Tzimou Konstantina, Catalán-Tatjer David, Nielsen Lars K, Lavado-García Jesús
The Novo Nordisk Foundation Center for Biosustainability, Technical University of Denmark, 2800 Kongens Lyngby, Denmark.
Australian Institute for Bioengineering and Nanotechnology, The University of Queensland, Brisbane, QLD 4072, Australia.
Mol Ther Methods Clin Dev. 2024 Aug 26;32(4):101329. doi: 10.1016/j.omtm.2024.101329. eCollection 2024 Dec 12.
Producing recombinant adeno-associated virus (rAAV) for gene therapy via triple transfection is an intricate process involving many cellular interactions. Each of the different elements encoded in the three required plasmids-pHelper, pRepCap, and pGOI-plays a distinct role, affecting different cellular pathways when producing rAAVs. The required expression balance emphasizes the critical need to fine-tune the concentration of all these different elements. The use of design of experiments (DOE) to find optimal ratios is a powerful method to streamline the process. However, the choice of the DOE method and design construction is crucial to avoid misleading results. In this work, we examined and compared four distinct DOE approaches: rotatable central composite design (RCCD), Box-Behnken design (BBD), face-centered central composite design (FCCD), and mixture design (MD). We compared the abilities of the different models to predict optimal ratios and interactions among the plasmids and the transfection reagent. Our findings revealed that blocking is essential to reduce the variability caused by uncontrolled random effects and that MD coupled with FCCD outperformed all other approaches, improving volumetric productivity 109-fold. These outcomes underscore the importance of selecting a model that can effectively account for the biological context, ultimately yielding superior results in optimizing rAAV production.
通过三重转染生产用于基因治疗的重组腺相关病毒(rAAV)是一个复杂的过程,涉及许多细胞间相互作用。三种必需质粒(pHelper、pRepCap和pGOI)中编码的每种不同元件都发挥着独特作用,在生产rAAV时影响不同的细胞途径。所需的表达平衡强调了微调所有这些不同元件浓度的迫切需求。使用实验设计(DOE)来找到最佳比例是简化该过程的有力方法。然而,DOE方法的选择和设计构建对于避免产生误导性结果至关重要。在这项工作中,我们研究并比较了四种不同的DOE方法:旋转中心复合设计(RCCD)、Box-Behnken设计(BBD)、面心中心复合设计(FCCD)和混合设计(MD)。我们比较了不同模型预测质粒与转染试剂之间最佳比例和相互作用的能力。我们的研究结果表明,区组对于减少由不受控制的随机效应引起的变异性至关重要,并且MD与FCCD相结合的方法优于所有其他方法,将体积生产力提高了109倍。这些结果强调了选择一个能够有效考虑生物学背景的模型的重要性,最终在优化rAAV生产方面产生更好的结果。