We developed the quantative structure-property relationships (QSPRs) models to correlate the molecular structures of surfactant, cosurfactant, oil, and drug with the solubility of poorly water-soluble 2-aryl propionic acid nonsteroidal anti-inflammatory drugs (2-APA-NSAIDs) in self-emulsifying drug delivery systems (SEDDSs). The compositions were encoded with electronic, geometrical, topological, and quantum chemical descriptors. To obtain reliable predictions, we used multiple linear regression (MLR) and artificial neural network (ANN) methods for model development. The obtained equations were validated using a test set of 42 formulations and showed a great predictive power, and linear models were found to be better than nonlinear ones. The obtained QSPR models would greatly facilitate fast screening for the optimal formulations of SEDDS at the early stage of drug development and minimize experimental effort. Copyright © 2011 Chen-Wen Li et al.
CITATION STYLE
Li, C. W., Yang, S. Y., He, R., Tao, W. J., & Yin, Z. N. (2011). Development of quantitative structure-property relationship models for self-emulsifying drug delivery system of 2-aryl propionic acid NSAIDs. Journal of Nanomaterials, 2011. https://doi.org/10.1155/2011/206320
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