Bayesian sample size determination for diagnostic accuracy studies
Kevin J. Wilson, S. Faye Williamson, A. Joy Allen, Cameron J., Williams, Thomas P. Hellyer, B. Clare Lendrem

TL;DR
This paper introduces a Bayesian method for determining sample sizes in diagnostic accuracy studies that leverages prior data to reduce required sample sizes and improve reliability.
Contribution
It presents a novel Bayesian approach using assurance that incorporates prior information from analytical validity studies for sample size calculation in diagnostic accuracy research.
Findings
Reduces sample size compared to traditional methods
Provides more reliable sample size estimates
Demonstrates effectiveness through real-life application
Abstract
The development of a new diagnostic test ideally follows a sequence of stages which, amongst other aims, evaluate technical performance. This includes an analytical validity study, a diagnostic accuracy study and an interventional clinical utility study. Current approaches to the design and analysis of the diagnostic accuracy study can suffer from prohibitively large sample sizes and interval estimates with undesirable properties. In this paper, we propose a novel Bayesian approach which takes advantage of information available from the analytical validity stage. We utilise assurance to calculate the required sample size based on the target width of a posterior probability interval and can choose to use or disregard the data from the analytical validity study when subsequently inferring measures of test accuracy. Sensitivity analyses are performed to assess the robustness of the…
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Taxonomy
TopicsStatistical Methods and Bayesian Inference · Statistical Distribution Estimation and Applications · Advanced Statistical Process Monitoring
