Guo Hua, Zhao Wei, Li Chunsun, Wu Zhen, Yu Ling, Wang Miaoyu, Wei Yuanhui, Wang Zirui, Liu Shangshu, Yin Yue, Yang Zhen, Chen Liangan
Medical School of Chinese People's Liberation Army, Beijing, China.
Department of Pulmonary and Critical Care Medicine, Chinese People's Liberation Army General Hospital, Beijing, China.
Front Oncol. 2024 Nov 26;14:1499140. doi: 10.3389/fonc.2024.1499140. eCollection 2024.
Persistent ground-glass nodules (GGNs) carry a potential risk of malignancy, however, early diagnosis remained challenging. This study aimed to investigate the cut-off values of seven autoantibodies in patients with ground-glass nodules smaller than 3cm, and to construct machine learning models to assess the diagnostic value of these autoantibodies.
In this multi-center retrospective study, we collected peripheral blood specimens from a total of 698 patients. A total of 466 patients with ground-glass nodular lung adenocarcinoma no more than 3cm were identified as a case group based on pathological reports and imaging data, and control group (n=232) of patients consisted of 90 patients with benign nodules and 142 patients with health check-ups. Seven antibodies were quantified in the serum of all participants using enzyme-linked immunosorbent assay (ELISA), and the working characteristic curves of the subjects were plotted to determine the cut-off values of the seven autoantibodies related ground-glass nodular lung adenocarcinoma early. Subsequently, the patients were randomly divided into a training and test set at a 7:3 ratio. Eight machine-learning models were constructed to compare the diagnostic performances of multiple models. The model performances were evaluated using sensitivity, specificity, and the area under the curve (AUC).
The serum levels of the seven autoantibodies in case group were significantly higher than those in the control group (P < 0.05). The combination of the seven autoantibodies demonstrated a significantly enhanced diagnostic efficacy in identifying ground-glass nodular lung adenocarcinoma early when compared to the diagnostic efficacy of the autoantibodies when used respectively. The combined diagnostic approach of the seven autoantibodies exhibited a sensitivity of 84.05%, specificity of 91.85%, and AUC of 0.8870, surpassing the performance of each autoantibody used individually. Furthermore, we determined that Sparrow Search Algorithm-XGBoost (SSA-XGBOOST) had the best diagnostic performance among the models (AUC=0.9265), with MAGEA1, P53, and PGP9.5 having significant feature weight proportions.
Our research assessed the diagnostic performance of seven autoantibodies in patients with ground-glass nodules for benign-malignant distinction, and the nodules are all no more than 3cm especially. Our study set cut-off values for seven autoantibodies in identifying GGNs no more than 3cm and constructed a machine learning model for effective diagnosis. This provides a non-invasive and highly discriminative method for the evaluation of ground-glass nodules in high-risk patients.
持续性磨玻璃结节(GGN)具有潜在的恶性风险,然而早期诊断仍然具有挑战性。本研究旨在探讨7种自身抗体在直径小于3cm的磨玻璃结节患者中的临界值,并构建机器学习模型以评估这些自身抗体的诊断价值。
在这项多中心回顾性研究中,我们共收集了698例患者的外周血标本。根据病理报告和影像数据,共466例直径不超过3cm的磨玻璃结节型肺腺癌患者被确定为病例组,对照组(n = 232)由90例良性结节患者和142例健康体检患者组成。使用酶联免疫吸附测定(ELISA)对所有参与者血清中的7种抗体进行定量,并绘制受试者工作特征曲线以确定7种与磨玻璃结节型肺腺癌相关的自身抗体的临界值。随后,将患者以7:3的比例随机分为训练集和测试集。构建8种机器学习模型以比较多种模型的诊断性能。使用敏感性、特异性和曲线下面积(AUC)评估模型性能。
病例组7种自身抗体的血清水平显著高于对照组(P < 0.05)。与分别使用这些自身抗体时的诊断效能相比,7种自身抗体联合检测在早期识别磨玻璃结节型肺腺癌方面具有显著增强的诊断效能。7种自身抗体联合诊断方法的敏感性为84.05%,特异性为91.85%,AUC为0.8870,超过了单独使用每种自身抗体的性能。此外,我们确定麻雀搜索算法-极端梯度提升(SSA-XGBOOST)在模型中具有最佳诊断性能(AUC = 0.9265),其中MAGEA1、P53和PGP9.5具有显著的特征权重比例。
我们的研究评估了7种自身抗体在磨玻璃结节患者中区分良恶性的诊断性能,尤其是所有结节均不超过3cm的患者。我们的研究设定了7种自身抗体在识别不超过3cm的GGN中的临界值,并构建了用于有效诊断的机器学习模型。这为评估高危患者的磨玻璃结节提供了一种非侵入性且具有高度鉴别力的方法。