Physical activity (PA) is an important risk factor for many health outcomes. Wearable-devices such as accelerometers are increasingly used in biomedical studies to understand the associations between PA and health outcomes. Statistical analyses involving accelerometer data are challenging due to the following three characteristics: (i) high-dimensionality, (ii) temporal dependence, and (iii) measurement error. To address these challenges we treat accelerometer-based measures of physical activity as a single function-valued covariate prone to measurement error. Specifically, in order to determine the relationship between PA and a health outcome of interest, we propose a regression model with a functional covariate that accounts for measurement error. Using regression calibration, we develop a two-step estimation method for the model parameters and establish their consistency. A test is also proposed to test the significance of the estimated model parameters. Simulation studies are conducted to compare the proposed methods with existing alternative approaches under varying scenarios. Finally, the developed methods are used to assess the relationship between PA intensity and BMI obtained from the National Health and Nutrition Examination Survey data.
翻译:对于许多健康结果而言,体育活动(PA)是一个重要的风险因素。生物医学研究越来越多地使用诸如加速计等可穿式装置来理解巴权力机构与健康结果之间的关联。涉及加速计数据的统计分析具有挑战性,因为有以下三个特点:(一) 高维度,(二) 时间依赖,和(三) 测量错误。为了应对这些挑战,我们把基于加速计的物理活动计量作为单一功能值的共变法处理,容易发生测量错误。具体地说,为了确定巴权力机构与健康结果之间的关系,我们提出了一个具有功能共变量的回归模型,用于计算误差。我们利用回归校准,为模型参数制定了两步估计方法,并确立其一致性。还提议进行一项测试,以测试估计模型参数的重要性。进行模拟研究,将拟议的方法与不同情景下的现有替代方法进行比较。最后,采用开发的方法来评估巴权力机构强度与从国家健康和营养调查数据中获得的BMI之间的关系。