Affiliation:
1. Hemofarm A.D. Vršac
2. Faculty of Pharmacy, Belgrade
3. Institute of Otorhinolaryngology, Clinical Center of Serbia, Belgrade
Abstract
This article presents the possibility of using of multiple regression
analysis (MRA) and dynamic neural network (DNN) for prediction of stability
of Hydrocortisone 100 mg (in a form of hydrocortisone sodium succinate)
freeze-dried powder for injection packed into a dual chamber container.
Degradation products of hydrocortisone sodium succinate: free hydrocortisone
and related substances (impurities A, B, C, D and E; unspecified impurities
and total impurities) were followed during stress and formal stability
studies. All data obtained during stability studies were used for in silico
modeling; multiple regression models and dynamic neural networks as well, in
order to compare predicted and observed results. High values of coefficient
of determination (0.950.99) were gained using MRA and DNN, so both methods
are powerful tools for in silico stability studies, but superiority of DNN
over mathematical modeling of degradation was also confirmed.
Publisher
National Library of Serbia
Subject
General Chemical Engineering,General Chemistry
Cited by
4 articles.
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