Hu Zeyang, Zhang Xia, Yang Jinqiu, Zhang Bailing, Chen Hang, Shen Wei, Li Hongxiang, Zhou Yipeng, Zhang Jiaheng, Qiu Keyue, Xie Zijun, Xu Guodong, Tan Jian, Pang Chaoyi
The Third People's Hospital Health Care Group Of Cixi, Ningbo, China.
NingboTech University, Ningbo, China.
Sci Rep. 2025 Jul 2;15(1):22697. doi: 10.1038/s41598-025-05986-y.
To propose a deep learning model and explore its performance in the auxiliary diagnosis of lung cancer associated with cystic airspaces (LCCA) in computed tomography (CT) images. This study is a retrospective analysis that incorporated a total of 342 CT series, comprising 272 series from patients diagnosed with LCCA and 70 series from patients with pulmonary bulla. A deep learning model named LungSSFNet, developed based on nnUnet, was utilized for image recognition and segmentation by experienced thoracic surgeons. The dataset was divided into a training set (245 series), a validation set (62 series), and a test set (35 series). The performance of LungSSFNet was compared with other models such as UNet, M2Snet, TANet, MADGNet, and nnUnet to evaluate its effectiveness in recognizing and segmenting LCCA and pulmonary bulla. LungSSFNet achieved an intersection over union of 81.05% and a Dice similarity coefficient of 75.15% for LCCA, and 93.03% and 92.04% for pulmonary bulla, respectively. These outcomes demonstrate that LungSSFNet outperformed many existing models in segmentation tasks. Additionally, it attained an accuracy of 96.77%, a precision of 100%, and a sensitivity of 96.15%. LungSSFNet, a new deep-learning model, substantially improved the diagnosis of early-stage LCCA and is potentially valuable for auxiliary clinical decision-making. Our LungSSFNet code is available at https://github.com/zx0412/LungSSFNet .
提出一种深度学习模型,并探讨其在计算机断层扫描(CT)图像中辅助诊断与囊性气腔相关的肺癌(LCCA)的性能。本研究是一项回顾性分析,共纳入342个CT序列,其中272个序列来自被诊断为LCCA的患者,70个序列来自肺大疱患者。基于nnUnet开发的名为LungSSFNet的深度学习模型,由经验丰富的胸外科医生用于图像识别和分割。数据集被分为训练集(245个序列)、验证集(62个序列)和测试集(35个序列)。将LungSSFNet的性能与其他模型如UNet、M2Snet、TANet、MADGNet和nnUnet进行比较,以评估其在识别和分割LCCA及肺大疱方面的有效性。LungSSFNet在LCCA方面的交并比为81.05%,Dice相似系数为75.15%,在肺大疱方面分别为93.03%和92.04%。这些结果表明,LungSSFNet在分割任务中优于许多现有模型。此外,它的准确率为96.77%,精确率为100%,灵敏度为96.15%。LungSSFNet这一新的深度学习模型显著改善了早期LCCA的诊断,对辅助临床决策具有潜在价值。我们的LungSSFNet代码可在https://github.com/zx0412/LungSSFNet获取。