Research and Development Unit, Parc Sanitari Sant Joan de Déu, Fundació Sant Joan de Déu, CIBERSAM, Barcelona, Spain.
School of Mathematics and Statistics, Victoria University of Wellington, Wellington, New Zealand.
Int J Methods Psychiatr Res. 2019 Dec;28(4):e1801. doi: 10.1002/mpr.1801. Epub 2019 Sep 30.
The collection and use of ordinal variables are common in many psychological and psychiatric studies. Although the models for continuous variables have similarities to those for ordinal variables, there are advantages when a model developed for modeling ordinal data is used such as avoiding "floor" and "ceiling" effects and avoiding to assign scores, as it happens in continuous models, which can produce results sensitive to the score assigned. This paper introduces and focuses on the application of the ordered stereotype model, which was developed for modeling ordinal outcomes and is not so popular as other models such as linear regression and proportional odds models. This paper aims to compare the performance of the ordered stereotype model with other more commonly used models among researchers and practitioners.
This article compares the performance of the stereotype model against the proportional odd and linear regression models, with three, four, and five levels of ordinal categories and sample sizes 100, 500, and 1000. This paper also discusses the problem of treating ordinal responses as continuous using a simulation study. The trend odds model is also presented in the application.
Three types of models were fitted in one real-life example, including ordered stereotype, proportional odds, and trend odds models. They reached similar conclusions in terms of the significance of covariates. The simulation study evaluated the performance of the ordered stereotype model under four cases. The performance varies depending on the scenarios.
The method presented can be applied to several areas of psychiatry dealing with ordinal outcomes. One of the main advantages of this model is that it breaks with the assumption of levels of the ordinal response are equally spaced, which might be not true.
在许多心理和精神科研究中,有序变量的收集和使用很常见。虽然连续变量的模型与有序变量的模型有相似之处,但当使用专门为有序数据建模而开发的模型时,存在一些优势,例如避免“地板”和“天花板”效应,避免像连续模型那样分配分数,因为这可能会产生对分配分数敏感的结果。本文介绍并重点介绍了有序刻板印象模型的应用,该模型是专为有序结果建模而开发的,不如线性回归和比例优势模型等其他模型那么流行。本文旨在比较刻板印象模型与研究人员和从业者中其他更常用的模型的性能。
本文将刻板印象模型与比例优势和线性回归模型进行了比较,这些模型有三个、四个和五个有序类别,样本量分别为 100、500 和 1000。本文还讨论了使用模拟研究将有序响应视为连续的问题。在应用中还介绍了趋势优势模型。
在一个真实案例中拟合了三种类型的模型,包括有序刻板印象、比例优势和趋势优势模型。它们在协变量的显著性方面得出了相似的结论。模拟研究评估了刻板印象模型在四种情况下的性能。性能取决于情况。
提出的方法可应用于精神病学中涉及有序结果的几个领域。该模型的主要优点之一是它打破了有序响应水平等距的假设,这可能并不正确。