Phuvamin Suriyaamporn, Boonnada Pamornpathomkul, Pawaris Wongprayoon, T. Rojanarata, T. Ngawhirunpat, P. Opanasopit
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The concentration of stearic acid was identified as a crucial factor influencing PG-SLN physicochemical properties, impacting particle size (PS), polydispersity index (PDI), zeta potential (ZP), and %drug loading (%DL). Optimal conditions for PS, PDI, ZP, and %DL were identified. DoE revealed acceptable values across multiple runs, and the ANN model demonstrates high prediction accuracy, surpassing Response Surface Methodology (RSM). The selected PG-SLN formulation was tested for transdermal drug delivery, showing improved permeation compared to PG suspension. Loading with limonene further enhances transdermal drug delivery, attributed to limonene’s role as a penetration enhancer. Moreover, the selected PG-SLN formulation was found to be safe and non-toxic to neuronal cells. The combination of DoE and ANN was proposed to enhance predictive ability. 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引用次数: 0
摘要
人工智能(AI)的应用有可能彻底改变纳米药物的配方开发。本研究调查了通过乳化-超声处理制备的黄体酮负载固脂纳米粒子(PG-SLNs)的理化特性,重点是通过实验设计(DoE)和人工神经网络(ANN)证明这种受控制备方法的功效。利用 DoE 探索了关键的质量因素,包括硬脂酸、中链甘油三酯 (MCT)、Pluronic F-127 和丙二醇 (PG) 的用量,以简化实验设置。硬脂酸的浓度被认为是影响 PG-SLN 理化特性的关键因素,会影响粒度(PS)、多分散指数(PDI)、Zeta 电位(ZP)和药物负载百分比(%DL)。确定了 PS、PDI、ZP 和 %DL 的最佳条件。在多次运行中,DoE 显示了可接受的值,ANN 模型显示了很高的预测准确性,超过了响应面方法(RSM)。对选定的 PG-SLN 配方进行了透皮给药测试,结果表明其渗透性比 PG 悬浮液更好。添加柠檬烯可进一步提高透皮给药效果,这归功于柠檬烯作为渗透促进剂的作用。此外,还发现所选的 PG-SLN 配方对神经细胞安全无毒。研究人员建议结合 DoE 和 ANN 来提高预测能力。这项研究突出了 PG-SLN 在透皮给药方面的潜力,强调了柠檬烯作为一种安全有效的增强剂的作用。在制药和生物医学领域应用人工智能工具改进预测建模的兴趣日渐浓厚,本研究为这一兴趣的增长做出了贡献。
The artificial intelligence and design of experiment assisted in the development of progesterone-loaded solid-lipid nanoparticles for transdermal drug delivery
The application of Artificial Intelligence (AI) has the potential to revolutionize the formulation development of nanomedicine. This study investigated the physicochemical characteristics of progesterone-loaded solid-lipid nanoparticles (PG-SLNs) produced through an emulsification–ultrasonication process, with a focus on demonstrating the efficacy of this controlled preparation method via the Design of Experiments (DoE) and Artificial Neural Networks (ANN). Critical quality factors, including stearic acid, medium chain triglycerides (MCT), Pluronic F-127, and the amount of propylene glycol (PG), were explored using DoE to streamline experimental setups. The concentration of stearic acid was identified as a crucial factor influencing PG-SLN physicochemical properties, impacting particle size (PS), polydispersity index (PDI), zeta potential (ZP), and %drug loading (%DL). Optimal conditions for PS, PDI, ZP, and %DL were identified. DoE revealed acceptable values across multiple runs, and the ANN model demonstrates high prediction accuracy, surpassing Response Surface Methodology (RSM). The selected PG-SLN formulation was tested for transdermal drug delivery, showing improved permeation compared to PG suspension. Loading with limonene further enhances transdermal drug delivery, attributed to limonene’s role as a penetration enhancer. Moreover, the selected PG-SLN formulation was found to be safe and non-toxic to neuronal cells. The combination of DoE and ANN was proposed to enhance predictive ability. This research highlights the potential of PG-SLNs in transdermal drug delivery, emphasizing the role of limonene as a safe and effective enhancer. The study contributes to the growing interest in applying AI tools in pharmaceutical and biomedical fields for improved predictive modeling.