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基于约束的建模预测低级别和高级别浆液性卵巢癌的代谢特征。

Constraint-based modelling predicts metabolic signatures of low and high-grade serous ovarian cancer.

机构信息

School of Biological Sciences, University of Manchester, Manchester, UK.

出版信息

NPJ Syst Biol Appl. 2024 Aug 24;10(1):96. doi: 10.1038/s41540-024-00418-5.

Abstract

Ovarian cancer is an aggressive, heterogeneous disease, burdened with late diagnosis and resistance to chemotherapy. Clinical features of ovarian cancer could be explained by investigating its metabolism, and how the regulation of specific pathways links to individual phenotypes. Ovarian cancer is of particular interest for metabolic research due to its heterogeneous nature, with five distinct subtypes having been identified, each of which may display a unique metabolic signature. To elucidate metabolic differences, constraint-based modelling (CBM) represents a powerful technology, inviting the integration of 'omics' data, such as transcriptomics. However, many CBM methods have not prioritised accurate growth rate predictions, and there are very few ovarian cancer genome-scale studies. Here, a novel method for CBM has been developed, employing the genome-scale model Human1 and flux balance analysis, enabling the integration of in vitro growth rates, transcriptomics data and media conditions to predict the metabolic behaviour of cells. Using low- and high-grade ovarian cancer, subtype-specific metabolic differences have been predicted, which have been supported by publicly available CRISPR-Cas9 data from the Cancer Cell Line Encyclopaedia and an extensive literature review. Metabolic drivers of aggressive, invasive phenotypes, as well as pathways responsible for increased chemoresistance in low-grade cell lines have been suggested. Experimental gene dependency data has been used to validate areas of the pentose phosphate pathway as essential for low-grade cellular growth, highlighting potential vulnerabilities for this ovarian cancer subtype.

摘要

卵巢癌是一种侵袭性、异质性疾病,其特点是诊断较晚且对化疗耐药。通过研究卵巢癌的代谢以及特定途径的调控如何与个体表型相关联,可以解释其临床特征。由于其异质性,卵巢癌是代谢研究的一个特别关注点,已经确定了五个不同的亚型,每个亚型可能都有独特的代谢特征。为了阐明代谢差异,基于约束的建模(CBM)代表了一种强大的技术,可以整合“组学”数据,如转录组学。然而,许多 CBM 方法并没有优先考虑准确的生长速率预测,而且很少有卵巢癌基因组规模的研究。在这里,开发了一种新的 CBM 方法,该方法采用基因组规模模型 Human1 和通量平衡分析,能够整合体外生长速率、转录组学数据和培养基条件,以预测细胞的代谢行为。使用低级别和高级别卵巢癌,预测了亚型特异性的代谢差异,并得到了癌症细胞系百科全书和广泛文献综述中公开的 CRISPR-Cas9 数据的支持。还提出了侵袭性、侵袭性表型的代谢驱动因素,以及低级别细胞系中增加化疗耐药性的途径。已经使用实验基因依赖性数据来验证戊糖磷酸途径的某些区域对低级别细胞生长是必需的,这突出了该卵巢癌亚型的潜在脆弱性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8a98/11344801/fa14f663b781/41540_2024_418_Fig1_HTML.jpg

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