估通常由训练有素的临床医生进行,训练有素的临床医生在不同的姿势和行动期间观察肢体,随后提出震颤。虽然该方法已被证明是可靠的,但帧内间可靠性和培训需求可以利用这种方法进行症状进展困难。通过使用惯性传感器可能会克服临床评级尺度的许多限制,但是迄今为止旨在量化震颤的许多算法具有关键限制。方法我们提出了一种新颖的算法来使用惯性传感器表征震颤。它使用了一个两阶段方法,即1)估计受试者的震颤频率,并且仅量化该范围附近的震颤; 2)估计诸如在录制期间基线活动高于基线活动的信号功率部分的震颤幅度,即使在其他活动的存在下也允许震颤估计; 3)估计在平移(cm)和旋转(度)的物理单元中以物理单位估计震颤幅度,与当前的震颤等级尺度一致。我们通过将验证的临床医生报告的数据进行了比较了验证诊所向基本震颤患者队列的数据进行了技术地使用机器人臂和临床验证了验证了算法。结果技术验证显示旋转幅度精度优于+/- 0.2度,并且位置幅度精度优于+/- 0.1厘米。临床验证揭示了旋转和位置部件与震颤额定尺度分数明显相关。结论我们表明,即使在存在其他活动的情况下,我们的算法也可以准确地量化震颤,也许提供了在家庭监控的前台。

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