Zhai Wen-Yu, Duan Fang-Fang, Lin Yao-Bin, Lin Yong-Bin, Zhao Ze-Rui, Wang Jun-Ye, Rao Bing-Yu, Zheng Lie, Long Hao
Department of Thoracic Surgery, State Key Laboratory of Oncology in Southern China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-Sen University Cancer Center, Guangzhou, People's Republic of China.
Lung Cancer Research Center, Sun Yat-Sen University, Guangzhou, People's Republic of China.
J Inflamm Res. 2023 Aug 8;16:3329-3339. doi: 10.2147/JIR.S418276. eCollection 2023.
We aimed to investigate the predictive value of a systematic serum inflammation index, pan-immune-inflammatory value (PIV), in pathological complete response (pCR) of patients treated with neoadjuvant immunotherapy to further promote ideal patients' selection.
The clinicopathological and baseline laboratory information of 128 NSCLC patients receiving neoadjuvant immunochemotherapy between October 2019 and April 2022 were retrospectively reviewed. We performed least absolute shrinkage and selection operator (LASSO) algorithm to screen candidate serum biomarkers for predicting pCR, which further entered the multivariate logistic regression model to determine final biomarkers. Accordingly, a diagnostic model for predicting individual pCR was established. Kaplan-Meier method was utilized to estimate curves of disease-free survival (DFS), and the Log rank test was analyzed to compare DFS differences between patients with and without pCR.
Patients with NSCLC heterogeneously responded to neoadjuvant immunotherapy, and those with pCR had a significant longer DFS than patients without pCR. Through LASSO and the multivariate logistic regression model, PIV was identified as a predictor for predicting pCR of patients. Subsequently, a diagnostic model integrating with PIV, differentiated degree and histological type was constructed to predict pCR, which presented a satisfactory predictive power (AUC, 0.736), significant agreement between actual and our nomogram-predicted pathological response.
Baseline PIV was an independent predictor of pCR for NSCLC patients receiving neoadjuvant immunochemotherapy. A significantly longer DFS was achieved in patients with pCR rather than those without pCR; thus, the PIV-based diagnostic model might serve as a practical tool to identify ideal patients for neoadjuvant immunotherapeutic guidance.
我们旨在研究系统性血清炎症指标——全免疫炎症值(PIV)在接受新辅助免疫治疗患者的病理完全缓解(pCR)中的预测价值,以进一步促进理想患者的选择。
回顾性分析2019年10月至2022年4月期间接受新辅助免疫化疗的128例非小细胞肺癌(NSCLC)患者的临床病理和基线实验室信息。我们采用最小绝对收缩和选择算子(LASSO)算法筛选预测pCR的候选血清生物标志物,这些标志物进一步纳入多变量逻辑回归模型以确定最终生物标志物。据此,建立了预测个体pCR的诊断模型。采用Kaplan-Meier法估计无病生存(DFS)曲线,并通过对数秩检验分析有pCR和无pCR患者之间的DFS差异。
NSCLC患者对新辅助免疫治疗反应各异,pCR患者的DFS显著长于无pCR患者。通过LASSO和多变量逻辑回归模型,PIV被确定为预测患者pCR的指标。随后,构建了一个整合PIV、分化程度和组织学类型的诊断模型来预测pCR,该模型具有令人满意的预测能力(AUC为0.736),实际病理反应与我们的列线图预测病理反应之间具有显著一致性。
基线PIV是接受新辅助免疫化疗的NSCLC患者pCR的独立预测指标。pCR患者的DFS显著长于无pCR患者;因此,基于PIV的诊断模型可能是识别适合新辅助免疫治疗指导的理想患者的实用工具。