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Development of a Wearable Sensor Algorithm to Detect the Quantity and Kinematic Characteristics of Infant Arm Movement Bouts Produced across a Full Day in the Natural Environment

机译:开发可穿戴传感器算法以检测自然环境中一整天婴儿手臂运动发作的数量和运动学特征

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摘要

We developed a wearable sensor algorithm to determine the number of arm movement bouts an infant produces across a full day in the natural environment. Full-day infant arm movement was recorded from 33 infants (22 infants with typical development and 11 infants at risk of atypical development) across multiple days and months by placing wearable sensors on each wrist. Twenty second sections of synchronized video data were used to compare the algorithm against visual observation as the gold standard for counting the number of arm movement bouts. Overall, the algorithm counted 173 bouts and the observer identified 180, resulting in a sensitivity of 90%. For each bout produced across the day, we then calculated the following kinematic characteristics: duration, average and peak acceleration, average and peak angular velocity, and type of movement (one arm only, both arms for some portion of the bout, or both arms for the entire bout). As the first step toward developing norms, we present average values of full-day arm movement kinematic characteristics across the first months of infancy for infants with typical development. Identifying and quantifying infant arm movement characteristics produced across a full day has potential application in early identification of developmental delays and the provision of early intervention therapies to support optimal infant development.
机译:我们开发了一种可穿戴传感器算法,以确定婴儿在自然环境中一整天产生的手臂运动次数。通过在每只手腕上放置可穿戴传感器,记录了33名婴儿(22名典型发育的婴儿和11名有非典型发育风险的婴儿)在几天和几个月内的全天婴儿手臂运动。第二十二部分同步视频数据用于比较算法与视觉观察,这是计数手臂运动次数的黄金标准。总体而言,该算法计数了173次搏动,观察者确定了180次搏动,因此灵敏度为90%。然后,对于一天中产生的每个动作,我们计算出以下运动学特征:持续时间,平均加速度和峰值加速度,平均峰值速度和峰值角速度以及运动类型(仅一只手臂,该动作的某些部位的双臂,或者双臂整个回合)。作为制定规范的第一步,我们提供了具有典型发育能力的婴儿在婴儿最初几个月中全天手臂运动运动学特征的平均值。识别和量化全天产生的婴儿手臂运动特征,在早期识别发育迟缓和提供早期干预疗法以支持最佳婴儿发育方面具有潜在的应用价值。

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