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375 – Contributed Poster Presentations: Section on Statistics in Epidemiology
Generalized Latent Trait Models for Multiple Correlated Health Endpoints
Xuefeng Liu
University of Michigan
Kesheng Wangy
East Tennessee Sate University
Latent trait models have an abroad application in education, health science, psychology and other areas. There are two common assumptions in latent trait models: local independence of manifest outcomes and normal distribution of latent traits. In practice, these assumptions may not be satisfied, especially for the normality of latent traits. In this study, a class of generalized latent trait models and modified Gauss-Newton algorithms for multiple outcomes are proposed. Instead of assuming latent traits to be normal, we specify a skew normal distribution for latent traits of which a normal distribution is a special case, and then model the conditional probability of each outcome as a nonlinear quadratic function of latent traits, which has properties similar to the logistic function. The estimated generalized nonlinear least-square method is used to solve equations for parameters of interest. The models are applied to an infant morbidity study to develop a new single variable, called infant morbidity index (IMI) that functions as a summary of four infant morbidity outcomes and represents propensity for infant morbidity, is developed. The validity of this index as a measure of propensity for infant morbidity needs to be further investigated in future research.