Li Jing, Guan Yun, Zhu Rongrong, Wang Yang, Zhu Huaguang, Wang Xin
Department of CyberKnife Center, Huashan Hospital, Fudan University, No. 525, Hongfeng Road, Pudong District, Shanghai 200040, China.
Department of Rehabilitation, Northern Jiangsu People's Hospital, Yangzhou, 225001, China.
Open Life Sci. 2022 Aug 11;17(1):881-892. doi: 10.1515/biol-2022-0091. eCollection 2022.
Early-stage non-small cell lung cancer (NSCLC) patients are at substantial risk of poor prognosis. We attempted to develop a reliable metabolic gene-set-based signature that can predict prognosis accurately for early-stage patients. Least absolute shrinkage and selection operator method Cox regression models were performed to filter the most useful prognostic genes, and a metabolic gene-set-based signature was constructed. Forty-two metabolism-related genes were finally identified, and with specific risk score formula, patients were classified into high-risk and low-risk groups. Overall survival was significantly different between the two groups in discovery (HR: 5.050, 95% CI: 3.368-7.574, < 0.001), internal validation series (HR: 6.044, 95% CI: 3.918-9.322, < 0.001), GSE30219 (HR: 2.059, 95% CI: 1.510-2.808, < 0.001), and GSE68456 (HR: 2.448, 95% CI: 1.723-3.477, < 0.001). Survival receiver operating characteristic curve at the 5 years suggested that the metabolic signature (area under the curve [AUC] = 0.805) had better prognostic accuracy than any other clinicopathological factors. Further analysis revealed the distinct differences in immune cell infiltration and tumor purity reflected by an immune and stromal score between high- and low-risk patients. In conclusion, the novel metabolic signature developed in our study shows robust prognostic accuracy in predicting prognosis for early-stage NSCLC patients and may function as a reliable marker for guiding more effective immunotherapy strategies.
早期非小细胞肺癌(NSCLC)患者预后不良的风险很大。我们试图开发一种基于可靠代谢基因集的特征,能够准确预测早期患者的预后。采用最小绝对收缩和选择算子法Cox回归模型筛选最有用的预后基因,并构建基于代谢基因集的特征。最终鉴定出42个与代谢相关的基因,并通过特定的风险评分公式将患者分为高风险组和低风险组。在发现队列(HR:5.050,95%CI:3.368-7.574,P<0.001)、内部验证系列(HR:6.044,95%CI:3.918-9.322,P<0.001)、GSE30219(HR:2.059,95%CI:1.510-2.808,P<0.001)和GSE68456(HR:2.448,95%CI:1.723-3.477,P<0.001)中,两组患者的总生存期存在显著差异。5年生存受试者工作特征曲线表明,代谢特征(曲线下面积[AUC]=0.805)比任何其他临床病理因素具有更好的预后准确性。进一步分析显示,高风险和低风险患者在免疫细胞浸润和肿瘤纯度方面存在明显差异,这通过免疫和基质评分反映出来。总之,我们研究中开发的新型代谢特征在预测早期NSCLC患者预后方面显示出强大的预后准确性,可能作为指导更有效免疫治疗策略的可靠标志物。