Department of Radiology, Guangzhou Eighth People's Hospital, Guangzhou Medical University, Guangzhou, Guangdong, China.
Shenzhen Zhiying Medical Co., Ltd, Shenzhen, Guangdong, China.
J Xray Sci Technol. 2021;29(1):1-17. doi: 10.3233/XST-200735.
Accurate and rapid diagnosis of coronavirus disease (COVID-19) is crucial for timely quarantine and treatment.
In this study, a deep learning algorithm-based AI model using ResUNet network was developed to evaluate the performance of radiologists with and without AI assistance in distinguishing COVID-19 infected pneumonia patients from other pulmonary infections on CT scans.
For model development and validation, a total number of 694 cases with 111,066 CT slides were retrospectively collected as training data and independent test data in the study. Among them, 118 are confirmed COVID-19 infected pneumonia cases and 576 are other pulmonary infection cases (e.g. tuberculosis cases, common pneumonia cases and non-COVID-19 viral pneumonia cases). The cases were divided into training and testing datasets. The independent test was performed by evaluating and comparing the performance of three radiologists with different years of practice experience in distinguishing COVID-19 infected pneumonia cases with and without the AI assistance.
Our final model achieved an overall test accuracy of 0.914 with an area of the receiver operating characteristic (ROC) curve (AUC) of 0.903 in which the sensitivity and specificity are 0.918 and 0.909, respectively. The deep learning-based model then achieved a comparable performance by improving the radiologists' performance in distinguish COVOD-19 from other pulmonary infections, yielding better average accuracy and sensitivity, from 0.941 to 0.951 and from 0.895 to 0.942, respectively, when compared to radiologists without using AI assistance.
A deep learning algorithm-based AI model developed in this study successfully improved radiologists' performance in distinguishing COVID-19 from other pulmonary infections using chest CT images.
准确快速地诊断冠状病毒病(COVID-19)对于及时隔离和治疗至关重要。
本研究开发了一种基于深度学习算法的人工智能(AI)模型,该模型使用 ResUNet 网络,旨在评估放射科医生在 CT 扫描中识别 COVID-19 感染性肺炎患者与其他肺部感染患者时有无 AI 辅助的表现。
为了进行模型开发和验证,本研究共回顾性收集了 694 例病例,共计 111066 张 CT 幻灯片作为训练数据和独立测试数据。其中,118 例为确诊的 COVID-19 感染性肺炎病例,576 例为其他肺部感染病例(如结核病例、普通肺炎病例和非 COVID-19 病毒肺炎病例)。这些病例分为训练和测试数据集。独立测试是通过评估和比较三位具有不同从业经验的放射科医生在有无 AI 辅助的情况下识别 COVID-19 感染性肺炎病例的表现来进行的。
我们的最终模型在独立测试中的整体测试准确率为 0.914,其受试者工作特征(ROC)曲线面积(AUC)为 0.903,其中敏感性和特异性分别为 0.918 和 0.909。基于深度学习的模型通过提高放射科医生在区分 COVID-19 与其他肺部感染方面的表现,获得了可比的性能,与不使用 AI 辅助的放射科医生相比,其平均准确率和敏感性分别从 0.941 提高到 0.951,从 0.895 提高到 0.942。
本研究开发的基于深度学习算法的 AI 模型成功地提高了放射科医生在使用胸部 CT 图像区分 COVID-19 与其他肺部感染方面的表现。