Design of experiment (DoE) as a quality by design (QbD) tool to optimise formulations of lipid nanoparticles for nose-to-brain drug delivery.

Expert opinion on drug delivery Pub Date : 2023-07-01 Epub Date: 2023-12-29 DOI:10.1080/17425247.2023.2274902
A C Correia, J N Moreira, J M Sousa Lobo, A C Silva
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Abstract

Introduction: The nose-to-brain route has been widely investigated to improve drug targeting to the central nervous system (CNS), where lipid nanoparticles (solid lipid nanoparticles - SLN and nanostructured lipid carriers - NLC) seem promising, although they should meet specific criteria of particle size (PS) <200 nm, polydispersity index (PDI) <0.3, zeta potential (ZP) ~|20| mV and encapsulation efficiency (EE) >80%. To optimize SLN and NLC formulations, design of experiment (DoE) has been recommended as a quality by design (QbD) tool.

Areas covered: This review presents recently published work on the optimization of SLN and NLC formulations for nose-to-brain drug delivery. The impact of different factors (or independent variables) on responses (or dependent variables) is critically analyzed.

Expert opinion: Different DoEs have been used to optimize SLN and NLC formulations for nose-brain drug delivery, and the independent variables lipid and surfactant concentration and sonication time had the greatest impact on the dependent variables PS, EE, and PDI. Exploring different DoE approaches is important to gain a deeper understanding of the factors that affect successful optimization of SLN and NLC and to facilitate future work improving machine learning techniques.

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实验设计(DoE)作为一种设计质量(QbD)工具,用于优化鼻脑给药的脂质纳米颗粒配方。
引言:鼻脑途径已被广泛研究,以改善药物对中枢神经系统(CNS)的靶向性,其中脂质纳米颗粒(固体脂质纳米颗粒-SLN和纳米结构脂质载体-NLC)似乎很有前景,尽管它们应该满足粒径(PS)<200的特定标准 nm,多分散指数(PDI)<0.3,ζ电位(ZP)~|20mV,包封效率(EE)>80%。为了优化SLN和NLC配方,建议将实验设计(DoE)作为设计质量(QbD)工具。涵盖的领域:这篇综述介绍了最近发表的关于鼻脑给药的SLN和NLC配方优化的工作。对不同因素(或自变量)对反应(或因变量)的影响进行了批判性分析。专家意见:不同的DoE已被用于优化鼻脑给药的SLN和NLC配方,自变量脂质和表面活性剂浓度以及超声处理时间对因变量PS、EE和PDI的影响最大。探索不同的DoE方法对于更深入地了解影响SLN和NLC成功优化的因素以及促进未来改进机器学习技术的工作非常重要。
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