Huang Kian A, Venkitasubramony Vishnu, Prakash Neelesh S
Radiology, University of South Florida Morsani College of Medicine, Tampa, USA.
Cureus. 2025 Jun 30;17(6):e87071. doi: 10.7759/cureus.87071. eCollection 2025 Jun.
Background Lung cancer is the leading cause of cancer-related mortality worldwide, with late-stage diagnosis contributing to poor survival rates. Early detection remains a critical challenge, hindered by diagnostic delays, radiologist shortages, and the limitations of current imaging workflows. Recent advances in artificial intelligence (AI), particularly deep learning, offer new avenues to enhance diagnostic accuracy and efficiency in radiology. Objective To develop and evaluate a deep learning model integrating Residual Network 50 Version 2 (ResNet50V2) with Squeeze-and-Excitation (SE) blocks for automated classification of lung cancer subtypes from computed tomography (CT) images. Methods A total of 1,000 anonymized lung CT images were obtained from a publicly available Kaggle dataset, categorized into four classes: adenocarcinoma, large cell carcinoma, squamous cell carcinoma, and normal tissue. The dataset was split into training (70%), validation (10%), and test (20%) sets. A fine-tuned ResNet50V2 architecture with SE blocks was used to enhance channel-wise feature recalibration. The model was trained using categorical cross-entropy loss with label smoothing and optimized via Adam. Performance was evaluated using accuracy, area under the receiver operating characteristic curve (AUC), precision, recall, and F1-score. Results The model achieved a test accuracy of 90.16% and an overall AUC of 0.9815. Class-wise AUCs were high across all categories: 0.9523 for adenocarcinoma, 0.9879 for large cell carcinoma, 0.9977 for normal tissue, and 0.9880 for squamous cell carcinoma. Precision ranged from 0.81 (large cell carcinoma) to 1.00 (normal tissue), while recall ranged from 0.85 (adenocarcinoma) to 0.98 (large cell carcinoma). F1-scores were consistently strong, ranging from 0.88 to 0.96. Conclusion The integration of SE blocks with ResNet50V2 yielded a high-performing model capable of accurately classifying lung cancer subtypes from CT images. The approach shows promise for assisting radiologists in diagnostic decision-making, particularly in settings with limited expert availability. Future work should focus on external validation, model interpretability, and exploration of emerging architectures such as Vision Transformers for enhanced performance and clinical adoption.
肺癌是全球癌症相关死亡的主要原因,晚期诊断导致生存率低下。早期检测仍然是一项关键挑战,受到诊断延迟、放射科医生短缺以及当前成像工作流程的限制。人工智能(AI)的最新进展,尤其是深度学习,为提高放射学诊断的准确性和效率提供了新途径。
开发并评估一种将残差网络50版本2(ResNet50V2)与挤压激励(SE)块相结合的深度学习模型,用于从计算机断层扫描(CT)图像中自动分类肺癌亚型。
从公开可用的Kaggle数据集中获取了总共1000张匿名肺部CT图像,分为四类:腺癌、大细胞癌、鳞状细胞癌和正常组织。数据集被分为训练集(70%)、验证集(10%)和测试集(20%)。使用带有SE块的微调ResNet50V2架构来增强通道级特征重新校准。该模型使用带有标签平滑的分类交叉熵损失进行训练,并通过Adam进行优化。使用准确率、受试者工作特征曲线下面积(AUC)、精确率、召回率和F1分数评估性能。
该模型的测试准确率达到90.16%,总体AUC为0.9815。所有类别的类别特异性AUC都很高:腺癌为0.9523,大细胞癌为0.9879,正常组织为0.9977,鳞状细胞癌为0.9880。精确率范围从0.81(大细胞癌)到1.00(正常组织),而召回率范围从0.85(腺癌)到0.98(大细胞癌)。F1分数始终很高,范围从0.88到0.96。
SE块与ResNet50V2的集成产生了一个高性能模型,能够从CT图像中准确分类肺癌亚型。该方法有望协助放射科医生进行诊断决策,特别是在专家资源有限的情况下。未来的工作应集中在外部验证、模型可解释性以及探索如视觉Transformer等新兴架构以提高性能和临床应用。