Jiang Yi, Wang Chaoping, Shen Jiali
Department of Clinical Laboratory, Wujin Hospital Affiliated to Jiangsu University Changzhou 213000, Jiangsu, China.
Department of Clinical Laboratory, Wujin Clinical College of Xuzhou Medical University Changzhou 213000, Jiangsu, China.
Am J Cancer Res. 2024 Jun 15;14(6):3130-3141. doi: 10.62347/JOVT3911. eCollection 2024.
To investigate the dynamics of inflammation and lipid-related indicators in lung cancer patients and their impact on treatment efficacy. A retrospective analysis was conducted on 133 lung cancer patients who seek for primary treatment at Wujin Hospital Affiliated to Jiangsu University from January 2019 to August 2022. The inflammation and blood lipid-related indicators were collected 1 week before treatment and after 2 cycles of treatment. We compared the changes in these indicators among patients with different treatment methods and outcomes. The diagnostic value of the dynamic changes in each index for disease progression was calculated using the ROC curve. The risk factors influencing disease development were identified using multifactorial logistic regression analysis. After 2 cycles of treatment, the white blood cell count (WBC, P<0.001), neutrophil count (NC, P<0.001), neutrophil-to-lymphocyte ratio (NLR, P<0.001) in the disease progression (PD) group were significantly increased, triglyceride (TG, P=0.023), apolipoprotein A1 (APO-A1, P=0.009) was significantly decreased. The results showed that ∆NC had the highest sensitivity (88.24%) in predicting disease progression, and ∆WBC had the best specificity (77.78%). Multivariate regression analysis showed that ΔWBC (P<0.001), ΔTG (P=0.041), and treatment method (P=0.010) were independent risk factors for disease progression (PD). The changes of WBC and TG before and after treatment are promising indicators for predicting the progression of lung cancer and may offer a new direction for lung cancer treatment.
为研究肺癌患者炎症和脂质相关指标的动态变化及其对治疗疗效的影响。对2019年1月至2022年8月在江苏大学附属武进医院寻求初次治疗的133例肺癌患者进行回顾性分析。在治疗前1周和2个周期治疗后收集炎症和血脂相关指标。我们比较了不同治疗方法和结局患者这些指标的变化。使用ROC曲线计算各指标动态变化对疾病进展的诊断价值。采用多因素logistic回归分析确定影响疾病发展的危险因素。治疗2个周期后,疾病进展(PD)组的白细胞计数(WBC,P<0.001)、中性粒细胞计数(NC,P<0.001)、中性粒细胞与淋巴细胞比值(NLR,P<0.001)显著升高,甘油三酯(TG,P=0.023)、载脂蛋白A1(APO-A1,P=0.009)显著降低。结果显示,∆NC在预测疾病进展方面敏感性最高(88.24%),∆WBC特异性最佳(77.78%)。多因素回归分析显示,∆WBC(P<0.001)、∆TG(P=0.041)和治疗方法(P=0.010)是疾病进展(PD)的独立危险因素。治疗前后WBC和TG的变化是预测肺癌进展的有前景指标,可能为肺癌治疗提供新方向。