| Literature DB >> 35436970 |
Tim P Morris1,2, A Sarah Walker3, Elizabeth J Williamson4, Ian R White3.
Abstract
BACKGROUND: It has long been advised to account for baseline covariates in the analysis of confirmatory randomised trials, with the main statistical justifications being that this increases power and, when a randomisation scheme balanced covariates, permits a valid estimate of experimental error. There are various methods available to account for covariates but it is not clear how to choose among them.Entities:
Keywords: Clinical trials; Covariate adjustment; Estimands; Inverse probability of treatment weighting; Missing data; Randomised controlled trials; Standardisation
Mesh:
Year: 2022 PMID: 35436970 PMCID: PMC9014627 DOI: 10.1186/s13063-022-06097-z
Source DB: PubMed Journal: Trials ISSN: 1745-6215 Impact factor: 2.728
Some population-level summaries commonly used in clinical trials with binary outcome measures
| Outcome type | Summary measures | Collapsible?* |
|---|---|---|
| Continuous | Mean difference | Yes |
| Binary | Risk difference | Yes |
| Risk ratio | Yes | |
| Odds ratio | No | |
| Time-to-event | Hazard ratio | No |
| Restricted mean survival time difference | Yes |
*Do conditional and marginal summary measures always coincide?
An illustration of non-collapsibility of the odds ratio
| Stratum | ||||||
|---|---|---|---|---|---|---|
| A | B | Both | ||||
| Allocation | Dead | Alive | Dead | Alive | Dead | Alive |
| Intervention | 9 | 1 | 5 | 5 | 14 | 6 |
| Control | 5 | 5 | 1 | 9 | 6 | 14 |
| Odds ratio | 9 | 9 | 5.4 | |||
Fig. 1Upper panel: Data from four notional trials where individuals recruited have different distributions of X. The two quadratic curves show the data in the two arms. Lower panel: SE after no adjustment and after linear adjustment for each of the three trials
Results of analyses of the GetTested trial. All models included main effects only. Link function is canonical unless otherwise specified. The dash symbol - means model did not converge, except for * where the log risk ratio estimated as 541, indicating separation for one or more covariates
| Outcome measure | Summary measure | Adjustment method | Model (variable modelled) | Treatment effect estimate (SE) |
|---|---|---|---|---|
| Any test (occurred in 35%) | Risk difference | Direct | Identity-link binomial (outcome) | - |
| Standardisation | Logistic (outcome) | 0.260 (0.021) | ||
| IPTW | Logistic (treatment) | 0.262 (0.021) | ||
| Log risk ratio | Direct | Poisson, robust SE (outcome) | -* | |
| Direct | Log-link binomial (outcome) | 0.797 (0.075) | ||
| Standardisation | Logistic (outcome) | 0.796 (0.074) | ||
| IPTW | Logistic (treatment) | 0.806 (0.075) | ||
| Any diagnosis (occurred in 1.6%) | Risk difference | Direct | Identity-link binomial (outcome) | - |
| Standardisation | Logistic (outcome) | 0.015 (0.006) | ||
| IPTW | Logistic (treatment) | 0.013 (0.006) | ||
| Log risk ratio | Direct | Poisson, robust SE (outcome) | 0.972 (0.433) | |
| Direct | Log-link binomial (outcome) | 0.915 (0.412) | ||
| Standardisation | Logistic (outcome) | 0.959 (0.412) | ||
| IPTW | Logistic (treatment) | 0.855 (0.412) |
Points to consider on properties of each approach
| Issue | Direct adjustment | Standardisation | Inverse probability weighting |
|---|---|---|---|
| Estimand for non-collapsible summary measures | Conditional | Marginal | Marginal |
| For non-collapsible summary measures, true | Covariates conditioned on in outcome model | In-trial distribution of covariates | In-trial distribution of covariates |
| Misspecification of covariate effects | Loses efficiency vs. correctly specified model but expected to gain vs. no adjustment. True | Loses efficiency vs. correctly specified model but expected to gain vs. no adjustment | Loses efficiency vs. correctly specified model but expected to gain vs. no adjustment |
| Convergence | Vulnerable | Reasonable (but see | Solid |
| Stratification/minimisation handled by variance estimator | Yes | Yes | Yes |
| Efficiency | Asymptotically optimal | Asymptotically optimal | Asymptotically optimal |
| Standard error calculation | Direct | Delta method | Robust, accounting for estimation of weights via joint estimating equations. Standard error can be biased downwards in small samples [ |
| Treatment–covariate interactions | Can be fitted but does not produce an estimate of an average treatment effect | Naturally handled this and produces an estimate of the average treatment effect | Does not handle |
| Handling of missing covariate data in order to target all-randomised population | Missing indicator or single mean imputation (though neither is suitable with non-collapsible population summary measures) | Missing indicator or single mean imputation | Missing indicator or single mean imputation |
| Handling of missing outcome data in order to target all-randomised population | Multiple imputation by-arm (or inverse probability of missingness weighting) | Standardisation to all-randomised rather than complete-case sample; alternatively multiple imputation by-arm or inverse probability of missingness weighting | Inverse probability of missingness weighting (or multiple imputation by-arm) |
a) Full data from a notional randomised trial. b) Complete cases, where all individuals with X=0 and half of individuals with X=1 are complete cases. c) True value of summary measure within levels of X
Summary of the true value of the estimand in all randomised and among the complete cases under covariate-dependent missingness
| Summary measure | All-randomised | Complete cases |
|---|---|---|
| Conditional odds ratio | 0.670 | 0.679 |
| Marginal odds ratio | 0.698 | 0.700 |
| Risk ratio | 0.748 | 0.761 |
| Risk difference | −0.056 | −0.064 |
*This method is possible with complete X and incomplete Y
Appendix 2: Results of analyses of the GetTested trial targeting the all-randomised population. All models included main effects only. Link function is canonical unless otherwise specified. The dash symbol - means model did not converge, with reasons described in the text of Appendix 2
| Outcome measure | Summary measure | Adjustment method | Model (variable modelled) | Treatment effect estimate (SE) |
|---|---|---|---|---|
| Any test (occurred in 35%) | Risk difference | Direct | Identity-link binomial (outcome) | - |
| Standardisation | Logistic (outcome) | 0.258 (0.021)* | ||
| IPTW | Logistic (treatment) | 0.259 (0.021) | ||
| Log risk ratio | Direct | Poisson, robust SE (outcome) | 0.804 (0.069) | |
| Direct | Log-link binomial (outcome) | - | ||
| Standardisation | Logistic (outcome) | 0.799 (0.075)* | ||
| IPTW | Logistic (treatment) | 0.802 (0.075) | ||
| Any diagnosis (occurred in 1.6%) | Risk difference | Direct | Identity-link binomial (outcome) | - |
| Standardisation | Logistic (outcome) | - | ||
| IPTW | Logistic (treatment) | 0.013 (0.006) | ||
| Log risk ratio | Direct | Poisson, robust SE (outcome) | - | |
| Direct | Identity-link binomial (outcome) | - | ||
| Standardisation | Logistic (outcome) | - | ||
| IPTW | Logistic (treatment) | 0.866 (0.414) |
*Almost-all-randomised. Estimate was returned only after omitting four participants affected by collinearity