中国仓鼠卵巢细胞表达系统在生物制药中的优化策略
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1)鲁东大学生命科学学院,烟台 264025;2)鲁东大学生命科学学院烟台市动物病原微生物与免疫学重点实验室,烟台 264025;3)鲁东大学生命科学学院黄河中下游宠物传染病时空传播与公共卫生协同创新中心,烟台 264025

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烟台市校地融合发展项目(2022)资助。


Strategic Optimization of CHO Cell Expression Platforms for Biopharmaceutical Manufacturing
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Affiliation:

1)School of Life Sciences, Ludong University, Yantai 264025, China;2)Yantai Key Laboratory of Animal Pathogenetic Microbiology and Immunology, School of Life Sciences, Ludong University, Yantai 264025, China;3)Collaborative Innovation Center for the Pet Infectious Diseases and Public Health in the Middle and Lower Stream Regions of the Yellow River, School of Life Sciences, Ludong University, Yantai 264025, China

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This work was supported by a grant from the Yantai University-City Integrative Development Project (2022).

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    摘要:

    中国仓鼠卵巢(Chinese hamster ovary,CHO)细胞因其良好的遗传稳定性、翻译后修饰能力以及高表达和可规模化特性,已成为重组蛋白质药物生产的首选宿主系统,广泛应用于单克隆抗体生产、疫苗抗原表达及Fc融合蛋白等生物制剂领域。然而,在工业化应用过程中,CHO细胞仍面临三大核心挑战:高密度培养导致的代谢负担、糖基化修饰不一致以及长期表达水平衰减。这些问题不仅引发培养周期延长、乳酸和氨等有害代谢产物积累,还会造成表达量波动和产品质量异质性,限制其在高产、稳产及降本增效方面的潜能。本文围绕CHO细胞表达系统的关键瓶颈,从高密度培养代谢调控、糖基化均一性优化及长期表达稳定性维持3方面进行系统梳理,重点总结分子构建优化、细胞培养与工艺提升、细胞株工程改造及靶向整合等关键技术进展,并构建问题导向的技术优化框架。此外,结合基因编辑、合成生物学与人工智能技术的前沿发展,探讨了其在实现高效、稳定及经济型CHO细胞工厂构建中的应用前景,为新一代生物制药生产体系的创新与优化提供系统性参考。

    Abstract:

    Chinese hamster ovary (CHO) cells are the most established and versatile mammalian expression system for the large-scale production of recombinant therapeutic proteins, owing to their genetic stability, adaptability to serum-free suspension culture, and ability to perform human-like post-translational modifications. More than 70% of biologics approved by the U.S. Food and Drug Administration rely on CHO-based production platforms, underscoring their central role in modern biopharmaceutical manufacturing. Despite these advantages, CHO systems continue to face three persistent bottlenecks that limit their potential for high-yield, reproducible, and cost-efficient production: excessive metabolic burden during high-density culture, heterogeneity of glycosylation patterns, and progressive loss of long-term expression stability. This review provides an integrated analysis of recent advances addressing these challenges and proposes a forward-looking framework for constructing intelligent and sustainable CHO cell factories. In terms of metabolic regulation, excessive lactate and ammonia accumulation disrupts energy balance and reduces recombinant protein synthesis efficiency. Optimization of culture parameters such as temperature, pH, dissolved oxygen, osmolarity, and glucose feeding can effectively alleviate metabolic stress, while supplementation with modulators including sodium butyrate, baicalein, and S-adenosylmethionine promotes specific productivity (qP) by modulating apoptosis and chromatin structure. Furthermore, genetic engineering strategies—such as overexpression of MPC1/2, HSP27, and SIRT6 or knockout of Bax, Apaf1, and IGF-1R—have demonstrated significant improvements in cell viability and product yield. The combination of multi-omics metabolic modeling with artificial intelligence (AI)-based prediction offers new opportunities for building self-regulating CHO systems capable of dynamic adaptation to environmental stress. Regarding glycosylation uniformity, which determines therapeutic efficacy and immunogenicity, gene editing-based glycoengineering (e.g., FUT8 knockdown or ST6Gal1 overexpression) has enabled the humanization of CHO glycan profiles, minimizing non-human sugar residues and enhancing drug stability. Process-level strategies such as galactose or manganese co-feeding and fine control of temperature or osmolarity further allow rational regulation of glycosyltransferase activity. Additionally, in vitro chemoenzymatic remodeling provides a complementary route to construct human-type glycans with defined structures, though industrial applications remain constrained by cost and scalability. The integration of model-driven process design and AI feedback control is expected to enable real-time prediction and correction of glycosylation deviations, ensuring batch-to-batch consistency in continuous biomanufacturing. Long-term expression stability, another critical challenge, is often impaired by promoter silencing, chromatin condensation, and random genomic integration. Molecular optimization—such as the use of improved promoters (CMV, EF-1α, or CHO endogenous promoters), Kozak and signal peptide refinement, and incorporation of chromatin-opening elements (UCOE, MAR, STAR)—helps maintain durable transcriptional activity, while site-specific integration systems including Cre/loxP, Flp/FRT, φC31, and CRISPR/Cas9 can enable single-copy, position-independent gene insertion at genomic safe-harbor loci, ensuring stable, predictable expression. Collectively, this review highlights a paradigm shift in CHO system optimization driven by the convergence of genome editing, synthetic biology, and artificial intelligence. The transition from empirical optimization to rational, data-driven design will facilitate the development of programmable CHO platforms capable of autonomous regulation of metabolic flux, glycosylation fidelity, and transcriptional activity. Such intelligent cell factories are expected to accelerate the transformation from laboratory-scale research to industrial-scale, high-consistency, and economically sustainable biopharmaceutical manufacturing, thereby supporting the next generation of efficient and customizable biologics manufacturing.

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张瑞明,李梦琳,朱洪伟,张兴晓.中国仓鼠卵巢细胞表达系统在生物制药中的优化策略[J].生物化学与生物物理进展,2026,53(2):327-341

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  • 收稿日期:2025-08-03
  • 最后修改日期:2026-01-12
  • 录用日期:2025-10-21
  • 在线发布日期: 2025-10-22
  • 出版日期: 2026-02-28
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