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Generalized multiple indicators, multiple causes measurement error models

机译:广义多个指标,多个导致测量误差模型

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Generalized Multiple Indicators, Multiple Causes Measurement Error Models (G-MIMIC ME) can be used to study the effects of an unobservable latent variable on a set of outcomes when the causes of the latent variables are unobserved. The errors associated with the unobserved causal variables can be due to either bias recall or day-to-day variability. Another potential source of error, the Berkson error, is due to individual variations that arise from the assignment of group data to individual subjects. In this article, we accomplish the following: (a) extend the classical linear MIMIC models to allow both Berkson and classical measurement errors where the distributions of the outcome variables belong in the exponential family, (b) develop likelihood based estimation methods using the MC-EM algorithm and (c) estimate the variance of the classical measurement error associated with the approximation of the amount of radiation dose received by atomic bomb survivors at the time of their exposure. The G-MIMIC ME model is applied to study the effect of genetic damage, a latent construct based on exposure to radiation, and the effect of radiation dose on physical indicators of genetic damage.
机译:广义多个指标,多个原因测量误差模型(G-MIMIC ME)可用于在潜在变量的原因未被观察时研究不可接受的潜变量在一组结果上的效果。与未观察的因果变量相关联的错误可能是由于偏差召回或日常变异性。另一个潜在的错误来源,伯克隆错误是由于从分配组数据到各个主题的各个变化。在本文中,我们完成以下内容:(a)扩展经典线性模拟模型,以允许伯克隆和经典测量误差,其中结果变量的分布属于指数家庭,(b)使用MC开发基于似然的估计方法-EM算法和(c)估计与在其曝光时由原子弹幸存者接收的辐射剂量近似相关的经典测量误差的方差。基于接触辐射的潜在构建体,对遗传损伤,潜伏剂量对遗传损伤物理指标的影响,应用遗传损伤的效果研究。

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