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Pan-cancer analysis of the metabolic reaction network

机译:代谢反应网络的泛癌分析

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Metabolic reprogramming is considered a hallmark of malignant transformation. However, it is not clear whether the network of metabolic reactions expressed by cancers of different origin differ from each other or from normal human tissues. In this study, we reconstructed functional and connected genome-scale metabolic models for 917 primary tumor samples across 13 types based on the probability of expression for 3765 reference metabolic genes in the sample. This network-centric approach revealed that tumor metabolic networks are largely similar in terms of accounted reactions, despite diversity in the expression of the associated genes. On average, each network contained 4721 reactions, of which 74% were core reactions (present in > 95% of all models). Whilst 99.3% of the core reactions were classified as housekeeping also in normal tissues, we identified reactions catalyzed by ARG2, RHAG, SLC6 and SLC16 family gene members, and PTGS1 and PTGS2 as core exclusively in cancer. These findings were subsequently replicated in an independent validation set of 3388 genome-scale metabolic models. The remaining 26% of the reactions were contextual reactions. Their inclusion was dependent in one case (GLS2) on the absence of TP53 mutations and in 94.6% of cases on differences in cancer types. This dependency largely resembled differences in expression patterns in the corresponding normal tissues, with some exceptions like the presence of the NANP-encoded reaction in tumors not from the female reproductive system or of the SLC5A9-encoded reaction in kidney-pancreatic-colorectal tumors. In conclusion, tumors expressed a metabolic network virtually overlapping the matched normal tissues, raising the possibility that metabolic reprogramming simply reflects cancer cell plasticity to adapt to varying conditions thanks to redundancy and complexity of the underlying metabolic networks. At the same time, the here uncovered exceptions represent a resource to identify selective liabilities of tumor metabolism.
机译:代谢重编程被认为是恶性转型的标志。然而,目前尚不清楚不同起源的癌症表达的代谢反应网络是否彼此不同或来自正常的人组织。在本研究中,基于样品中的表达式3765参考代谢基因的表达概率,我们在13型类型中重建了917个主要肿瘤样本的功能和连接的基因组标记模型。这种以网络为中心的方法表明,尽管相关基因表达的表达,但肿瘤代谢网络在核算反应方面在很大程度上相似。平均而言,每个网络含有4721个反应,其中74%是核心反应(占所有型号的> 95%)。虽然在正常组织中,99.3%的核心反应被归类为办公室,但我们发现Arg2,RhAG,SLC6和SLC16家族基因成员和PTGS1和PTGS2仅作为癌症的核心催化的反应。随后在3388个基因组代谢模型的独立验证组中复制了这些发现。其余26%的反应是上下文反应。它们的包容性在没有TP53突变的情况下依赖于一种情况(GLS2),并在94.6%的癌症类型差异中依赖于94.6%。该依赖性在很大程度上类似于相应的正常组织中表达模式的差异,一些例外情况类似于肿瘤中的纳米编码反应的存在,而不是来自肾胰腺 -​​ 结肠直肠肿瘤中的SLC5A9编码反应的肿瘤中的纳米编码反应。总之,肿瘤表达了一种代谢网络,几乎与匹配的正常组织重叠,提高了代谢重编程的可能性,即由于底层代谢网络的冗余和复杂性,致力于适应变化条件的可能性。与此同时,这里未被覆盖的例外代表了识别肿瘤新陈代谢的选择性责任的资源。

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