Meng Qingcheng, Ren Pengfei, Guo Lanwei, Gao Pengrui, Liu Tong, Chen Wenda, Liu Wentao, Peng Hui, Fang Mengjia, Meng Shuo, Ge Hong, Li Meng, Chen Xuejun
Department of Radiology, The Affiliated Cancer Hospital of Zhengzhou University & Henan Cancer Hospital, Zhengzhou, China.
Department of Molecular Pathology, The Affiliated Cancer Hospital of Zhengzhou University & Henan Cancer Hospital, Zhengzhou, China.
BMC Pulm Med. 2025 Jul 29;25(1):361. doi: 10.1186/s12890-025-03807-6.
Deep learning (DL) demonstrates high sensitivity but low specificity in lung cancer (LC) detection during CT screening, and the seven Tumor-associated antigens autoantibodies (7-TAAbs), known for its high specificity in LC, was employed to improve the DL's specificity for the efficiency of LC screening in China.
To develop and evaluate a risk model combining 7-TAAbs test and DL scores for diagnosing LC with pulmonary lesions < 70 mm.
Four hundreds and six patients with 406 lesions were enrolled and assigned into training set (n = 313) and test set (n = 93) randomly. The malignant lesions were defined as those lesions with high malignant risks by DL or those with positive expression of 7-TAAbs panel. Model performance was assessed using the area under the receiver operating characteristic curves (AUC).
In the training set, the AUCs for DL, 7-TAAbs, combined model (DL and 7-TAAbs) and combined model (DL or 7-TAAbs) were 0.771, 0.638, 0.606, 0.809 seperately. In the test set, the combined model (DL or 7-TAAbs) achieved achieved the highest sensitivity (82.6%), NPV (81.8%) and accuracy (79.6%) among four models, and the AUCs of DL model, 7-TAAbs model, combined model (DL and 7-TAAbs), and combined model (DL or 7-TAAbs) were 0.731, 0.679, 0.574, and 0.794, respectively.
The 7-TAAbs test significantly enhances DL performance in predicting LC with pulmonary leisons < 70 mm in China.
深度学习(DL)在CT筛查肺癌(LC)时显示出高敏感性但低特异性,而以其在LC中高特异性著称的七种肿瘤相关抗原自身抗体(7-TAAbs)被用于提高DL在中国LC筛查效率方面的特异性。
开发并评估一种结合7-TAAbs检测和DL评分的风险模型,用于诊断肺部病变小于70mm的LC。
纳入406例有406个病变的患者,并随机分为训练集(n = 313)和测试集(n = 93)。恶性病变定义为通过DL具有高恶性风险的病变或7-TAAbs检测呈阳性表达的病变。使用受试者操作特征曲线下面积(AUC)评估模型性能。
在训练集中,DL、7-TAAbs、联合模型(DL和7-TAAbs)以及联合模型(DL或7-TAAbs)的AUC分别为0.771、0.638、0.606、0.809。在测试集中,联合模型(DL或7-TAAbs)在四个模型中实现了最高的敏感性(82.6%)、阴性预测值(81.8%)和准确性(79.6%),DL模型、7-TAAbs模型、联合模型(DL和7-TAAbs)以及联合模型(DL或7-TAAbs)的AUC分别为0.731、0.679、0.574和0.794。
在中国,7-TAAbs检测显著提高了DL预测肺部病变小于70mm的LC的性能。