Xu Ming-Wei, Zhang Zheng-Hua, Wang Xiao, Li Chun-Tao, Yang Hui-Yun, Liao Ze-Hua, Zhang Jian-Qing
Department of Respiratory Critical Care Medicine, The First Affiliated Hospital of Kunming Medical University, Kunming, 650032, Yunnan, People's Republic of China.
Medical Imaging Department, The First Affiliated Hospital of Kunming Medical University, Kunming, Yunnan, 650032, People's Republic of China.
Comput Biol Med. 2025 Sep;195:110618. doi: 10.1016/j.compbiomed.2025.110618. Epub 2025 Jun 20.
High-resolution computed tomography (HRCT) is helpful for diagnosing interstitial lung diseases (ILD), but it largely depends on the experience of physicians. Herein, our study aims to develop a deep-learning-based classification model to differentiate the three common types of ILD, so as to provide a reference to help physicians make the diagnosis and improve the accuracy of ILD diagnosis.
Patients were selected from four tertiary Grade A hospitals in Kunming based on inclusion and exclusion criteria. HRCT scans of 130 patients were included. The imaging manifestations were usual interstitial pneumonia (UIP), non-specific interstitial pneumonia (NSIP), and organizing pneumonia (OP). Additionally, 50 chest HRCT cases without imaging abnormalities during the same period were selected.Construct a data set. Conduct the training, validation, and testing of the Parallel Multi-scale Feature Fusion Network (PMFF-Net) deep learning model. Utilize Python software to generate data and charts pertaining to model performance. Assess the model's accuracy, precision, recall, and F1-score, and juxtapose its diagnostic efficacy against that of physicians across various hospital levels, with differing levels of seniority, and from various departments.
The PMFF -Net deep learning model is capable of classifying imaging types such as UIP, NSIP, and OP, as well as normal imaging. In a mere 105 s, it makes the diagnosis for 18 HRCT images with a diagnostic accuracy of 92.84 %, precision of 91.88 %, recall of 91.95 %, and an F1 score of 0.9171. The diagnostic accuracy of senior radiologists (83.33 %) and pulmonologists (77.77 %) from tertiary hospitals is higher than that of internists from secondary hospitals (33.33 %). Meanwhile, the diagnostic accuracy of middle-aged radiologists (61.11 %) and pulmonologists (66.66 %) are higher than junior radiologists (38.88 %) and pulmonologists (44.44 %) in tertiary hospitals, whereas junior and middle-aged internists at secondary hospitals were unable to complete the tests.
This study found that the PMFF-Net model can effectively classify UIP, NSIP, OP imaging types, and normal imaging, which can help doctors of different hospital levels and departments make clinical decisions quickly and effectively.
高分辨率计算机断层扫描(HRCT)有助于诊断间质性肺疾病(ILD),但很大程度上依赖于医生的经验。在此,我们的研究旨在开发一种基于深度学习的分类模型,以区分三种常见的ILD类型,从而为帮助医生进行诊断并提高ILD诊断的准确性提供参考。
根据纳入和排除标准,从昆明的四家三级甲等医院选取患者。纳入130例患者的HRCT扫描。影像学表现为寻常型间质性肺炎(UIP)、非特异性间质性肺炎(NSIP)和机化性肺炎(OP)。此外,同期选取50例无影像学异常的胸部HRCT病例。构建数据集。对并行多尺度特征融合网络(PMFF-Net)深度学习模型进行训练、验证和测试。利用Python软件生成与模型性能相关的数据和图表。评估模型的准确性、精确性、召回率和F1分数,并将其诊断效能与不同医院级别、不同资历以及不同科室的医生的诊断效能进行对比。
PMFF-Net深度学习模型能够对UIP、NSIP、OP等影像学类型以及正常影像进行分类。在仅105秒内,它就能对18张HRCT图像进行诊断,诊断准确率为92.84%,精确率为91.88%,召回率为91.95%,F1分数为0.9171。三级医院的高级放射科医生(83.33%)和肺科医生(77.77%)的诊断准确率高于二级医院的内科医生(33.33%)。同时,三级医院中年放射科医生(61.11%)和肺科医生(66.66%)的诊断准确率高于初级放射科医生(38.88%)和肺科医生(44.44%),而二级医院的初级和中年内科医生无法完成测试。
本研究发现,PMFF-Net模型能够有效对UIP、NSIP、OP影像学类型以及正常影像进行分类,这有助于不同医院级别和科室的医生快速有效地做出临床决策。