Zhang Zheng, Zhang Bolun, Chen Ren, Zhang Qian, Wang Kangjun
College of Chemical Engineering, Shenyang University of Chemical Technology, Shenyang 110142, China.
School of Software, Dalian University of Technology, Dalian 116620, China.
Pharmaceutics. 2025 Apr 14;17(4):513. doi: 10.3390/pharmaceutics17040513.
The accurate prediction of drug release profiles from Poly (lactic-co-glycolic acid) (PLGA)-based drug delivery systems is a critical challenge in pharmaceutical research. Traditional methods, such as the Korsmeyer-Peppas and Weibull models, have been widely used to describe in vitro drug release kinetics. However, these models are limited by their reliance on fixed mathematical forms, which may not capture the complex and nonlinear nature of drug release behavior in diverse PLGA-based systems. In response to these limitations, we propose a novel approach-DrugNet, a data-driven model based on a multilayer perceptron (MLP) neural network, aiming to predict the drug release data at unknown time points by fitting release curves using the key physicochemical characteristics of PLGA carriers and drug molecules, as well as in vitro drug release data. We establish a dataset through a literature review, and the model is trained and validated to determine its effectiveness in predicting different drug release curves. Compared to the traditional Korsmeyer-Peppas and Weibull semi-empirical models, the MSE of DrugNet decreases by 20.994 and 1.561, respectively, and (R2) increases by 0.036 and 0.005. These results demonstrate that DrugNet has a stronger ability to fit drug release curves and better capture nonlinear relationships in drug release data. It can deal with the nonlinear change of data better, has stronger adaptability and advantages than traditional models, and overcomes the limitations of the mathematical expressions in traditional models.
准确预测基于聚乳酸-乙醇酸共聚物(PLGA)的药物递送系统的药物释放曲线是药物研究中的一项关键挑战。传统方法,如Korsmeyer-Peppas模型和Weibull模型,已被广泛用于描述体外药物释放动力学。然而,这些模型受限于其对固定数学形式的依赖,可能无法捕捉不同基于PLGA的系统中药物释放行为的复杂和非线性性质。针对这些局限性,我们提出了一种新方法——DrugNet,一种基于多层感知器(MLP)神经网络的数据驱动模型,旨在通过利用PLGA载体和药物分子的关键物理化学特性以及体外药物释放数据拟合释放曲线,来预测未知时间点的药物释放数据。我们通过文献综述建立了一个数据集,并对该模型进行训练和验证,以确定其在预测不同药物释放曲线方面的有效性。与传统的Korsmeyer-Peppas模型和Weibull半经验模型相比,DrugNet的均方误差(MSE)分别降低了20.994和1.561,决定系数(R2)分别提高了0.036和0.005。这些结果表明,DrugNet具有更强的拟合药物释放曲线的能力,能更好地捕捉药物释放数据中的非线性关系。它能更好地处理数据的非线性变化,比传统模型具有更强的适应性和优势,克服了传统模型中数学表达式的局限性。