812 research outputs found

    2022 SDSU Data Science Symposium Presentation Abstracts

    Get PDF
    This document contains abstracts for presentations and posters 2022 SDSU Data Science Symposium

    2022 SDSU Data Science Symposium Presentation Abstracts

    Get PDF
    This document contains abstracts for presentations and posters 2022 SDSU Data Science Symposium

    Hidden depths:robustness of modelling approaches for uncovering latent classes in longitudinal data

    Get PDF

    Predicting preference-based utility values using partial proportional odds models.

    Get PDF
    BACKGROUND: The majority of analyses on utility data have used ordinary least square (OLS) regressions to explore potential relationships. The aim of this paper is to explore the benefits of response mapping onto health dimension profiles to generate preference-based utility scores using partial proportional odds models (PPOM). METHODS: Models are estimated using EQ-5D data collected in the Health Survey for England and the predicted utility scores are compared with those obtained using OLS regressions. Explanatory variables include age, acute illness, educational level, general health, deprivation and survey year. The expected EQ-5D scores for the PPOMs are obtained by weighting the predicted probabilities of scoring one, two or three for the five health dimensions by the corresponding preference-weights. RESULTS: The EQ-5D scores obtained using the probabilities from the PPOMs characterise the actual distribution of EQ-5D preference-based utility scores more accurately than those obtained from the linear model. The mean absolute and mean squared errors in the individual predicted values are also reduced for the PPOM models. CONCLUSIONS: The PPOM models characterise the underlying distributions of the EQ-5D data better than models obtained using OLS regressions. Additional research exploring the effect of modelling conditional responses and two part models could potentially improve the results further
    corecore