Penalized Poisson model for network meta-analysis of individual patient time-to-event data
Edouard Ollier, Pierre Blanchard, Gw\'ena\"el Le Teuff, Stefan, Michiels

TL;DR
This paper introduces a penalized Poisson regression model for network meta-analysis of individual patient time-to-event data, improving computational efficiency and accounting for heterogeneity in treatment effect analysis.
Contribution
It proposes a fixed-effect penalized Poisson model for IPD NMA, addressing computational challenges and enabling better covariate and heterogeneity handling.
Findings
Effective in simulated data for heterogeneity consideration
Applied successfully to nasopharyngeal carcinoma survival data
Shared implementation code for reproducibility
Abstract
Network meta-analysis (NMA) allows the combination of direct and indirect evidence from a set of randomized clinical trials. Performing NMA using individual patient data (IPD) is considered as a "gold standard" approach as it provides several advantages over NMA based on aggregate data. For example, it allows to perform advanced modelling of covariates or covariate-treatment interactions. An important issue in IPD NMA is the selection of influential parameters among terms that account for inconsistency, covariates, covariate-by-treatment interactions or non-proportionality of treatments effect for time to event data. This issue has not been deeply studied in the literature yet and in particular not for time-to-event data. A major difficulty is to jointly account for between-trial heterogeneity which could have a major influence on the selection process. The use of penalized generalized…
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