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首页> 外文期刊>Hemijska industrija >In silico methods in stability testing of hydrocortisone, powder for injections: Multiple regression analysis versus dynamic neural network
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In silico methods in stability testing of hydrocortisone, powder for injections: Multiple regression analysis versus dynamic neural network

机译:注射用氢化可的松,粉末稳定性测试的计算机方法:多元回归分析与动态神经网络

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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.
机译:本文介绍了使用多元回归分析(MRA)和动态神经网络(DNN)预测100 mg氢化可的松(琥珀酸氢化可的松的形式)冷冻干燥粉末的稳定性的方法,该粉末用于双腔包装。在压力和形式稳定性研究中,跟踪了氢化可的松琥珀酸钠的降解产物:游离氢化可的松和相关物质(杂质A,B,C,D和E;未指定的杂质和总杂质)。在稳定性研究过程中获得的所有数据都用于计算机模拟。多元回归模型和动态神经网络,以比较预测结果和观察结果。使用MRA和DNN获得了较高的测定系数值(0.950.99),因此这两种方法都是进行计算机稳定性研究的有力工具,但也证实了DNN优于降解数学模型。

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