Department of Laboratory Medicine, The Affiliated Hospital of Southwest Medical University, Luzhou 646000, P.R. China.
Department of Pathophysiology, Mudanjiang Medical University, Mudanjiang 157011, P.R. China.
Exp Biol Med (Maywood). 2023 May;248(10):829-838. doi: 10.1177/15353702231177013. Epub 2023 Jul 4.
This study set out to establish a lung cancer diagnosis and prediction model uses conventional laboratory indicators combined with tumor markers, so as to help early screening and auxiliary diagnosis of lung cancer through a convenient, fast, and cheap way, and improve the early diagnosis rate of lung cancer. A total of 221 patients with lung cancer, 100 patients with benign pulmonary diseases, and 184 healthy subjects were retrospectively studied. General clinical data, the results of conventional laboratory indicators, and tumor markers were collected. Statistical Product and Service Solutions 26.0 was used for data analysis. The diagnosis and prediction model of lung cancer was established by artificial neural network - multilayer perceptron. After correlation and difference analysis, five comparison groups (lung cancer-benign lung disease group, lung cancer-health group, benign lung disease-health group, early-stage lung cancer-benign lung disease group, and early-stage lung cancer-health group) obtained 5, 28, 25, 16, and 25 valuable indicators for predicting lung cancer or benign lung disease, and then established five diagnostic prediction models, respectively. The area under the curve (AUC) of each combined diagnostic prediction model (0.848, 0.989, 0.949, 0.841, and 0.976) was higher than that of the diagnostic prediction model established only using tumor markers (0.799, 0.941, 0.830, 0.661, and 0.850), and the difference in the lung cancer-health group, the benign lung disease-health group, the early-stage lung cancer-benign lung disease group, and early-stage lung cancer-health group was statistically significant ( < 0.05). The artificial neural network-based diagnostic models for lung cancer combining conventional indicators with tumor markers have high performance and clinical significance in assisting the diagnosis of early lung cancer.
本研究旨在建立一种使用常规实验室指标结合肿瘤标志物的肺癌诊断和预测模型,以便通过方便、快速和廉价的方式帮助早期筛查和辅助诊断肺癌,并提高肺癌的早期诊断率。回顾性研究了 221 例肺癌患者、100 例良性肺部疾病患者和 184 例健康受试者。收集了一般临床数据、常规实验室指标和肿瘤标志物的结果。使用统计产品与解决方案 26.0 进行数据分析。通过人工神经网络-多层感知器建立肺癌的诊断和预测模型。经过相关性和差异性分析,在五个比较组(肺癌-良性肺部疾病组、肺癌-健康组、良性肺部疾病-健康组、早期肺癌-良性肺部疾病组和早期肺癌-健康组)中获得了 5、28、25、16 和 25 个有价值的预测肺癌或良性肺部疾病的指标,并分别建立了五个诊断预测模型。每个联合诊断预测模型(0.848、0.989、0.949、0.841 和 0.976)的曲线下面积(AUC)均高于仅使用肿瘤标志物建立的诊断预测模型(0.799、0.941、0.830、0.661 和 0.850),且在肺癌-健康组、良性肺部疾病-健康组、早期肺癌-良性肺部疾病组和早期肺癌-健康组之间的差异具有统计学意义(<0.05)。基于人工神经网络的结合常规指标和肿瘤标志物的肺癌诊断模型在辅助早期肺癌诊断方面具有较高的性能和临床意义。