Computational modeling of cancer cell metabolism along the catabolic-anabolic axes

Javier Villela-Castrejon, Herbert Levine, José Nelson Onuchic, Jason T George, Dongya Jia
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Abstract

Abnormal metabolism is a hallmark of cancer. Initially recognized through the observation of aerobic glycolysis in cancer nearly a century ago. Also, we now know that mitochondrial respiration is also used by cancer for progression and metastasis. However, it remains largely unclear the mechanisms by which cancer cells mix and match different metabolic modalities (oxidative/reductive) and leverage various metabolic ingredients (glucose, fatty acids, glutamine) to meet their bioenergetic and biosynthetic needs. Here, we formulate a phenotypic model for cancer metabolism by coupling master gene regulators (AMPK, HIF-1, Myc) with key metabolic substrates (glucose, fatty acid, and glutamine). The model predicts that cancer cells can acquire four metabolic phenotypes: a catabolic phenotype characterized by vigorous oxidative processes - O, an anabolic phenotype characterized by pronounced reductive activities - W, and two complementary hybrid metabolic states - one exhibiting both high catabolic and high anabolic activity - W/O, and the other relying mainly on glutamine oxidation - Q. Using this framework, we quantified gene and metabolic pathway activity respectively by developing scoring metrics based on gene expression. We validated the model-predicted gene-metabolic pathway association and the characterization of the four metabolic phenotypes by analyzing RNA-seq data of tumor samples from TCGA. Strikingly, carcinoma samples exhibiting hybrid metabolic phenotypes are often associated with the worst survival outcomes relative to other metabolic phenotypes. Our mathematical model and scoring metrics serve as a platform to quantify cancer metabolism and study how cancer cells adapt their metabolism upon perturbations, which ultimately could facilitate an effective treatment targeting cancer metabolic plasticity.
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沿着分解代谢-合成代谢轴对癌细胞代谢进行计算建模
代谢异常是癌症的特征之一。近一个世纪前,通过观察癌症中的有氧糖酵解,我们初步认识到了这一点。此外,我们现在还知道,线粒体呼吸也被癌症用于恶化和转移。然而,癌细胞混合和匹配不同代谢模式(氧化/还原)并利用各种代谢成分(葡萄糖、脂肪酸、谷氨酰胺)来满足其生物能量和生物合成需求的机制,在很大程度上仍不清楚。在此,我们将主基因调控因子(AMPK、HIF-1、Myc)与关键代谢底物(葡萄糖、脂肪酸和谷氨酰胺)结合起来,建立了癌症代谢的表型模型。该模型预测癌细胞可获得四种代谢表型:以剧烈氧化过程为特征的分解代谢表型--O,以明显还原活动为特征的合成代谢表型--W,以及两种互补的混合代谢状态--一种表现出高分解代谢活性和高合成代谢活性--W/O,另一种主要依赖谷氨酰胺氧化--Q。利用这一框架,我们通过开发基于基因表达的评分指标,分别量化了基因和代谢途径的活性。我们通过分析 TCGA 中肿瘤样本的 RNA-seq 数据,验证了模型预测的基因-代谢途径关联以及四种代谢表型的特征。令人震惊的是,与其他代谢表型相比,表现出混合代谢表型的癌样本往往与最差的生存结果相关。我们的数学模型和评分标准可作为量化癌症代谢的平台,研究癌细胞如何在受到干扰时调整其代谢,最终促进针对癌症代谢可塑性的有效治疗。
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