Cuyàs Elisabet, Verdura Sara, Fernández-Arroyo Salvador, Bosch-Barrera Joaquim, Martin-Castillo Begoña, Joven Jorge, Menendez Javier A
Metabolism and Cancer Group, Program Against Cancer Therapeutic Resistance, Catalan Institute of Oncology, Girona, Spain.
Molecular Oncology Group, Girona Biomedical Research Institute (IDIBGI), Girona, Spain.
Oncotarget. 2017 Oct 15;8(59):99223-99236. doi: 10.18632/oncotarget.21834. eCollection 2017 Nov 21.
Personalized cancer medicine based on the analysis of tumors en masse is limited by tumor heterogeneity, which has become a major obstacle to effective cancer treatment. Cancer stem cells (CSC) are emerging as key drivers of inter- and intratumoral heterogeneity. CSC have unique metabolic dependencies that are required not only for specific bioenergetic/biosynthetic demands but also for sustaining their operational epigenetic traits, i.e. self-renewal, tumor-initiation, and plasticity. Given that the metabolome is the final downstream product of all the -omic layers and, therefore, most representative of the biological phenotype, we here propose that a novel approach to better understand the complexity of tumor heterogeneity is by mapping and cataloging small numbers of CSC metabolomic phenotypes. The narrower metabolomic diversity of CSC states could be employed to reduce multidimensional tumor heterogeneity into dynamic models of fewer actionable sub-phenotypes. The identification of the driver nodes that are used differentially by CSC states to metabolically regulate self-renewal and tumor initation and escape chemotherapy might open new preventive and therapeutic avenues. The mapping of CSC metabolomic states could become a pioneering strategy to reduce the dimensionality of tumor heterogeneity and improve our ability to examine changes in tumor cell populations for cancer detection, prognosis, prediction/monitoring of therapy response, and detection of therapy resistance and recurrent disease. The identification of driver metabolites and metabolic nodes accounting for a large amount of variance within the CSC metabolomic sub-phenotypes might offer new unforeseen opportunities for reducing and exploiting tumor heterogeneity via metabolic targeting of CSC.
基于对肿瘤整体分析的个性化癌症医学受到肿瘤异质性的限制,肿瘤异质性已成为有效癌症治疗的主要障碍。癌症干细胞(CSC)正成为肿瘤间和肿瘤内异质性的关键驱动因素。CSC具有独特的代谢依赖性,这不仅是特定生物能量/生物合成需求所必需的,也是维持其操作表观遗传特征(即自我更新、肿瘤起始和可塑性)所必需的。鉴于代谢组是所有“组学”层的最终下游产物,因此最能代表生物学表型,我们在此提出,一种更好地理解肿瘤异质性复杂性的新方法是绘制和编目少量CSC代谢组学表型。CSC状态较窄的代谢组学多样性可用于将多维肿瘤异质性简化为较少可操作亚表型的动态模型。识别CSC状态用于代谢调节自我更新、肿瘤起始和逃避化疗的差异驱动节点,可能会开辟新的预防和治疗途径。绘制CSC代谢组学状态可能成为一种开创性策略,以降低肿瘤异质性的维度,并提高我们检查肿瘤细胞群体变化以进行癌症检测、预后、预测/监测治疗反应以及检测治疗耐药性和复发性疾病的能力。识别在CSC代谢组学子表型中占大量变异的驱动代谢物和代谢节点,可能会为通过对CSC进行代谢靶向来减少和利用肿瘤异质性提供新的意外机会。