Li Hang, Lu Yi, Chen Haiqing, Li Tong, Fu Fangqiu, Wang Jing, Li Bing, Hu Hong
Departments of Thoracic Surgery, State Key Laboratory of Genetic Engineering, Fudan University Shanghai Cancer Center, Shanghai, 200032, China.
Institute of Thoracic Oncology, Fudan University, Shanghai, 200032, China.
BMC Cancer. 2025 Jun 4;25(1):999. doi: 10.1186/s12885-025-14382-8.
During perioperative care for non-small cell lung cancer (NSCLC) patients, clinical outcomes vary significantly. There is a critical need for more dependable biomarkers to identify high-risk individuals in the perioperative phase. This is essential for enhancing postoperative interventions and positively influencing clinical results.
We collected a tissue DNA methylation cohort of 73 stage I-III surgically treated patients as the discovery set for model development. The model was established using recurrence-free survival (RFS) as the primary endpoint. Subsequently, its prognostic value was validated in an independent cohort of 30 stage I-III surgical patients, and further confirmed across different patient subgroups.
We developed an Early to Mid-term NSCLC Recurrence LASSO score (EMRL) predictive model based on five differentially methylated regions (DMRs). The EMRL model was significantly associated with RFS in stage I-III surgically treated patients (RFS: log-rank P = 0.00032) and was confirmed as an independent prognostic factor in multivariate Cox regression analysis (HR = 0.35, 95% confidence interval 0.20-0.61, P < 0.001). Notably, EMRL not only identified high-risk patients within the same TNM stage but also demonstrated strong predictive performance in patient subgroups harboring EGFR-TKI-sensitive mutations and those with positive PD-L1 expression.
In this study, we developed a postoperative recurrence prediction model based on preoperative tissue methylation characteristics to identify individuals in I-III stage NSCLC patients following surgical resection who may have a higher risk of recurrence. This offers opportunities for early personalized treatment and follow-up strategy.
在非小细胞肺癌(NSCLC)患者的围手术期护理中,临床结果差异显著。迫切需要更可靠的生物标志物来识别围手术期的高危个体。这对于加强术后干预并积极影响临床结果至关重要。
我们收集了73例接受手术治疗的I-III期患者的组织DNA甲基化队列作为模型开发的发现集。以无复发生存期(RFS)作为主要终点建立模型。随后,在30例I-III期手术患者的独立队列中验证其预后价值,并在不同患者亚组中进一步证实。
我们基于五个差异甲基化区域(DMR)开发了一个早期至中期NSCLC复发LASSO评分(EMRL)预测模型。EMRL模型与I-III期手术治疗患者的RFS显著相关(RFS:对数秩检验P = 0.00032),并在多因素Cox回归分析中被确认为独立预后因素(HR = 0.35,95%置信区间0.20 - 0.61,P < 0.001)。值得注意的是。EMRL不仅能识别同一TNM分期内的高危患者,而且在携带EGFR-TKI敏感突变的患者亚组和PD-L1表达阳性的患者中也表现出强大的预测性能。
在本研究中,我们基于术前组织甲基化特征开发了一个术后复发预测模型,以识别I-III期NSCLC患者手术切除后可能具有较高复发风险的个体。这为早期个性化治疗和随访策略提供了机会。