Eriksson Andreas, Richelle Anne, Trygg Johan, Scholze Steffi, Pijeaud Shanti, Antti Henrik, Zehe Christoph, Surowiec Izabella, Jonsson Pär
Department of Chemistry, Umeå University, Umeå, Sweden.
Sartorius Corporate Research, Brussels, Belgium.
Biotechnol J. 2025 Mar;20(3):e202400624. doi: 10.1002/biot.202400624.
Biopharmaceuticals are medical compounds derived from biological sources and are often manufactured by living cells, primarily Chinese hamster ovary (CHO) cells. CHO cells display variation among cell clones, leading to growth and productivity differences that influence the product's quantity and quality. The biological and environmental factors behind these differences are not fully understood. To identify metabolites with a consistent relationship to productivity or cell death over time, we analyzed the extracellular metabolome of 11 CHO clones with different growth and productivity characteristics over 14 days. However, in bioreactor processes, metabolic profiles and process variables are both strongly time-dependent, confounding the metabolite-process variable relationship. To address this, we customized an existing hierarchical approach for handling time dependency to highlight metabolites with a consistent correlation to a process variable over a selected timeframe. We benchmarked this new method against conventional orthogonal partial least squares (OPLS) models. Our hierarchical method highlighted several metabolites consistently related to productivity or cell death that the conventional method missed. These metabolites were biologically relevant; most were known already, but some that had not been reported in CHO literature before, such as 3-methoxytyrosine and succinyladenosine, had ties to cell death in studies with other cell types. The metabolites showed an inverse relationship with the response variables: those positively correlated with productivity were typically negatively correlated with the death rate, or vice versa. For both productivity and cell death, the citrate cycle and adjacent pathways (pyruvate, glyoxylate, pantothenate) were among the most important. In summary, we have proposed a new method to analyze time-dependent omics data in bioprocess production. This approach allowed us to identify metabolites tied to cell death and productivity that were not detected with traditional models.
生物制药是源自生物来源的医学化合物,通常由活细胞制造,主要是中国仓鼠卵巢(CHO)细胞。CHO细胞在细胞克隆之间存在差异,导致生长和生产力差异,从而影响产品的数量和质量。这些差异背后的生物学和环境因素尚未完全了解。为了确定随时间与生产力或细胞死亡具有一致关系的代谢物,我们分析了11个具有不同生长和生产力特征的CHO克隆在14天内的细胞外代谢组。然而,在生物反应器过程中,代谢谱和过程变量都强烈依赖时间,这混淆了代谢物与过程变量之间的关系。为了解决这个问题,我们定制了一种现有的分层方法来处理时间依赖性,以突出在选定时间范围内与过程变量具有一致相关性的代谢物。我们将这种新方法与传统的正交偏最小二乘法(OPLS)模型进行了基准测试。我们的分层方法突出了几种与生产力或细胞死亡始终相关的代谢物,而传统方法则遗漏了这些代谢物。这些代谢物具有生物学相关性;大多数是已知的,但有些以前在CHO文献中未报道过,例如3-甲氧基酪氨酸和琥珀酰腺苷,在其他细胞类型的研究中与细胞死亡有关。这些代谢物与响应变量呈反比关系:与生产力呈正相关的那些通常与死亡率呈负相关,反之亦然。对于生产力和细胞死亡而言,柠檬酸循环和相邻途径(丙酮酸、乙醛酸、泛酸)是最重要的。总之,我们提出了一种新方法来分析生物过程生产中随时间变化的组学数据。这种方法使我们能够识别与细胞死亡和生产力相关的代谢物,而传统模型并未检测到这些代谢物。