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Multiple indicators, multiple causes measurement error models

机译:多种指标,多种原因测量误差模型

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摘要

Multiple indicators, multiple causes (MIMIC) models are often employed by researchers studying the effects of an unobservable latent variable on a set of outcomes, when causes of the latent variable are observed. There are times, however, when the causes of the latent variable are not observed because measurements of the causal variable are contaminated by measurement error. The objectives of this paper are as follows: (i) to develop a novel model by extending the classical linear MIMIC model to allow both Berkson and classical measurement errors, defining the MIMIC measurement error (MIMIC ME) model; (ii) to develop likelihood-based estimation methods for the MIMIC ME model; and (iii) to apply the newly defined MIMIC ME model to atomic bomb survivor data to study the impact of dyslipidemia and radiation dose on the physical manifestations of dyslipidemia. As a by-product of our work, we also obtain a data-driven estimate of the variance of the classical measurement error associated with an estimate of the amount of radiation dose received by atomic bomb survivors at the time of their exposure.
机译:研究人员经常使用多指标,多原因(MIMIC)模型来研究观察到潜在变量原因的一组变量中不可观察的潜在变量的影响。但是,有时因因变量的测量值被测量误差所污染而未观察到潜在变量的原因。本文的目标如下:(i)通过扩展经典线性MIMIC模型以允许Berkson和经典测量误差来发展一个新模型,定义MIMIC测量误差(MIMIC ME)模型; (ii)为MIMIC ME模型开发基于可能性的估计方法; (iii)将新定义的MIMIC ME模型应用于原子弹幸存者数据,以研究血脂异常和放射剂量对血脂异常物理表现的影响。作为我们工作的副产品,我们还获得了数据驱动的经典测量误差方差的估计值,该估计值与原子弹幸存者在暴露时所接受的辐射剂量估算值相关。

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