Literature DB >> 31809338

Methods to Account for Uncertainty in Latent Class Assignments When Using Latent Classes as Predictors in Regression Models, with Application to Acculturation Strategy Measures.

Michael R Elliott1,2, Zhangchen Zhao1, Bhramar Mukherjee1, Alka Kanaya3, Belinda L Needham4.   

Abstract

Latent class models have become a popular means of summarizing survey questionnaires and other large sets of categorical variables. Often these classes are of primary interest to better understand complex patterns in data. Increasingly, these latent classes are reified into predictors of other outcomes of interests, treating the most likely class as the true class to which an individual belongs even though there is uncertainty in class membership. This uncertainty can be viewed as a form of measurement error in predictors, leading to bias in the estimates of the regression parameters associated with the latent classes. Despite this fact, there is very limited literature treating latent class predictors as measurement error models. Most applications ignore this issue and fit a two-stage model that treats the modal class prediction as truth. Here, we develop two approaches-one likelihood-based, the other Bayesian-to implement a joint model for latent class analysis and outcome prediction. We apply these methods to an analysis of how acculturation behaviors predict depression in South Asian immigrants to the United States. A simulation study gives guidance for when a two-stage model can be safely implemented and when the joint model may be required.

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Year:  2020        PMID: 31809338      PMCID: PMC7480960          DOI: 10.1097/EDE.0000000000001139

Source DB:  PubMed          Journal:  Epidemiology        ISSN: 1044-3983            Impact factor:   4.860


  18 in total

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6.  Structural equation modeling: a framework for ocular and other medical sciences research.

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7.  Structural equation modeling in medical research: a primer.

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8.  Lifestyle Patterns and Survival Following Breast Cancer in the Carolina Breast Cancer Study.

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9.  It is not just menopause: symptom clustering in the Study of Women's Health Across the Nation.

Authors:  Siobán D Harlow; Carrie Karvonen-Gutierrez; Michael R Elliott; Irina Bondarenko; Nancy E Avis; Joyce T Bromberger; Maria Mori Brooks; Janis M Miller; Barbara D Reed
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10.  Mediators of Atherosclerosis in South Asians Living in America (MASALA) study: objectives, methods, and cohort description.

Authors:  Alka M Kanaya; Namratha Kandula; David Herrington; Matthew J Budoff; Stephen Hulley; Eric Vittinghoff; Kiang Liu
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  4 in total

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2.  Hypertension and Diabetes Status by Patterns of Stress in Older Adults From the US Health and Retirement Study: A Latent Class Analysis.

Authors:  Jessica R Fernandez; Francisco A Montiel Ishino; Faustine Williams; Natalie Slopen; Allana T Forde
Journal:  J Am Heart Assoc       Date:  2022-06-14       Impact factor: 6.106

3.  Do black/white differences in telomere length depend on socioeconomic status?

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4.  Associations of Four sensitization patterns revealed by Latent Class Analysis with Clinical symptoms: A multi-center study of China.

Authors:  Xiangqing Hou; Wenting Luo; Liting Wu; Yuemin Chen; Guoping Li; Rongfang Zhang; Hong Zhang; Jing Wu; Yun Sun; Lina Xu; Peiru Xu; Yongmei Yu; Dongming Huang; Chuangli Hao; Baoqing Sun
Journal:  EClinicalMedicine       Date:  2022-03-21
  4 in total

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