Literature DB >> 33435832

Improving convergence in growth mixture models without covariance structure constraints.

Daniel McNeish1, Jeffrey R Harring2.   

Abstract

Growth mixture models are a popular method to uncover heterogeneity in growth trajectories. Harnessing the power of growth mixture models in applications is difficult given the prevalence of nonconvergence when fitting growth mixture models to empirical data. Growth mixture models are rooted in the random effect tradition, and nonconvergence often leads researchers to modify their intended model with constraints in the random effect covariance structure to facilitate estimation. While practical, doing so has been shown to adversely affect parameter estimates, class assignment, and class enumeration. Instead, we advocate specifying the models with a marginal approach to prevent the widespread practice of sacrificing class-specific covariance structures to appease nonconvergence. A simulation is provided to show the importance of modeling class-specific covariance structures and builds off existing literature showing that applying constraints to the covariance leads to poor performance. These results suggest that retaining class-specific covariance structures should be a top priority and that marginal models like covariance pattern growth mixture models that model the covariance structure without random effects are well-suited for such a purpose, particularly with modest sample sizes and attrition commonly found in applications. An application to PTSD data with such characteristics is provided to demonstrate (a) convergence difficulties with random effect models, (b) how covariance structure constraints improve convergence but to the detriment of performance, and (c) how covariance pattern growth mixture models may provide a path forward that improves convergence without forfeiting class-specific covariance structures.

Entities:  

Keywords:  Growth mixture model; covariance pattern model; finite mixture; latent class analysis; latent classes; latent mixture; longitudinal data analysis

Year:  2021        PMID: 33435832     DOI: 10.1177/0962280220981747

Source DB:  PubMed          Journal:  Stat Methods Med Res        ISSN: 0962-2802            Impact factor:   3.021


  5 in total

1.  Children's Daily Negative Affect Patterns and Food Consumption on Weekends: An Ecological Momentary Assessment Study.

Authors:  Christine H Naya; Daniel Chu; Wei-Lin Wang; Michele Nicolo; Genevieve F Dunton; Tyler B Mason
Journal:  J Nutr Educ Behav       Date:  2022-05-27       Impact factor: 2.822

2.  Longitudinal Trajectories of Quality of Life Among People With Mild-to-Moderate Dementia: A Latent Growth Model Approach With IDEAL Cohort Study Data.

Authors:  Linda Clare; Laura D Gamble; Anthony Martyr; Serena Sabatini; Sharon M Nelis; Catherine Quinn; Claire Pentecost; Christina Victor; Roy W Jones; Ian R Jones; Martin Knapp; Rachael Litherland; Robin G Morris; Jennifer M Rusted; Jeanette M Thom; Rachel Collins; Catherine Henderson; Fiona E Matthews
Journal:  J Gerontol B Psychol Sci Soc Sci       Date:  2022-06-01       Impact factor: 4.942

3.  Facilitating Growth Mixture Model Convergence in Preventive Interventions.

Authors:  Daniel McNeish; Armando Peña; Kiley B Vander Wyst; Stephanie L Ayers; Micha L Olson; Gabriel Q Shaibi
Journal:  Prev Sci       Date:  2021-07-07

4.  Post-traumatic growth trajectories among frontline healthcare workers during the COVID-19 pandemic: A three-wave follow-up study in mainland China.

Authors:  Zhang Yan; Jiang Wenbin; Lv Bohan; Wu Qian; Li Qianqian; Gu Ruting; Gao Silong; Tuo Miao; Li Huanting; Wei Lili
Journal:  Front Psychiatry       Date:  2022-08-10       Impact factor: 5.435

5.  Association of BMI trajectories with cardiometabolic risk among low-income Mexican American children.

Authors:  Marisol Perez; Laura K Winstone; Juan C Hernández; Sarah G Curci; Daniel McNeish; Linda J Luecken
Journal:  Pediatr Res       Date:  2022-08-18       Impact factor: 3.953

  5 in total

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