Bayesian topics in biostatistics : treatment selection, sample size, power, and misclassification.

Date

2011-12

Authors

Doty, Tave Parker.

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Worldwide access.
Access changed 5/21/14.

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Abstract

Bayesian methodology is implemented to investigate three problems in biostatistics. The first problem considers using biomarkers to select optimal treatments for individual patients. A Bayesian adaptation of the selection impact (SI) curve developed by Pepe and Song (2004) is investigated. The second problem considers a Bayesian approach for determining specific sample sizes to achieve a desired range of power for fixed-dose combination drug trials. Sidik and Jonkman (2003) developed a sample size formula using the intersection-union test for testing the efficacy of combination drugs. Our results are compared to their frequentist approach. The third problem considers response misclassification in fixed-dose combination drug trials under two scenarios: when the sensitivity and specificity are known, and when the sensitivity and specificity are unknown but have specified informative prior structures.

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Keywords

Bayesian statistics., Biomarkers., Combination drugs., Treatment selection., Sample size., Power., Misclassification.

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