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A joint modeling and estimation method for multivariate longitudinal data with mixed types of responses to analyze physical activity data generated by accelerometers

机译:具有混合类型的多变量纵向数据的联合建模与估计方法,以分析加速度计产生的物理活动数据

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摘要

A mixed effect model is proposed to jointly analyze multivariate longitudinal data with continuous, proportion, count, and binary responses. The association of the variables is modeled through the correlation of random effects. We use a quasi-likelihood type approximation for nonlinear variables and transform the proposed model into a multivariate linear mixed model framework for estimation and inference. Via an extension to the EM approach, an efficient algorithm is developed to fit the model. The method is applied to physical activity data, which uses a wearable accelerometer device to measure daily movement and energy expenditure information. Our approach is also evaluated by a simulation study.
机译:提出了一种混合效果模型,共同分析了连续,比例和二元响应的多变量纵向数据。 变量的关联是通过随机效应的相关性建模的。 我们使用用于非线性变量的准可能类型近似,并将所提出的模型转换为多变量线性混合模型框架,用于估计和推断。 通过扩展到EM方法,开发了一种有效的算法来适合模型。 该方法应用于物理活动数据,其使用可携带的加速度计装置来测量日常运动和能量消耗信息。 我们的方法也被模拟研究评估。

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