Li Xiao, Xu Ming, Yan Ziye, Xia Fanbo, Li Shuqiang, Zhang Yanlin, Xing Zhenzhen, Guan Li
Peking University Third Hospital, Beijing, China.
Beijing Tianming Innovation Data Technology Co., Ltd., Beijing, China.
Front Med (Lausanne). 2024 Jan 29;11:1290729. doi: 10.3389/fmed.2024.1290729. eCollection 2024.
Pneumoconiosis is the most important occupational disease all over the world, with high prevalence and mortality. At present, the monitoring of workers exposed to dust and the diagnosis of pneumoconiosis rely on manual interpretation of chest radiographs, which is subjective and low efficiency. With the development of artificial intelligence technology, a more objective and efficient computer aided system for pneumoconiosis diagnosis can be realized. Therefore, the present study reported a novel deep learning (DL) artificial intelligence (AI) system for detecting pneumoconiosis in digital frontal chest radiographs, based on which we aimed to provide references for radiologists.
We annotated 49,872 chest radiographs from patients with pneumoconiosis and workers exposed to dust using a self-developed tool. Next, we used the labeled images to train a convolutional neural network (CNN) algorithm developed for pneumoconiosis screening. Finally, the performance of the trained pneumoconiosis screening model was validated using a validation set containing 495 chest radiographs.
Approximately, 51% (25,435/49,872) of the chest radiographs were labeled as normal. Pneumoconiosis was detected in 49% (24,437/49,872) of the labeled radiographs, among which category-1, category-2, and category-3 pneumoconiosis accounted for 53.1% (12,967/24,437), 20.4% (4,987/24,437), and 26.5% (6,483/24,437) of the patients, respectively. The CNN DL algorithm was trained using these data. The validation set of 495 digital radiography chest radiographs included 261 cases of pneumoconiosis and 234 cases of non-pneumoconiosis. As a result, the accuracy of the AI system for pneumoconiosis identification was 95%, the area under the curve was 94.7%, and the sensitivity was 100%.
DL algorithm based on CNN helped screen pneumoconiosis in the chest radiographs with high performance; thus, it could be suitable for diagnosing pneumoconiosis automatically and improve the efficiency of radiologists.
尘肺病是全球最重要的职业病,其患病率和死亡率都很高。目前,对接触粉尘工人的监测以及尘肺病的诊断依赖于胸部X光片的人工解读,这种方式主观且效率低下。随着人工智能技术的发展,可以实现一种更客观、高效的尘肺病诊断计算机辅助系统。因此,本研究报告了一种用于在数字化胸部正位X光片中检测尘肺病的新型深度学习(DL)人工智能(AI)系统,旨在为放射科医生提供参考。
我们使用自行开发的工具对49872例尘肺病患者和接触粉尘工人的胸部X光片进行标注。接下来,我们使用标注后的图像训练为尘肺病筛查开发的卷积神经网络(CNN)算法。最后,使用包含495例胸部X光片的验证集对训练好的尘肺病筛查模型的性能进行验证。
大约51%(25435/49872)的胸部X光片被标注为正常。在标注的X光片中,49%(24437/49872)检测出尘肺病,其中1期、2期和3期尘肺病分别占患者的53.1%(12967/24437)、20.4%(4987/24437)和26.5%(6483/24437)。使用这些数据训练了CNN DL算法。495例数字化胸部X光片的验证集包括261例尘肺病病例和234例非尘肺病病例。结果,AI系统对尘肺病识别的准确率为95%,曲线下面积为94.7%,灵敏度为100%。
基于CNN的DL算法有助于在胸部X光片中高效筛查尘肺病;因此,它可适用于自动诊断尘肺病并提高放射科医生的效率。