TL;DR
This paper introduces novel, less assumption-dependent analysis methods for stepped wedge cluster randomized trials, enhancing robustness and power compared to traditional model-based approaches.
Contribution
It proposes non-parametric and hybrid methods, including synthetic control and within-cluster crossover techniques, to improve analysis robustness and power in SW-CRTs.
Findings
Methods improve robustness to model misspecification
Hybrid approaches enhance statistical power
Simulations demonstrate effectiveness in various settings
Abstract
Stepped wedge cluster randomized trials (SW-CRTs) have become increasingly popular and are used for a variety of interventions and outcomes, often chosen for their feasibility advantages. SW-CRTs must account for time trends in the outcome because of the staggered rollout of the intervention inherent in the design. Robust inference procedures and non-parametric analysis methods have recently been proposed to handle such trends without requiring strong parametric modeling assumptions, but these are less powerful than model-based approaches. We propose several novel analysis methods that reduce reliance on modeling assumptions while preserving some of the increased power provided by the use of mixed effects models. In one method, we use the synthetic control approach to find the best matching clusters for a given intervention cluster. This approach can improve the power of the analysis…
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