Yang Weiyang, Gu Miao, Zhang Yabin, Zhang Yunfan, Liu Tao, Wu Di, Deng Juntao, Liu Min, Zhang Youwei
Department of Automation, Tsinghua University, Beijing, 100084, China.
Department of Medical Oncology, Xuzhou Central Hospital, Xuzhou, 221009, China.
Sci Rep. 2025 Feb 17;15(1):5812. doi: 10.1038/s41598-025-85620-z.
Lactate metabolism (LM) plays a crucial role in tumor progression and therapy resistance in non-small cell lung cancer (NSCLC). Several methods had been developed for NSCLC prognosis prediction based on lactate metabolism-related information. The existing methods for the construction of prognosis prediction models are mostly based on single models such as linear models, SVM, and decision trees. Prognosis biomarkers and prognosis prediction models based on this kind of methods often have limited prognostic performance. In this study, we proposed a novel methodology for constructing prognosis prediction model and identifying lactate-related prognostic biomarkers in NSCLC. We first screened for lactate metabolism-related malignant genes from the scRNA-Seq data of NSCLC malignant cells. We proposed a Cox elastic-net regression combined with genetic algorithm (GA-EnCox) to predict prognosis and optimize the selection of key biomarkers. We identified five key LM-related genes (LYPD3, KRT8, CCT6A, PSMB7, and HMGA1) that significantly correlated with patient prognosis in LUAD cohorts. The prognostic model constructed with these genes outperformed other currently popular models across multiple datasets, demonstrating stable predictive capability. Survival analysis based on bulk RNA-Seq data demonstrated that the low-risk group had significantly better overall survival compared to the high-risk group. Further analysis revealed that lactate metabolism-related prognosis risk might be associated with monocyte lineages such as macrophages and DC's infiltration and these prognosis biomarkers may indicate the therapeutic responses of immune checkpoint inhibitors for NSCLC patients. More importantly, we validated HMGA1 and KRT8 at protein level and their association with histologic grades, stages, and clinical outcomes in consistently treated in-house NSCLC cohorts. Finally, we experimentally validated one of the biomarkers, HMGA1, confirming its role in promoting malignant phenotypes of NSCLC. This study provides valuable insights into the role of lactate metabolism-related biomarkers and their impact on patient outcomes, it was expected to provide important reference value for prognosis assessment and personalized treatment decision of NSCLC patients.
乳酸代谢(LM)在非小细胞肺癌(NSCLC)的肿瘤进展和治疗耐药中起着关键作用。基于乳酸代谢相关信息,已经开发了几种用于NSCLC预后预测的方法。现有的构建预后预测模型的方法大多基于单一模型,如线性模型、支持向量机和决策树。基于这类方法的预后生物标志物和预后预测模型的预后性能往往有限。在本研究中,我们提出了一种构建预后预测模型并识别NSCLC中乳酸相关预后生物标志物的新方法。我们首先从NSCLC恶性细胞的scRNA-Seq数据中筛选出乳酸代谢相关的恶性基因。我们提出了一种结合遗传算法的Cox弹性网络回归(GA-EnCox)来预测预后并优化关键生物标志物的选择。我们在LUAD队列中鉴定出五个与患者预后显著相关的关键LM相关基因(LYPD3、KRT8、CCT6A、PSMB7和HMGA1)。用这些基因构建的预后模型在多个数据集中优于其他目前流行的模型,显示出稳定的预测能力。基于批量RNA-Seq数据的生存分析表明,低风险组的总生存期明显优于高风险组。进一步分析表明,乳酸代谢相关的预后风险可能与单核细胞谱系如巨噬细胞和树突状细胞的浸润有关,这些预后生物标志物可能指示NSCLC患者对免疫检查点抑制剂的治疗反应。更重要的是,我们在蛋白质水平上验证了HMGA1和KRT8及其与内部NSCLC队列中一致治疗的组织学分级、分期和临床结果的关联。最后,我们通过实验验证了其中一个生物标志物HMGA1,证实了其在促进NSCLC恶性表型中的作用。本研究为乳酸代谢相关生物标志物的作用及其对患者预后的影响提供了有价值的见解,有望为NSCLC患者的预后评估和个性化治疗决策提供重要参考价值。