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Functional multiple indicators, multiple causes measurement error models

机译:功能多个指示灯,多个导致测量误差模型

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Summary Objective measures of oxygen consumption and carbon dioxide production by mammals are used to predict their energy expenditure. Since energy expenditure is not directly observable, it can be viewed as a latent construct with multiple physical indirect measures such as respiratory quotient, volumetric oxygen consumption, and volumetric carbon dioxide production. Metabolic rate is defined as the rate at which metabolism occurs in the body. Metabolic rate is also not directly observable. However, heat is produced as a result of metabolic processes within the body. Therefore, metabolic rate can be approximated by heat production plus some errors. While energy expenditure and metabolic rates are correlated, they are not equivalent. Energy expenditure results from physical function, while metabolism can occur within the body without the occurrence of physical activities. In this manuscript, we present a novel approach for studying the relationship between metabolic rate and indicators of energy expenditure. We do so by extending our previous work on MIMIC ME models to allow responses that are sparsely observed functional data, defining the sparse functional multiple indicators, multiple cause measurement error (FMIMIC ME) models. The mean curves in our proposed methodology are modeled using basis splines. A novel approach for estimating the variance of the classical measurement error based on functional principal components is presented. The model parameters are estimated using the EM algorithm and a discussion of the model's identifiability is provided. We show that the defined model is not a trivial extension of longitudinal or functional data methods, due to the presence of the latent construct. Results from its application to data collected on Zucker diabetic fatty rats are provided. Simulation results investigating the properties of our approach are also presented.
机译:发明内容哺乳动物氧气消耗和二氧化碳生产的客观措施用于预测其能源支出。由于能量支出不可观察到,因此可以被视为具有多种物理间接措施的潜在构造,例如呼吸商,体积氧消耗和体积二氧化碳生产。代谢率定义为在身体中发生代谢的速率。代谢率也没有直接可观察到。然而,由于身体内的代谢过程产生热量。因此,可以通过热量生产加一些误差来近似代谢率。虽然能源支出和代谢率相关,但它们不等同。物理功能的能量支出结果,而在没有体育活动的情况下,可以在身体内发生新陈代谢。在这份手稿中,我们提出了一种研究代谢率与能源支出指标之间关系的新方法。我们通过延长我们的模仿ME模型的先前工作来允许稀疏观察功能数据的响应,定义稀疏功能多个指标,多个原因测量误差(FMIMIC ME)模型。我们所提出的方法中的平均曲线使用基础样条进行建模。提出了一种基于功能主组件的估计经典测量误差的变化的新方法。使用EM算法估计模型参数,提供了对模型的可识别性的讨论。我们表明,由于存在潜伏构建体,所定义的模型不是纵向或功能数据方法的琐碎延伸。提供了其对Zucker糖尿病脂肪大鼠收集的数据的应用。还提出了研究我们方法性质的仿真结果。

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