TY - JOUR AU - Ozdin, Deniz AU - Sharma, Naveen AU - Lujan-Zilbermann, Jorge AU - Colucci, Philippe AU - Kanfer, Isadore AU - Ducharme, Murray P. PY - 2018/11/08 Y2 - 2024/03/28 TI - Revisiting FDA’s 1995 Guidance on Bioequivalence Establishment of Topical Dermatologic Corticosteroids: New Research Based Recommendations JF - Journal of Pharmacy & Pharmaceutical Sciences JA - J Pharm Pharm Sci VL - 21 IS - 1 SE - Pharmaceutical Sciences; Original Research Articles DO - 10.18433/jpps30021 UR - https://journals.library.ualberta.ca/jpps/index.php/JPPS/article/view/30021 SP - 413-428 AB - <p><strong>Purpose</strong>: As per the US FDA guidance issued on June 2, 1995, the establishment of bioequivalence for topical dermatologic corticosteroids is based on comparing the pharmacodynamic (PD) effects of Test and Reference products at the dose duration corresponding to the population <em>ED50,</em> determined either by naïve pooled data or nonlinear mixed effect modeling (NLME). The guidance was introduced using a study case example where the expectation maximization (EM) NLME algorithm, as implemented in P-PHARM<sup>®</sup>, was used. Although EM methods are relatively common, other methods such as the First-Order Conditional Estimation (FOCE) as implemented in the NONMEM® software are even more common. The objective of this study was to investigate the impact of using different parametric population modeling/analysis methods and distribution assumptions on population analysis results. <strong>Methods: </strong>The dose duration-response data from 11 distinct skin blanching blinded pilot studies were fitted using FOCE (NONMEM®) and an EM algorithm (ADAPT5® (MLEM)). Three different <em>Emax</em> models were tested for each method. Population PD estimates and associated CV%, and the agreement between model predicted values and observed data were compared between the two methods. The impact of assuming different distributions of PD parameters was also investigated. <strong>Results: </strong>The simple <em>Emax</em> model, as proposed in the FDA guidance, appeared to best characterize the data compared to more complex alternatives. The MLEM method in general appeared to provide better results than FOCE; lower population PD estimates with less inter-individual variability, and no variance shrinkage issues. The results also favored ln-normal versus normal distribution assumptions. <strong>Conclusions</strong>: The population <em>ED50</em> estimates were influenced by both the type of population modeling methods and the distribution assumptions. We recommend updating the FDA guidance with more specific instructions related to the population approach to be used (EM-like versus FOCE-like methods) and to the normality assumptions that need to be set (ln-normal versus normal distribution).</p> ER -