Department of Pharmaceutical Technology and Biopharmaceutics, Jagiellonian University Medical College, Krakow, Poland.
School of Chemical and Biomedical Engineering, Nanyang Technological University (NTU), Singapore.
Int J Nanomedicine. 2013;8:4601-11. doi: 10.2147/IJN.S53364. Epub 2013 Dec 3.
Dissolution of protein macromolecules from poly(lactic-co-glycolic acid) (PLGA) particles is a complex process and still not fully understood. As such, there are difficulties in obtaining a predictive model that could be of fundamental significance in design, development, and optimization for medical applications and toxicity evaluation of PLGA-based multiparticulate dosage form. In the present study, two models with comparable goodness of fit were proposed for the prediction of the macromolecule dissolution profile from PLGA micro- and nanoparticles. In both cases, heuristic techniques, such as artificial neural networks (ANNs), feature selection, and genetic programming were employed. Feature selection provided by fscaret package and sensitivity analysis performed by ANNs reduced the original input vector from a total of 300 input variables to 21, 17, 16, and eleven; to achieve a better insight into generalization error, two cut-off points for every method was proposed. The best ANNs model results were obtained by monotone multi-layer perceptron neural network (MON-MLP) networks with a root-mean-square error (RMSE) of 15.4, and the input vector consisted of eleven inputs. The complicated classical equation derived from a database consisting of 17 inputs was able to yield a better generalization error (RMSE) of 14.3. The equation was characterized by four parameters, thus feasible (applicable) to standard nonlinear regression techniques. Heuristic modeling led to the ANN model describing macromolecules release profiles from PLGA microspheres with good predictive efficiency. Moreover genetic programming technique resulted in classical equation with comparable predictability to the ANN model.
蛋白质大分子从聚(乳酸-共-乙醇酸)(PLGA)颗粒中的溶解是一个复杂的过程,目前仍不完全清楚。因此,很难获得一种预测模型,该模型对于设计、开发和优化基于 PLGA 的多颗粒剂型的医学应用和毒性评估具有重要意义。在本研究中,提出了两种具有可比性拟合优度的模型,用于预测 PLGA 微球和纳米球中大分子的溶解曲线。在这两种情况下,都使用了启发式技术,如人工神经网络(ANNs)、特征选择和遗传编程。fscaret 包提供的特征选择和通过 ANNs 进行的敏感性分析将原始输入向量从总共 300 个输入变量减少到 21、17、16 和 11 个;为了更好地了解泛化误差,为每种方法提出了两个截止点。最佳的 ANN 模型结果是由单调多层感知器神经网络(MON-MLP)获得的,均方根误差(RMSE)为 15.4,输入向量由 11 个输入组成。从由 17 个输入组成的数据库中导出的复杂经典方程能够产生更好的泛化误差(RMSE)14.3。该方程的特点是由四个参数组成,因此适用于标准的非线性回归技术。启发式建模导致 ANN 模型能够很好地预测 PLGA 微球中大分子的释放曲线。此外,遗传编程技术导致的经典方程与 ANN 模型具有可比的预测能力。