Efficient generation of a CYP3A4-T2A-luciferase knock-in HepaRG subclone and its optimized differentiation

基因敲除 基因敲除 细胞分化 分子生物学 生物 清脆的 化学 细胞生物学 基因 遗传学
作者
Qingxia Zuo,Wanqing Xu,Yanbin Wan,Dongyan Feng,Changsheng He,Cailing Lin,Dongchao Huang,Feng Chen,Lin Han,Qi Sun,Dong Chen,Hongli Du,Lizhen Huang
出处
期刊:Biomedicine & Pharmacotherapy [Elsevier BV]
卷期号:152: 113243-113243
标识
DOI:10.1016/j.biopha.2022.113243
摘要

CRISPR/Cas9 has allowed development of better and easier-to-use ADME models than traditional methods by complete knockout or knock-in of genes. However, gene editing in HepaRG cells remains challenging because long-term monoclonal cultivation may alter their differentiation capacity to a large extent. Here, CRISPR/Cas9 was used to generate a CYP3A4-T2A-luciferase knock-in HepaRG subclone by Cas9-mediated homologous recombination and monoclonal cultivation. The knock-in HepaRG-#9 subclone retained a similar differentiation potential to wildtype HepaRG cells (HepaRG-WT). To further improve differentiation and expand the applications of knock-in HepaRG cells, two optimized differentiation procedures were evaluated by comparison with the standard differentiation procedure using the knock-in HepaRG-#9 subclone and HepaRG-WT. The results indicated that addition of forskolin (an adenylate cyclase activator) and SB431542 (a TGF-β pathway inhibitor) to the first optimized differentiation procedure led to better differentiation consequence in terms of not only the initiation time for differentiation and morphological characterization, but also the mRNA levels of hepatocyte-specific genes. These data may contribute to more extensive applications of genetically modified HepaRG cells in ADME studies.

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