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Bias and sensitivity analysis when estimating treatment effects from the cox model with omitted covariates
Abstract
This is the final version of the article. Available from the publisher via the DOI in this record.Omission of relevant covariates can lead to bias when estimating treatment or exposure effects from survival data in both randomized controlled trials and observational studies. This paper presents a general approach to assessing bias when covariates are omitted from the Cox model. The proposed method is applicable to both randomized and non-randomized studies. We distinguish between the effects of three possible sources of bias: omission of a balanced covariate, data censoring and unmeasured confounding. Asymptotic formulae for determining the bias are derived from the large sample properties of the maximum likelihood estimator. A simulation study is used to demonstrate the validity of the bias formulae and to characterize the influence of the different sources of bias. It is shown that the bias converges to fixed limits as the effect of the omitted covariate increases, irrespective of the degree of confounding. The bias formulae are used as the basis for developing a new method of sensitivity analysis to assess the impact of omitted covariates on estimates of treatment or exposure effects. In simulation studies, the proposed method gave unbiased treatment estimates and confidence intervals with good coverage when the true sensitivity parameters were known. We describe application of the method to a randomized controlled trial and a non-randomized study.We thank Prof. Robin Henderson for providing the leukaemia and deprivation data. We are grateful for the helpful comments of the editor, associate editor and two referees. This research was funded by the Medical Research Council [grant number G0902158]. William Henley and Stuart Logan were supported by the National Institute for Health Research (NIHR) Collaboration for Leadership in Applied Health Research and Care (CLAHRC) for the South West Peninsula. The views expressed in this publication are those of the authors and not necessarily those of the NHS, the NIHR or the Department of Health- Article
- Bias analysis
- Cox model
- Omitted covariates
- Sensitivity analysis
- Survival analysis
- Unmeasured confounding
- Bias (Epidemiology)
- Data Interpretation, Statistical
- Down Syndrome
- Humans
- Likelihood Functions
- Outcome Assessment (Health Care)
- Prevalence
- Proportional Hazards Models
- Reproducibility of Results
- Risk Factors
- Sample Size
- Sensitivity and Specificity
- Survival Analysis
- Treatment Outcome
- United States