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首页> 外文期刊>Journal of the American statistical association >Using Wavelet-Based Functional Mixed Models to Characterize Population Heterogeneity in Accelerometer Profiles: A Case Study
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Using Wavelet-Based Functional Mixed Models to Characterize Population Heterogeneity in Accelerometer Profiles: A Case Study

机译:使用基于小波的功能混合模型表征加速度计剖面中的种群异质性:一个案例研究

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We present a case study illustrating the challenges of analyzing accelerometer data taken from a sample of children participating in an intervention study designed to increase physical activity. An accelerometer is a small device worn on the hip that records the minute-by-minute activity levels throughout the day for each day it is worn. The resulting data are irregular functions characterized by many peaks representing short bursts of intense activity. We model these data using the wavelet-based functional mixed model. This approach incorporates multiple fixed-effects and random-effects functions of arbitrary form, the estimates of which are adaptively regularized using wavelet shrinkage. The method yields posterior samples for all functional quantities of the model, which can be used to perform various types of Bayesian inference and prediction. In our case study, a high proportion of the daily activity profiles are incomplete (i.e., have some portion of the profile missing), and thus cannot be modeled directly using the previously described method. We present a new method for stochastically imputing the missing data that allows us to incorporate these incomplete profiles in our analysis. Our approach borrows strength from both the observed measurements within the incomplete profiles and from other profiles, from the same child as well as from other children with similar covariate levels, while appropriately propagating the uncertainty of the imputation throughout all subsequent inference. We apply this method to our case study, revealing some interesting insights into children's activity patterns. We point out some strengths and limitations of using this approach to analyze accelerometer data.
机译:我们提供了一个案例研究,说明了分析加速度计数据的挑战,该数据来自参与旨在增加身体活动的干预研究的儿童样本。加速度计是一种戴在臀部上的小型设备,可记录佩戴一天中每一分钟的分钟活动水平。所得数据是不规则函数,其特征是代表强烈活动的短暂爆发的许多峰。我们使用基于小波的函数混合模型对这些数据进行建模。这种方法结合了任意形式的多个固定效应和随机效应函数,使用小波收缩来自适应地调整其估计值。该方法为模型的所有功能量生成后验样本,可用于执行各种类型的贝叶斯推理和预测。在我们的案例研究中,很大一部分日常活动概况是不完整的(即,某些部分的概况丢失了),因此无法使用先前描述的方法直接建模。我们提供了一种随机估算缺失数据的新方法,该方法使我们能够将这些不完整的资料纳入我们的分析中。我们的方法借鉴了不完整概况中观察到的测量值以及其他概况,同一个孩子以及具有相似协变量水平的其他孩子的强度,同时在所有后续推断中适当地传播了推论的不确定性。我们将这种方法应用于我们的案例研究,揭示了对儿童活动模式的一些有趣见解。我们指出了使用这种方法分析加速度计数据的优势和局限性。

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