| Literature DB >> 27405326 |
Yirui Hu1, Donald R Hoover1,2.
Abstract
Randomized stepped-wedge (R-SW) designs are increasingly used to evaluate interventions targeting continuous longitudinal outcomes measured at T-fixed time points. Typically, all units start out untreated, and randomly chosen units switch to intervention at sequential time points until all receive intervention. As randomization is not always feasible, non-randomized stepped-wedge (NR-SW) designs (units switching to intervention are not randomly chosen) have attracted researchers. We develop an orthogonlized generalized least squares framework for both R-SW and NR-SW designs. The variance of the intervention effect estimate depends on the number of steps ( S), length of step sizes ( ts), and number of units ( ns) switched at each step ( s=1,…, S). If all other design parameters are equal, this variance is higher for the NR-SW than for the equivalent R-SW design (particularly if the intercepts of non-randomly stepped switching strata are analyzed as fixed effects). We focus on balanced stepped-wedge (BR-SW, BNR-SW) designs (where ts and ns remain constant across s) to obtain insights into optimality for variance of the estimated intervention effect. As previously observed for the BR-SW, the optimal choice for number of time points at each step is also [Formula: see text] for the BNR-SW. In our examples, when compared to BR-SW designs, equivalent BNR-SW designs even with intercepts of non-randomly stepped switching strata analyzed using fixed effects sacrifice little efficiency given an intra-unit repeated measure correlation [Formula: see text]. Compared to traditional difference-in-differences designs, optimal BNR-SW designs are more efficient with the ratio of variances of these designs converging to 0.75 when T > 10. We illustrate these findings using longitudinal outcomes in long-term care facilities.Entities:
Keywords: Non-randomized stepped-wedge; compound symmetry covariance approximation; fixed and random effects; optimal design; orthogonalized least squares; power and sample size estimation
Mesh:
Year: 2016 PMID: 27405326 PMCID: PMC5225259 DOI: 10.1177/0962280216657852
Source DB: PubMed Journal: Stat Methods Med Res ISSN: 0962-2802 Impact factor: 3.021