Pacławski Adam, Szlęk Jakub, Lau Raymond, Jachowicz Renata, Mendyk Aleksander
Department of Pharmaceutical Technology and Biopharmaceutics, Jagiellonian University Medical College, Kraków, Poland.
School of Chemical and Biomedical Engineering, College of Engineering, Nanyang Technological University, Singapore.
Int J Nanomedicine. 2015 Jan 21;10:801-10. doi: 10.2147/IJN.S75758. eCollection 2015.
In vitro study of the deposition of drug particles is commonly used during development of formulations for pulmonary delivery. The assay is demanding, complex, and depends on: properties of the drug and carrier particles, including size, surface characteristics, and shape; interactions between the drug and carrier particles and assay conditions, including flow rate, type of inhaler, and impactor. The aerodynamic properties of an aerosol are measured in vitro using impactors and in most cases are presented as the fine particle fraction, which is a mass percentage of drug particles with an aerodynamic diameter below 5 μm. In the present study, a model in the form of a mathematical equation was developed for prediction of the fine particle fraction. The feature selection was performed using the R-environment package "fscaret". The input vector was reduced from a total of 135 independent variables to 28. During the modeling stage, techniques like artificial neural networks, genetic programming, rule-based systems, and fuzzy logic systems were used. The 10-fold cross-validation technique was used to assess the generalization ability of the models created. The model obtained had good predictive ability, which was confirmed by a root-mean-square error and normalized root-mean-square error of 4.9 and 11%, respectively. Moreover, validation of the model using external experimental data was performed, and resulted in a root-mean-square error and normalized root-mean-square error of 3.8 and 8.6%, respectively.
在肺部给药制剂的研发过程中,通常会进行药物颗粒沉积的体外研究。该测定要求高、过程复杂,且取决于:药物和载体颗粒的性质,包括大小、表面特性和形状;药物与载体颗粒之间的相互作用以及测定条件,包括流速、吸入器类型和撞击器。气溶胶的空气动力学特性在体外使用撞击器进行测量,在大多数情况下,以细颗粒分数表示,即空气动力学直径小于5μm的药物颗粒的质量百分比。在本研究中,开发了一个数学方程形式的模型来预测细颗粒分数。使用R环境包“fscaret”进行特征选择。输入向量从总共135个自变量减少到28个。在建模阶段,使用了人工神经网络、遗传编程、基于规则的系统和模糊逻辑系统等技术。采用10折交叉验证技术评估所创建模型的泛化能力。所获得的模型具有良好的预测能力,均方根误差和归一化均方根误差分别为4.9%和11%,这证实了该能力。此外,使用外部实验数据对模型进行了验证,均方根误差和归一化均方根误差分别为3.8%和8.6%。