Department of Radiology, the Fifth Medical Center of Chinese PLA General Hospital, Beijing, China.
Algorithm Center, Keya Medical Technology Co., Ltd, Shenzhen, China.
Front Cell Infect Microbiol. 2023 Mar 3;13:1116285. doi: 10.3389/fcimb.2023.1116285. eCollection 2023.
There is an urgent need to find an effective and accurate method for triaging coronavirus disease 2019 (COVID-19) patients from millions or billions of people. Therefore, this study aimed to develop a novel deep-learning approach for COVID-19 triage based on chest computed tomography (CT) images, including normal, pneumonia, and COVID-19 cases.
A total of 2,809 chest CT scans (1,105 COVID-19, 854 normal, and 850 non-3COVID-19 pneumonia cases) were acquired for this study and classified into the training set (n = 2,329) and test set (n = 480). A U-net-based convolutional neural network was used for lung segmentation, and a mask-weighted global average pooling (GAP) method was proposed for the deep neural network to improve the performance of COVID-19 classification between COVID-19 and normal or common pneumonia cases.
The results for lung segmentation reached a dice value of 96.5% on 30 independent CT scans. The performance of the mask-weighted GAP method achieved the COVID-19 triage with a sensitivity of 96.5% and specificity of 87.8% using the testing dataset. The mask-weighted GAP method demonstrated 0.9% and 2% improvements in sensitivity and specificity, respectively, compared with the normal GAP. In addition, fusion images between the CT images and the highlighted area from the deep learning model using the Grad-CAM method, indicating the lesion region detected using the deep learning method, were drawn and could also be confirmed by radiologists.
This study proposed a mask-weighted GAP-based deep learning method and obtained promising results for COVID-19 triage based on chest CT images. Furthermore, it can be considered a convenient tool to assist doctors in diagnosing COVID-19.
从数百万人或数十亿人中筛选出 2019 年冠状病毒病(COVID-19)患者,这是一项紧迫的任务。因此,本研究旨在开发一种基于胸部计算机断层扫描(CT)图像的 COVID-19 分诊的新型深度学习方法,包括正常、肺炎和 COVID-19 病例。
本研究共获取了 2809 例胸部 CT 扫描(1105 例 COVID-19、854 例正常和 850 例非 COVID-19 肺炎病例),并将其分为训练集(n=2329)和测试集(n=480)。使用基于 U-net 的卷积神经网络进行肺分割,并提出了一种掩模加权全局平均池化(GAP)方法,用于深度神经网络,以提高 COVID-19 与正常或常见肺炎病例之间的分类性能。
在 30 次独立 CT 扫描中,肺分割的 Dice 值达到 96.5%。使用测试数据集,掩模加权 GAP 方法的 COVID-19 分诊性能达到了敏感性 96.5%和特异性 87.8%。与正常 GAP 相比,掩模加权 GAP 方法的敏感性和特异性分别提高了 0.9%和 2%。此外,使用 Grad-CAM 方法绘制了 CT 图像与深度学习模型高亮区域之间的融合图像,指示使用深度学习方法检测到的病变区域,这些图像也可以得到放射科医生的确认。
本研究提出了一种基于掩模加权 GAP 的深度学习方法,基于胸部 CT 图像对 COVID-19 分诊取得了有前景的结果。此外,它可以被视为一种辅助医生诊断 COVID-19 的便捷工具。