Predicting the API partitioning between lipid-based drug delivery systems and water.

Int J Pharm

TU Dortmund University, Laboratory of Thermodynamics, Emil-Figge-Str. 70, D-44227 Dortmund, Germany. Electronic address:

Published: February 2021

AI Article Synopsis

  • Partitioning tests in water measure how an active pharmaceutical ingredient (API) behaves between a lipid-based drug delivery system (LBDDS) and water, which is crucial for pharmaceutical formulation development.
  • The study utilized Perturbed-Chain Statistical Associating Fluid Theory (PC-SAFT) for in-silico predictions of API partitioning and validated these predictions through experimental methods, examining combinations of cinnarizine or ibuprofen with other components.
  • It explored the effects of different mixing ratios and excipients on API partitioning, demonstrating that PC-SAFT effectively predicts API behavior, helping to select suitable LBDDS formulations and prevent API crystallization.

Article Abstract

Partitioning tests in water are early-stage standard experiments during the development of pharmaceutical formulations, e.g. of lipid-based drug delivery system (LBDDS). The partitioning behavior of the active pharmaceutical ingredient (API) between the fatty phase and the aqueous phase is a key property, which is supposed to be determined by those tests. In this work, we investigated the API partitioning between LBDDS and water by in-silico predictions applying the Perturbed-Chain Statistical Associating Fluid Theory (PC-SAFT) and validated these predictions experimentally. The API partitioning was investigated for LBDDS comprising up to four components (cinnarizine or ibuprofen with tricaprylin, caprylic acid, and ethanol). The influence of LBDDS/water mixing ratios from 1/1 up to 1/200 (w/w) as well as the influence of excipients on the API partitioning was studied. Moreover, possible API crystallization upon mixing the LBDDS with water was predicted. This work showed that PC-SAFT is a strong tool for predicting the API partitioning behavior during in-vitro tests. Thus, it allows rapidly assessing whether or not a specific LBDDS might be a promising candidate for further in-vitro tests and identifying the API load up to which API crystallization can be avoided.

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Source
http://dx.doi.org/10.1016/j.ijpharm.2021.120266DOI Listing

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