Yu Chuting, Bian Yan, Gao Ye, Jiao Yunfei, Xu Yusi, Wang Wei, Xin Lei, Lin Han, Wang Luowei
Department of Gastroenterology, Changhai Hospital, Naval Medical University, Shanghai, 200433, China; National Clinical Research Center for Digestive Diseases (Shanghai), Shanghai, 200433, China.
Department of Gastroenterology, Changhai Hospital, Naval Medical University, Shanghai, 200433, China; National Clinical Research Center for Digestive Diseases (Shanghai), Shanghai, 200433, China.
Cancer Lett. 2025 Mar 31;613:217458. doi: 10.1016/j.canlet.2025.217458. Epub 2025 Jan 27.
Esophageal squamous cell carcinoma (ESCC), a predominant subtype of esophageal cancer, typically presents with poor prognosis. Lactate is a crucial metabolite in cancer and significantly impacts tumor biology. Here, we aimed to construct a lactate-related prognostic signature (LPS) for predicting prognosis in ESCC and uncovering potential therapeutic targets. We designed a computational framework to identify lactate-related genes (LRGs) and applied machine-learning to generate an optimal LPS model from 103 combinations. The LPS was evaluated for its predictive accuracy regarding patient prognosis, chemotherapy, radiotherapy, and immunotherapy. Analysis also covered genomic and proteomic traits linked to LPS-defined subtypes. The LPS model demonstrated robust and reliable accuracy in predicting survival outcomes in patients with ESCC. Patients with low LPS scores exhibited a more favorable prognosis and an enhanced response to both chemotherapy and radiotherapy. Conversely, patients with high LPS scores exhibited increased sensitivity to BI-2536 and panobinostat. Furthermore, a low LPS score was associated with better prognosis in multiple immunotherapy datasets across cancer types. Genetic amplifications and deletions were detected more frequently in the high-LPS than in the low-LPS group; however, no significant correlation was observed with the tumor mutation burden. Knockdown of GATM, a key LRG, significantly inhibited cell viability, proliferative capacity, and migration and invasion abilities in ESCC cell lines. In conclusion, the LPS score can be used to predict the prognosis of patients with ESCC and facilitate a more precise approach for selecting patients likely to respond to treatment.
食管鳞状细胞癌(ESCC)是食管癌的主要亚型,通常预后较差。乳酸是癌症中的一种关键代谢物,对肿瘤生物学有显著影响。在此,我们旨在构建一种与乳酸相关的预后特征(LPS),用于预测ESCC的预后并揭示潜在的治疗靶点。我们设计了一个计算框架来识别与乳酸相关的基因(LRG),并应用机器学习从103种组合中生成一个最佳的LPS模型。评估了LPS在预测患者预后、化疗、放疗和免疫治疗方面的预测准确性。分析还涵盖了与LPS定义的亚型相关的基因组和蛋白质组特征。LPS模型在预测ESCC患者的生存结果方面表现出稳健且可靠的准确性。LPS评分低的患者预后更有利,对化疗和放疗的反应增强。相反,LPS评分高的患者对BI-2536和帕比司他的敏感性增加。此外,在多种癌症类型的免疫治疗数据集中,低LPS评分与更好的预后相关。高LPS组比低LPS组更频繁地检测到基因扩增和缺失;然而,未观察到与肿瘤突变负担的显著相关性。关键LRG基因GATM的敲低显著抑制了ESCC细胞系的细胞活力、增殖能力以及迁移和侵袭能力。总之,LPS评分可用于预测ESCC患者的预后,并有助于更精确地选择可能对治疗有反应的患者。