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Hierarchical linear models for energy prediction using inertial sensors: a comparative study for treadmill walking

机译:使用惯性传感器进行能量预测的分层线性模型:跑步机行走的比较研究

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Walking is a commonly available activity to maintain a healthy lifestyle. Accurately tracking and measuring calories expended during walking can improve user feedback and intervention measures. Inertial sensors are a promising measurement tool to achieve this purpose. An important aspect in mapping inertial sensor data to energy expenditure is the question of normalizing across physiological parameters. Common approaches such as weight scaling require validation for each new population. An alternative is to use a hierarchical approach to model subject-specific parameters at one level and cross-subject parameters connected by physiological variables at a higher level. In this paper, we evaluate an inertial sensor-based hierarchical model to measure energy expenditure across a target population. We first determine the optimal movement and physiological features set to represent data. Periodicity based features are more accurate (p < 0.1 per subject) when generalizing across populations. Weight is the most accurate parameter (p < 0.1 per subject) measured as percentage prediction error. We also compare the hierarchical model with a subject-specific regression model and weight exponent scaled models. Subject-specific models perform significantly better (p < 0.1 per subject) than weight exponent scaled models at all exponent scales whereas the hierarchical model performed worse than both. However, using an informed prior from the hierarchical model produces similar errors to using a subject-specific model with large amounts of training data (p < 0.1 per subject). The results provide evidence that hierarchical modeling is a promising technique for generalized prediction energy expenditure prediction across a target population in a clinical setting.
机译:散步是维持健康生活方式的一种常见方法。准确跟踪和测量步行过程中消耗的卡路里可以改善用户的反馈和干预措施。惯性传感器是实现此目的的有前途的测量工具。将惯性传感器数据映射到能量消耗的一个重要方面是跨生理参数标准化的问题。诸如体重缩放之类的常见方法需要对每个新人群进行验证。一种替代方法是使用分层方法在一个级别上建模特定于受试者的参数,并在更高级别上建模由生理变量连接的跨学科参数。在本文中,我们评估了基于惯性传感器的层次模型来衡量目标人群的能源消耗。我们首先确定最佳运动和生理特征集来表示数据。在人群中进行归纳时,基于周期性的功能更准确(每个主题p <0.1)。体重是最准确的参数(每个受试者p <0.1),以百分比预测误差衡量。我们还将比较层次模型与特定主题的回归模型和权重指数缩放模型。在所有指数范围内,特定于对象的模型的表现均明显优于权重指数缩放的模型(每个受试者的p <0.1),而层次模型的表现却差于两者。但是,使用分层模型中的知情先验会产生与使用具有大量训练数据的特定于对象的模型(每个对象p <0.1)相似的错误。结果提供了证据,表明层次建模是一种有希望的技术,可用于在临床环境中跨目标人群进行广义预测能量消耗预测。

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