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Context-Aware Data Processing to Enhance Quality of Measurements in Wireless Health Systems: An Application to MET Calculation of Exergaming Actions

机译:上下文感知的数据处理,以提高无线医疗系统中的测量质量:在演习动作的MET计算中的应用

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Wireless health systems enable remote and continuous monitoring of individuals, with applications in elderly care support, chronic disease management, and preventive care. The underlying sensing platform provides constructs that consider the quality of information driven from the system and ensure the reliability/validity of the outcomes to support the decision-making processes. In this paper, we present an approach to integrate contextual information within the data processing flow in order to improve the quality of measurements. We focus on a pilot application that uses wearable motion sensors to calculate metabolic equivalent of task (MET) of exergaming movements. Exergames need to show energy expenditure values, often using accelerometer approximations applied to general activities. We focus on two contextual factors, namely “activity type” and “sensor location,” and demonstrate how these factors can be used to enhance the measured values, since allocating larger weights to more informative sensors can improve the final measurements. Further, designing regression models for each activity provides better results than any generalized model. Indeed, the averaged value for the movements using simple sensor location improve from a general 0.71 to as high as 0.84 for an individual activity type. The different methods present a range of value averages across activity type from 0.64 for sensor location to 0.89 for multidimensional regression, with an average game play MET value of 7.93. Finally, in a leave-one-subject-out cross validation, a mean absolute error of 2.231 METs is found when predicting the activity levels using the best models.
机译:无线医疗系统可以在老人护理支持,慢性疾病管理和预防保健中的应用,实现对个人的远程连续监控。底层的传感平台提供的构造可考虑系统所驱动信息的质量,并确保结果的可靠性/有效性以支持决策过程。在本文中,我们提出了一种在数据处理流程中集成上下文信息的方法,以提高测量的质量。我们专注于使用可穿戴运动传感器来计算锻炼运动的代谢当量(MET)的试验应用程序。 Exergame需要显示能量消耗值,通常使用应用于一般活动的加速度计近似值。我们关注两个上下文因素,即“活动类型”和“传感器位置”,并演示如何使用这些因素来增强测量值,因为将更大的权重分配给更多信息的传感器可以改善最终的测量结果。此外,为每个活动设计回归模型都比任何广义模型提供更好的结果。实际上,对于单个活动类型,使用简单传感器定位的运动平均值从一般的0.71提高到了0.84。不同方法在整个活动类型上呈现的平均值范围从传感器位置的0.64到多维回归的0.89,平均游戏MET值为7.93。最后,在留一题交叉验证中,使用最佳模型预测活动水平时,发现平均绝对误差为2.231METs。

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