Al Hagbani Turki, Alamoudi Jawaher Abdullah, Bajaber Majed A, Alsayed Huda Ibrahim, Al-Fanhrawi Halah Jawad
Department of Pharmaceutics, College of Pharmacy, University of Hail, Hail, 81442, Saudi Arabia.
Saudi Food and Drug Authority, Drug Sector, Riyadh, Saudi Arabia.
Sci Rep. 2025 Jan 6;15(1):948. doi: 10.1038/s41598-024-84155-z.
This study investigates the application of various neural network-based models for predicting temperature distribution in freeze drying process of biopharmaceuticals. For heat-sensitive biopharmaceutical products, freeze drying is preferred to prevent degradation of pharmaceutical compounds. The modeling framework is based on CFD (Computational Fluid Dynamics) and machine learning (ML). The ML models explored include the Single-Layer Perceptron (SLP), Multi-Layer Perceptron (MLP), Fully Connected Neural Network (FCNN), and Deep Neural Network (DNN). Model optimization is achieved through the Fireworks Algorithm (FWA). Results reveal promising performance across all models, with the MLP demonstrating the highest accuracy on both test and training datasets, achieving an R score of 0.99713 and 0.99717 respectively. The SLP also exhibits strong performance, with an R of 0.88903 on the test dataset. The FCNN and DNN models also perform admirably, achieving R scores of 0.99158 and 0.99639 on the test dataset respectively. These results highlight the efficiency of neural network-driven models, specifically the MLP, in precisely forecasting temperature values based on spatial coordinates. Additionally, the integration of the Fireworks Algorithm for model refinement yields advantages in improving the predictive performance of these models.
本研究探讨了各种基于神经网络的模型在预测生物制药冷冻干燥过程中温度分布方面的应用。对于热敏性生物制药产品,冷冻干燥是防止药物化合物降解的首选方法。建模框架基于计算流体动力学(CFD)和机器学习(ML)。所探索的ML模型包括单层感知器(SLP)、多层感知器(MLP)、全连接神经网络(FCNN)和深度神经网络(DNN)。通过烟花算法(FWA)实现模型优化。结果显示所有模型都具有良好的性能,MLP在测试数据集和训练数据集上均表现出最高的准确率,分别达到0.99713和0.99717的R分数。SLP也表现出强大的性能,在测试数据集上的R分数为0.88903。FCNN和DNN模型也表现出色,在测试数据集上的R分数分别为0.99158和0.99639。这些结果突出了神经网络驱动模型,特别是MLP,在基于空间坐标精确预测温度值方面的效率。此外,将烟花算法集成到模型优化中在提高这些模型的预测性能方面具有优势。