Marginal structural models with latent class growth analysis of treatment trajectories: Statins for primary prevention among older adults

Author:

Diop Awa12ORCID,Sirois Caroline23,Guertin Jason Robert124,Schnitzer Mireille E56ORCID,Candas Bernard1,Cossette Benoit7,Poirier Paul2,Brophy James8ORCID,Mésidor Miceline13ORCID,Blais Claudia9ORCID,Hamel Denis9,Tadrous Mina10,Lix Lisa11ORCID,Talbot Denis13ORCID

Affiliation:

1. Departement de medecine sociale et preventive, Universite Laval, Quebec, Canada

2. Centre de recherche du CHU de Quebec, Universite Laval, Canada

3. Faculte de pharmacie, Universite Laval, Quebec, Canada

4. Tissue Engineering Laboratory (LOEX), Canada

5. Faculte de pharmacie et Departement de medecine sociale et preventive, ESPUM, Universite de Montreal, Canada

6. Department of Epidemiology, Biostatistics, and Occupational Health, McGill University, Montreal, Canada

7. Faculte de medecine et des sciences de la sante, Universite de Sherbrooke, Canada

8. Hospital Center Centre for Health Outcomes Research, McGill University, Montreal, Canada

9. Institut National de la Sante Publique du Quebec (INSPQ), Canada

10. Leslie Dan Faculty of Pharmacy, University of Toronto, Canada

11. Department of Community Health Sciences, University of Manitoba, Winnipeg, Canada

Abstract

Latent class growth analysis is increasingly proposed as a solution to summarize the observed longitudinal treatment into a few distinct groups. When latent class growth analysis is combined with standard approaches like Cox proportional hazards models, confounding bias is not properly addressed because of time-varying covariates that have a double role of confounders and mediators. We propose to use latent class growth analysis to classify individuals into a few latent classes based on their medication adherence pattern, then choose a working marginal structural model that relates the outcome to these groups. The parameter of interest is defined as a projection of the true marginal structural model onto the chosen working model. Simulation studies are used to illustrate our approach and compare it with unadjusted, baseline covariates adjusted, time-varying covariates adjusted, and inverse probability of trajectory groups weighted adjusted models. Our proposed approach yielded estimators with little or no bias and appropriate coverage of confidence intervals in these simulations. We applied our latent class growth analysis and marginal structural model approach to a database comprising information on 52,790 individuals from the province of Quebec, Canada, aged more than 65 and who were statin initiators to estimate the effect of statin-usage trajectories on a first cardiovascular event.

Funder

Canadian Institutes of Health Research

Publisher

SAGE Publications

Subject

Health Information Management,Statistics and Probability,Epidemiology

Reference38 articles.

1. WHO. Cardiovascular diseases (CVDs), 2019. https://www.who.int/news-room/fact-sheets/detail/the-top-10-causes-of-death.

2. Statins for the primary prevention of cardiovascular disease

3. Statins for Primary Prevention in Older Adults-Moving Toward Evidence-Based Decision-Making

4. Medication Adherence: WHO Cares?

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