Mixture of longitudinal factor analyzers and their application to the assessment of chronic pain

Author:

Ounajim Amine12ORCID,Slaoui Yousri2,Louis Pierre‐Yves34,Billot Maxime1,Frasca Denis56,Rigoard Philippe17

Affiliation:

1. PRISMATICS Lab (Predictive Research in Spine/Neurostimulation Management and Thoracic Innovation in Cardiac Surgery) Poitiers University Hospital Poitiers France

2. Laboratoire de Mathématiques et Applications UMR 7348 CNRS, University of Poitiers Poitiers France

3. University Bourgogne Franche‐Comté Institut Agro Dijon, UMR PAM Dijon France

4. Institut de Mathématiques de Bourgogne UMR 5584 CNRS, University of Bourgogne Franche‐Comté Dijon France

5. Department of Anaesthesiology and Critical Care Poitiers University Hospital Poitiers France

6. INSERM UMR‐1246 Universities of Nantes and Tours Tours France

7. Department of Spine, Neuromodulation and Handicap Poitiers University Hospital Poitiers France

Abstract

Multivariate longitudinal data are used in a variety of research areas not only because they allow to analyze time trajectories of multiple indicators, but also to determine how these trajectories are influenced by other covariates. In this article, we propose a mixture of longitudinal factor analyzers. This model could be used to extract latent factors representing multiple longitudinal noisy indicators in heterogeneous longitudinal data and to study the impact of one or several covariates on these latent factors. One of the advantages of this model is that it allows for measurement non‐invariance, which arises in practice when the factor structure varies between groups of individuals due to cultural or physiological differences. This is achieved by estimating different factor models for different latent classes. The proposed model could also be used to extract latent classes with different latent factor trajectories over time. Other advantages of the model include its ability to take into account heteroscedasticity of errors in the factor analysis model by estimating different error variances for different latent classes. We first define the mixture of longitudinal factor analyzers and its parameters. Then, we propose an EM algorithm to estimate these parameters. We propose a Bayesian information criterion to identify both the number of components in the mixture and the number of latent factors. We then discuss the comparability of the latent factors obtained between subjects in different latent groups. Finally, we apply the model to simulated and real data of patients with chronic postoperative pain.

Funder

Medtronic

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

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