Guo Lianghua, Song Bin, Xiao Jianhong, Lin Hui, Chen Junhua, Su Xianghua
Department of Respiratory Medicine, Mindong Hospital of Fujian Medical University, Fuan City, 355000, People's Republic of China.
Department of Neurosurgery, Mindong Hospital of Fujian Medical University, Fuan City, 355000, People's Republic of China.
Int J Gen Med. 2021 Sep 7;14:5279-5286. doi: 10.2147/IJGM.S331311. eCollection 2021.
Survival in non-small cell lung cancer (NSCLC) remains poor. Early detection of NSCLC is of great significance to provide a chance to improve survival.
We constructed predictive models to evaluate the predictive value of four tumor biomarkers by including serum human epididymis protein 4 (HE4), carcinoembryonic antigen (CEA), squamous cell carcinoma antigen (SCCA), and cytokeratin 19 fragment (CY21-1) on detecting NSCLC in a Chinese elderly population.
A total of 363 patients with NSCLC and 433 subjects without cancer (healthy control group) were admitted to the respiratory department in our hospital. We assessed serum levels of these four tumor biomarkers in the two groups and then the predictive value of predictive models was evaluated.
Serum median values of HE4 (143.3 pmol/L), CEA (4.60 ng/mL), SCCA (1.52 ng/mL), and CY21-1 (5.36 ng/mL) in patients with NSCLC were significantly higher than the healthy control group, respectively (all <0.05). A multivariate logistic regression model showed that HE4 (OR=2.10, 95% CI=1.22-4.42, =0.013), CEA (OR=2.30, 95% CI=1.44-4.53, =0.004), SCCA (OR=2.20, 95% CI=1.29-4.55, =0.011), and CY21-1 (OR=2.60, 95% CI=1.56-6.25, <0.001) were significantly and independently associated with increased risk of NSCLC on admission after confounding factors were corrected. Importantly, the ROC curve suggested HE4 had a good value on predicting NSCLC in the Chinese elderly population. Additionally, the predictive model (CEA+SCCA+CY21-1+HE4) had better idea capability to detecting the existence of NSCLC (AUC=0.954, 95% CI=0.927-0.999, <0.001).
Our study showed that several lung cancer-related biomarkers were used to build prediction models, which has good value for early prediction of NSCLC.
非小细胞肺癌(NSCLC)患者的生存率仍然很低。NSCLC的早期检测对于提高生存几率具有重要意义。
我们构建了预测模型,通过纳入血清人附睾蛋白4(HE4)、癌胚抗原(CEA)、鳞状细胞癌抗原(SCCA)和细胞角蛋白19片段(CY21-1)这四种肿瘤生物标志物,来评估其对中国老年人群中NSCLC的预测价值。
我院呼吸科共收治了363例NSCLC患者和433例无癌症的受试者(健康对照组)。我们评估了两组中这四种肿瘤生物标志物的血清水平,然后评估了预测模型的预测价值。
NSCLC患者血清中HE4(143.3 pmol/L)、CEA(4.60 ng/mL)、SCCA(1.52 ng/mL)和CY21-1(5.36 ng/mL)的中位数显著高于健康对照组(均P<0.05)。多因素logistic回归模型显示,校正混杂因素后,HE4(OR=2.10,95%CI=1.22-4.42,P=0.013)、CEA(OR=2.30,95%CI=1.44-4.53,P=0.004)、SCCA(OR=2.20,95%CI=1.29-4.55,P=0.011)和CY21-1(OR=2.60,95%CI=1.56-6.25,P<0.001)与入院时NSCLC风险增加显著且独立相关。重要的是,ROC曲线表明HE4在中国老年人群中对NSCLC具有良好的预测价值。此外,预测模型(CEA+SCCA+CY21-1+HE4)对检测NSCLC的存在具有更好的预测能力(AUC=0.954,95%CI=0.927-0.999,P<0.001)。
我们的研究表明,几种肺癌相关生物标志物可用于构建预测模型,对NSCLC的早期预测具有良好价值。