Department of Interventional Oncology, the First Affiliated Hospital, Sun Yat-Sen University, Guangzhou, Guangdong Province 510080, PR China.
Department of Endoscopy, Sun Yat-Sen University Cancer Center, Guangzhou, Guangdong Province 510060, PR China.
Immunobiology. 2024 Sep;229(5):152841. doi: 10.1016/j.imbio.2024.152841. Epub 2024 Aug 2.
Hepatocellular carcinoma (HCC) stands as one of the most prevalent malignancies. While PD-1 immune checkpoint inhibitors have demonstrated promising therapeutic efficacy in HCC, not all patients exhibit a favorable response to these treatments. Glutamine is a crucial immune cell regulatory factor, and tumor cells exhibit glutamine dependence. In this study, HCC patients were divided into two subtypes (C1 and C2) based on glutamine metabolism-related genes via consensus clustering. The C1 pattern, in contrast to C2, was associated with a lower survival probability among HCC patients. Additionally, the C1 pattern exhibited higher proportions of patients with advanced tumor stages. The activity of C1 in glutamine metabolism and transport is significantly enhanced, while its oxidative phosphorylation activity is reduced. And, C1 was mainly involved in the progression-related pathway of HCC. Furthermore, C1 exhibited high levels of immunosuppressive cells, cytokine-receptor interactions and immune checkpoint genes, suggesting C1 as an immunosuppressive subtype. After stepwise selection based on integrated four machine learning methods, SLC1A5 was finally identified as the pivotal gene that distinguishes the subtypes. The expression of SLC1A5 was significantly positively correlated with immunosuppressive status. SLC1A5 showed the most significant correlation with macrophage infiltration, and this correlation was confirmed through the RNA-seq data of CLCA project and our cohort. Low-SLC1A5-expression samples had better immunogenicity and responsiveness to immunotherapy. As expected, SubMap and survival analysis indicated that individuals with low SLC1A5 expression were more responsive to anti-PD1 therapy. Collectively, this study categorized HCC patients based on glutamine metabolism-related genes and proposed two subclasses with different clinical traits, biological behavior, and immune status. Machine learning was utilized to identify the hub gene SLC1A5 for HCC classification, which also could predict immunotherapy response.
肝细胞癌 (HCC) 是最常见的恶性肿瘤之一。虽然 PD-1 免疫检查点抑制剂在 HCC 中显示出有希望的治疗效果,但并非所有患者对这些治疗都有良好的反应。谷氨酰胺是一种重要的免疫细胞调节因子,肿瘤细胞对谷氨酰胺有依赖性。在这项研究中,根据谷氨酰胺代谢相关基因,通过共识聚类将 HCC 患者分为两个亚型(C1 和 C2)。与 C2 相比,C1 模式与 HCC 患者较低的生存概率相关。此外,C1 模式表现出较高比例的晚期肿瘤患者。C1 对谷氨酰胺代谢和转运的活性显著增强,而其氧化磷酸化活性降低。并且,C1 主要参与 HCC 的进展相关途径。此外,C1 表现出高水平的免疫抑制细胞、细胞因子受体相互作用和免疫检查点基因,表明 C1 为免疫抑制亚型。基于整合的四种机器学习方法进行逐步选择后,最终确定 SLC1A5 为区分亚型的关键基因。SLC1A5 的表达与免疫抑制状态显著正相关。SLC1A5 与巨噬细胞浸润的相关性最显著,并且通过 CLCA 项目和我们的队列的 RNA-seq 数据得到了证实。SLC1A5 低表达样本具有更好的免疫原性和对免疫治疗的反应性。不出所料,SubMap 和生存分析表明,SLC1A5 低表达的个体对抗 PD1 治疗更有反应。总之,该研究根据谷氨酰胺代谢相关基因对 HCC 患者进行分类,并提出了具有不同临床特征、生物学行为和免疫状态的两个亚类。机器学习用于识别 HCC 分类的关键基因 SLC1A5,它也可以预测免疫治疗反应。