Feng Tingze, Li Pengfei, Li Siyi, Wang Yuhan, Lv Jing, Xia Tian, Lee Hoy-Jong, Piao Hai-Long, Chen Di, Ma Yegang
Department of Thoracic Surgery, Liaoning Cancer Hospital & Institute, Cancer Hospital of China Medical University, Shenyang, 110042, China.
Dalian Institute of Chemical Physics, Chinese Academy of Sciences, Dalian, 116023, China.
J Transl Med. 2025 Mar 17;23(1):342. doi: 10.1186/s12967-025-06087-0.
Metabolite-protein interactions (MPIs) are crucial regulators of cancer metabolism; however, their roles and coordination within the esophageal squamous cell carcinoma (ESCC) microenvironment remain largely unexplored. This study is the first to comprehensively map the metabolic landscape of the ESCC microenvironment by integrating an MPI network with multi-scale transcriptomics data.
First, we characterized the metabolic states of cells in ESCC using single-cell transcriptome profiles of key metabolite-interacting proteins. Next, we determined the metabolic patterns of each ESCC patient based on the composition of different metabolic states within bulk samples. Finally, the ESCC samples were clustered into unique subtypes.
Sixteen ESCC metabolic states across 7 cell types were identified based on the re-analysis of single-cell RNA-sequencing data of 208,659 cells in 64 ESCC samples. Each of the 7 cell types within the tumor microenvironment exhibited distinct metabolic states, highlighting the high metabolic heterogeneity of ESCC. Based on differences in the compositions of the metabolic states, 4 ESCC subtypes were identified in two independent cohorts (n = 79 and 119), which were associated with significant variations in prognosis, clinical features, gene expression, and pathways. Notably, the inactivation of cellular detoxification processes may contribute to the poor prognosis of ESCC patients.
Overall, we redefined robust ESCC prognostic subtypes and identified key MPI pathways that link metabolism to tumor heterogeneity. This study provides the first comprehensive mapping of the ESCC metabolic microenvironment, offering novel insights into ESCC metabolic diversity and its clinical applications.
代谢物-蛋白质相互作用(MPIs)是癌症代谢的关键调节因子;然而,它们在食管鳞状细胞癌(ESCC)微环境中的作用及协同作用在很大程度上仍未得到探索。本研究首次通过将MPI网络与多尺度转录组学数据相结合,全面描绘了ESCC微环境的代谢图景。
首先,我们利用关键代谢物相互作用蛋白的单细胞转录组图谱,对ESCC中的细胞代谢状态进行了表征。接下来,我们根据大量样本中不同代谢状态的组成,确定了每位ESCC患者的代谢模式。最后,将ESCC样本聚类为独特的亚型。
基于对64个ESCC样本中208,659个细胞的单细胞RNA测序数据的重新分析,确定了7种细胞类型中的16种ESCC代谢状态。肿瘤微环境中的7种细胞类型各自表现出独特的代谢状态,突出了ESCC的高代谢异质性。基于代谢状态组成的差异,在两个独立队列(n = 79和119)中确定了4种ESCC亚型,它们与预后、临床特征、基因表达和信号通路的显著差异相关。值得注意的是,细胞解毒过程的失活可能导致ESCC患者预后不良。
总体而言,我们重新定义了可靠的ESCC预后亚型,并确定了将代谢与肿瘤异质性联系起来的关键MPI途径。本研究首次全面描绘了ESCC代谢微环境,为ESCC代谢多样性及其临床应用提供了新的见解。