Lin Sen, Li Danfei, Yang Yan, Yu Mengjiao, Zhao Ruiqi, Li Jinghao, Peng Lisheng
The Fourth Clinical Medical College, Guangzhou University of Chinese Medicine, Guangzhou, China.
Department of Traditional Chinese Medicine, The Sixth Affiliated Hospital, South China University of Technology, Foshan, China.
J Cancer. 2024 Jan 1;15(4):1093-1109. doi: 10.7150/jca.92185. eCollection 2024.
The challenge of systemic treatment for hepatocellular carcinoma (HCC) stems from the development of drug resistance, primarily driven by the interplay between cancer stem cells (CSCs) and the tumor microenvironment (TME). However, there is a notable dearth of comprehensive research investigating the crosstalk between CSCs and stromal cells or immune cells within the TME of HCC. We procured single-cell RNA sequencing (scRNA-Seq) data from 16 patients diagnosed with HCC. Employing meticulous data quality control and cell annotation procedures, we delineated distinct CSCs subtypes and performed multi-omics analyses encompassing metabolic activity, cell communication, and cell trajectory. These analyses shed light on the potential molecular mechanisms governing the interaction between CSCs and the TME, while also identifying CSCs' developmental genes. By combining these developmental genes, we employed machine learning algorithms and RT-qPCR to construct and validate a prognostic risk model for HCC. We successfully identified CSCs subtypes residing within malignant cells. Through meticulous enrichment analysis and assessment of metabolic activity, we discovered anomalous metabolic patterns within the CSCs microenvironment, including hypoxia and glucose deprivation. Moreover, CSCs exhibited aberrant activity in signaling pathways associated with lipid metabolism. Furthermore, our investigations into cell communication unveiled that CSCs possess the capacity to modulate stromal cells and immune cells through the secretion of MIF or MDK, consequently exerting regulatory control over the TME. Finally, through cell trajectory analysis, we found developmental genes of CSCs. Leveraging these genes, we successfully developed and validated a prognostic risk model (APCS, ADH4, FTH1, and HSPB1) with machine learning and RT-qPCR. By means of single-cell multi-omics analysis, this study offers valuable insights into the potential molecular mechanisms governing the interaction between CSCs and the TME, elucidating the pivotal role CSCs play within the TME. Additionally, we have successfully established a comprehensive clinical prognostic model through bulk RNA-Seq data.
肝细胞癌(HCC)全身治疗的挑战源于耐药性的产生,这主要是由癌症干细胞(CSCs)与肿瘤微环境(TME)之间的相互作用驱动的。然而,目前缺乏对HCC的TME中CSCs与基质细胞或免疫细胞之间串扰的全面研究。我们从16名被诊断为HCC的患者中获取了单细胞RNA测序(scRNA-Seq)数据。通过细致的数据质量控制和细胞注释程序,我们描绘了不同的CSCs亚型,并进行了包括代谢活性、细胞通讯和细胞轨迹在内的多组学分析。这些分析揭示了控制CSCs与TME之间相互作用的潜在分子机制,同时也确定了CSCs的发育基因。通过整合这些发育基因,我们运用机器学习算法和RT-qPCR构建并验证了一个HCC的预后风险模型。我们成功地在恶性细胞中鉴定出了CSCs亚型。通过细致的富集分析和代谢活性评估,我们在CSCs微环境中发现了异常的代谢模式,包括缺氧和葡萄糖剥夺。此外,CSCs在与脂质代谢相关的信号通路中表现出异常活性。此外,我们对细胞通讯的研究表明,CSCs能够通过分泌MIF或MDK来调节基质细胞和免疫细胞,从而对TME施加调控。最后,通过细胞轨迹分析,我们发现了CSCs的发育基因。利用这些基因,我们成功地运用机器学习和RT-qPCR开发并验证了一个预后风险模型(APCS、ADH4、FTH1和HSPB1)。通过单细胞多组学分析,本研究为控制CSCs与TME之间相互作用的潜在分子机制提供了有价值的见解,阐明了CSCs在TME中所起的关键作用。此外,我们还通过批量RNA-Seq数据成功建立了一个全面的临床预后模型。