Approaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel models

Self-rated health (SRH) is an outcome commonly studied by demographers, epidemiologists, and sociologists of health, typically measured using an ordinal scale. SRH is analyzed in cross-sectional and longitudinal studies for both descriptive and inferential purposes, and has been shown to have signif...

Full description

Bibliographic Details
Main Author: Sasson, Isaac
Format: Others
Language:English
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/2152/ETD-UT-2012-05-5236
id ndltd-UTEXAS-oai-repositories.lib.utexas.edu-2152-ETD-UT-2012-05-5236
record_format oai_dc
spelling ndltd-UTEXAS-oai-repositories.lib.utexas.edu-2152-ETD-UT-2012-05-52362015-09-20T17:09:03ZApproaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel modelsBest practices and recommendations for multilevel modelsSasson, IsaacSelf rated healthLongitudinal studiesMultilevel modelsOrdinal outcomesGLMMSelf-rated health (SRH) is an outcome commonly studied by demographers, epidemiologists, and sociologists of health, typically measured using an ordinal scale. SRH is analyzed in cross-sectional and longitudinal studies for both descriptive and inferential purposes, and has been shown to have significant validity with regard to predicting mortality. Despite the wide spread use of this measure, only limited attention is explicitly given to its unique attributes in the case of longitudinal studies. While self-rated health is assumed to represent a latent continuous and dynamic process, SRH is actually measured discretely and asymmetrically. Thus, the validity of methods ignoring the scale of measurement remains questionable. We compare three approaches to modeling SRH with repeated measures over time: linear multilevel models (MLM or LGM), including corrections for non-normality; and marginal and conditional ordered-logit models for longitudinal data. The models are compared using simulated data and illustrated with results from the Health and Retirement Study. We find that marginal and conditional models result in very different interpretations, but that conditional linear and non-linear models result in similar substantive conclusions, albeit with some loss of power in the linear case. In conclusion, we suggest guidelines for modeling self-rated health and similar ordinal outcomes in longitudinal studies.text2012-08-21T17:16:30Z2012-08-21T17:16:30Z2012-052012-08-21May 20122012-08-21T17:16:36Zthesisapplication/pdfhttp://hdl.handle.net/2152/ETD-UT-2012-05-52362152/ETD-UT-2012-05-5236eng
collection NDLTD
language English
format Others
sources NDLTD
topic Self rated health
Longitudinal studies
Multilevel models
Ordinal outcomes
GLMM
spellingShingle Self rated health
Longitudinal studies
Multilevel models
Ordinal outcomes
GLMM
Sasson, Isaac
Approaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel models
description Self-rated health (SRH) is an outcome commonly studied by demographers, epidemiologists, and sociologists of health, typically measured using an ordinal scale. SRH is analyzed in cross-sectional and longitudinal studies for both descriptive and inferential purposes, and has been shown to have significant validity with regard to predicting mortality. Despite the wide spread use of this measure, only limited attention is explicitly given to its unique attributes in the case of longitudinal studies. While self-rated health is assumed to represent a latent continuous and dynamic process, SRH is actually measured discretely and asymmetrically. Thus, the validity of methods ignoring the scale of measurement remains questionable. We compare three approaches to modeling SRH with repeated measures over time: linear multilevel models (MLM or LGM), including corrections for non-normality; and marginal and conditional ordered-logit models for longitudinal data. The models are compared using simulated data and illustrated with results from the Health and Retirement Study. We find that marginal and conditional models result in very different interpretations, but that conditional linear and non-linear models result in similar substantive conclusions, albeit with some loss of power in the linear case. In conclusion, we suggest guidelines for modeling self-rated health and similar ordinal outcomes in longitudinal studies. === text
author Sasson, Isaac
author_facet Sasson, Isaac
author_sort Sasson, Isaac
title Approaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel models
title_short Approaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel models
title_full Approaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel models
title_fullStr Approaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel models
title_full_unstemmed Approaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel models
title_sort approaches to modeling self-rated health in longitudinal studies : best practices and recommendations for multilevel models
publishDate 2012
url http://hdl.handle.net/2152/ETD-UT-2012-05-5236
work_keys_str_mv AT sassonisaac approachestomodelingselfratedhealthinlongitudinalstudiesbestpracticesandrecommendationsformultilevelmodels
AT sassonisaac bestpracticesandrecommendationsformultilevelmodels
_version_ 1716822818508767232