Methods Inf Med 2012; 51(02): 138-143
DOI: 10.3414/ME11-01-0043
Original Articles
Schattauer GmbH

Influence of Selection Bias on the Test Decision

A Simulation Study
M. Tamm
1   Department of Medical Statistics, RWTH Aachen University, Aachen, Germany
,
E. Cramer
2   Institute of Statistics, RWTH Aachen University, Aachen, Germany
,
L. N. Kennes
1   Department of Medical Statistics, RWTH Aachen University, Aachen, Germany
,
N. Heussen
1   Department of Medical Statistics, RWTH Aachen University, Aachen, Germany
› Author Affiliations
Further Information

Publication History

received:18 May 2011

accepted:09 September 2011

Publication Date:
19 January 2018 (online)

Summary

Background: Selection bias arises in clinical trials by reason of selective assignment of patients to treatment groups. Even in randomized clinical trials with allocation concealment this phenomenon can occur if future assignments can be predicted due to knowledge of former allocations.

Objectives: Considering unmasked randomized clinical trials with allocation concealment the impact of selection bias on type I error rate under permuted block randomization is investigated. We aimed to extend the existing research into this topic by including practical assumptions concerning misclassification of patient characteristics to get an estimate of type I error close to clinical routine. To establish an upper bound for the type I error rate different biasing strategies of the investigator are compared first. In addition, the aspect of patient availability is considered.

Methods: To evaluate the influence of selection bias on type I error rate under several practical situations, different block sizes, selection effects, biasing strategies and success rates of patient classification were simulated using SAS.

Results: Type I error rate exceeds 5 percent significance level; it reaches values up to 21 percent. More cautious biasing strategies and misclassification of patient characteristics may diminish but cannot eliminate selection bias. The number of screened patients is about three times larger than the needed number for the trial.

Conclusions: Even in unmasked randomized clinical trials using permuted block randomization with allocation concealment the influence of selection bias must not be disregarded evaluating the test decision. It should be incorporated when designing and reporting a clinical trial.

 
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