» Articles » PMID: 24277769

An Introduction to Latent Variable Mixture Modeling (part 1): Overview and Cross-sectional Latent Class and Latent Profile Analyses

Overview
Date 2013 Nov 27
PMID 24277769
Citations 247
Authors
Affiliations
Soon will be listed here.
Abstract

Objective: Pediatric psychologists are often interested in finding patterns in heterogeneous cross-sectional data. Latent variable mixture modeling is an emerging person-centered statistical approach that models heterogeneity by classifying individuals into unobserved groupings (latent classes) with similar (more homogenous) patterns. The purpose of this article is to offer a nontechnical introduction to cross-sectional mixture modeling.

Method: An overview of latent variable mixture modeling is provided and 2 cross-sectional examples are reviewed and distinguished.

Results: Step-by-step pediatric psychology examples of latent class and latent profile analyses are provided using the Early Childhood Longitudinal Study-Kindergarten Class of 1998-1999 data file.

Conclusions: Latent variable mixture modeling is a technique that is useful to pediatric psychologists who wish to find groupings of individuals who share similar data patterns to determine the extent to which these patterns may relate to variables of interest.

Citing Articles

Advancing the Study of Maternal Prenatal Stress Phenotypes and Infant Temperament Outcomes.

Pham C, Mattera J, Waters S, Crespi E, Madigan J, Lee S Dev Psychobiol. 2025; 67(2):e70035.

PMID: 40079473 PMC: 11905339. DOI: 10.1002/dev.70035.


Caregiver Burden and Associated Factors Among Informal Caregivers of Hospitalized Elderly Patients in China: A Latent Profile Analysis.

Lv H, Yang S, Zhang Y, Wang Y, Zhang L, Wang J Risk Manag Healthc Policy. 2025; 18:547-559.

PMID: 39990616 PMC: 11846611. DOI: 10.2147/RMHP.S499768.


Examining maladaptive eating behaviors and psychological difficulties among women with compulsive eating and obesity: a latent profile analysis.

Maltais-Levesque C, Legendre M, Begin C J Eat Disord. 2025; 13(1):36.

PMID: 39972394 PMC: 11841286. DOI: 10.1186/s40337-025-01193-2.


User Personas for eHealth Regarding the Self-Management of Depressive Symptoms in People Living With HIV: Mixed Methods Study.

Zhao T, Tang C, Ma J, Yan H, Su X, Zhong X J Med Internet Res. 2025; 27:e56289.

PMID: 39960763 PMC: 11888057. DOI: 10.2196/56289.


Latent profile analysis and influence factors study of nurses' job performance.

Liu Z, Yan X, Xie G, Lu J, Wang Z, Chen C Front Psychol. 2025; 16:1474091.

PMID: 39950074 PMC: 11821581. DOI: 10.3389/fpsyg.2025.1474091.