Artificial neural network as an alternative to multiple regression analysis in optimizing formulation parmaeters of cytarabine liposomes

被引:7
作者
Narayanaswamy Subramanian
Archit Yajnik
Rayasa S. Ramachandra Murthy
机构
[1] M.S. University of Baroda,Department of Pharmacy, Faculty of Technology and Engineering
[2] M.S. University of Baroda,Department of Applied Mathematics, Faculty of Technology and Engineering
关键词
artificial neural network; contour plots; cytarabine liposomes; multiple regression; factorial design;
D O I
10.1208/pt050104
中图分类号
学科分类号
摘要
The objective of the study was to optimize the formulation parameters of cytarabine liposomes by using artificial neural networks (ANN) and multiple regression analysis using 33 factorial design (FD). As model formulations, 27 formulations were prepared. The formulation variables, drug (cytarabine)/lipid (phosphatidyl choline [PC] and cholesterol [Chol]) molar ratio (X1, PC/Chol in percentage ratio of total lipids (X2), and the volume of hydration medium, (X3) were selected as the independent variables; and the percentage drug entrapment (PDE) was selected as the dependent variable. A set of causal factors was used as tutorial data for ANN and fed into a computer. The optimization was performed by minimizing the generalized distance between the predicted values of each response and the optimized one that was obtained individually. In case of 33 factorial design, a second-order full-model polynomial equation and a reduced model were established by subjecting the transformed values of independent variables to multiple regression analysis, and contour plots were drawn using the equation. The optimization methods developed by both ANN and FD were validated by preparing another 5 liposomal formulations. The predetermined PDE and the experimental data were compared with predicted data by pairedt test, no statistically significant difference was observed. ANN showed less error compared with multiple regression analysis. These findings demonstrate that ANN provides more accurate prediction and is quite useful in the optimization of pharmaceutical formulations when compared with the multiple regression analysis method.
引用
收藏
相关论文
共 68 条
  • [1] Levison KK(1994)Formulation optimization of indomethacin gels containing a combination of three kinds of cyclic monoterpenes as percutaneous penetration enhancers J Pharm Sci. 83 1367-1372
  • [2] Takayama K(1991)Particle size design using computer optimization technique Drug Dev Ind Pharm. 17 471-483
  • [3] Isowa K(2000)Fomula optimization of theophylline controlled-release tablet based on artificial neural networks J Control Release 68 175-186
  • [4] Okaba K(1997)Multi-objective simultaneous optimization technique based on an artificial neural network in sustained release formulations J Control Release 49 11-20
  • [5] Nagai T(1991)Artificial neural network as a novel method to optimize pharmaceutical formulations Pharm Res. 16 1-6
  • [6] Shirakura O(1997)Multi-objective simultaneous optimization based on artificial neural network in a ketoprofen hydrogel formula containing O-ethylmenthol as a percutaneous absorption enhancer Int J Pharm. 158 203-210
  • [7] Yamada M(1995)Artificial neural networks: implications for pharmaceutical sciences Drug Dev Ind Pharm 21 119-155
  • [8] Hashimoto M(1984)Low dose cytosine arabinoside (Ara C) in myelodysplastic syndromes Br J Haematol 58 231-240
  • [9] Ishimaru S(1985)Low-dose cytosine arabinoside in the treatment of myelodysplastic syndromes and acute myelogenous leukemia Cancer 56 1001-1005
  • [10] Takayama K(1985)Low-dose cytosine arabinoside (Ara-C) therapy in myelodysplastic syndromes and acute leukemia J Cancer 56 443-449