Confidence Interval Criteria for Assessment of Dose Proportionality

The aim of this work was a pragmatic, statistically sound and clinically relevant approach to dose-proportionality analyses that is compatible with common study designs. Statistical estimation is used to derive a (1-alpha)% confidence interval (CI) for the ratio of dose-normalized, geometric mean va...

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Published inPharmaceutical research Vol. 17; no. 10; pp. 1278 - 1283
Main Authors Smith, Brian P., Vandenhende, Francois R., DeSante, Karl A., Farid, Nagy A., Welch, Pamela A., Callaghan, John T., Forgue, S. Thomas
Format Journal Article
LanguageEnglish
Published New York, NY Springer 01.10.2000
Springer Nature B.V
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Summary:The aim of this work was a pragmatic, statistically sound and clinically relevant approach to dose-proportionality analyses that is compatible with common study designs. Statistical estimation is used to derive a (1-alpha)% confidence interval (CI) for the ratio of dose-normalized, geometric mean values (Rdnm) of a pharmacokinetic variable (PK). An acceptance interval for Rdnm defining the clinically relevant, dose-proportional region is established a priori. Proportionality is declared if the CI for Rdnm is completely contained within the critical region. The approach is illustrated with mixed-effects models based on a power function of the form PK = beta0 x Dose(beta1); however, the logic holds for other functional forms. It was observed that the dose-proportional region delineated by a power model depends only on the dose ratio. Furthermore, a dose ratio (rho1) can be calculated such that the CI lies entirely within the pre-specified critical region. A larger ratio (rho2) may exist such that the CI lies completely outside that region. The approach supports inferences about the PK response that are not constrained to the exact dose levels studied. The proposed method enhances the information from a clinical dose-proportionality study and helps to standardize decision rules.
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ISSN:0724-8741
1573-904X
DOI:10.1023/A:1026451721686