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Structural equation modeling: A framework for ocular and other medical sciences research

机译:结构方程模型:用于眼科和其他医学科学研究的框架

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摘要

Structural equation modeling (SEM) is a modeling framework that encompasses many types of statistical models and can accommodate a variety of estimation and testing methods. SEM has been used primarily in social sciences but is increasingly used in epidemiology, public health, and the medical sciences. SEM provides many advantages for the analysis of survey and clinical data, including the ability to model latent constructs that may not be directly observable. Another major feature is simultaneous estimation of parameters in systems of equations that may include mediated relationships, correlated dependent variables, and in some instances feedback relationships. SEM allows for the specification of theoretically holistic models because multiple and varied relationships may be estimated together in the same model. SEM has recently expanded by adding generalized linear modeling capabilities that include the simultaneous estimation of parameters of different functional form for outcomes with different distributions in the same model. Therefore, mortality modeling and other relevant health outcomes may be evaluated. Random effects estimation using latent variables has been advanced in the SEM literature and software. In addition, SEM software has increased estimation options. Therefore, modern SEM is quite general and includes model types frequently used by health researchers, including generalized linear modeling, mixed effects linear modeling, and population average modeling. This article does not present any new information. It is meant as an introduction to SEM and its uses in ocular and other health research.
机译:结构方程建模(SEM)是一个建模框架,其中包含许多类型的统计模型,并且可以容纳多种估计和测试方法。 SEM主要用于社会科学,但越来越多地用于流行病学,公共卫生和医学。 SEM为分析调查和临床数据提供了许多优势,包括能够对可能无法直接观察到的潜在构建体进行建模的能力。另一个主要特征是方程式系统中参数的同时估计,该方程式系统可能包括中介关系,相关因变量,在某些情况下还包括反馈关系。 SEM允许对理论上的整体模型进行规范,因为在同一模型中可以一起估算多种关系。 SEM最近通过添加广义的线性建模功能进行了扩展,该功能包括针对同一模型中具有不同分布的结果同时估计不同功能形式的参数。因此,可以评估死亡率模型和其他相关的健康结果。 SEM文献和软件中已经提出了使用潜在变量进行随机效应估计的方法。此外,SEM软件增加了估计选项。因此,现代SEM非常笼统,并包括卫生研究人员经常使用的模型类型,包括广义线性建模,混合效应线性建模和总体平均建模。本文不提供任何新信息。它旨在作为SEM的简介及其在眼和其他健康研究中的用途。

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