Department of Medical Imaging, Jinling Hospital, Medical School of Nanjing University, Nanjing, 210002, Jiangsu, China.
Department of Medical Imaging, Taihe Hospital, Shiyan, 442008, Hubei, China.
Eur Radiol. 2020 Dec;30(12):6517-6527. doi: 10.1007/s00330-020-07044-9. Epub 2020 Jul 2.
To utilize a deep learning model for automatic detection of abnormalities in chest CT images from COVID-19 patients and compare its quantitative determination performance with radiological residents.
A deep learning algorithm consisted of lesion detection, segmentation, and location was trained and validated in 14,435 participants with chest CT images and definite pathogen diagnosis. The algorithm was tested in a non-overlapping dataset of 96 confirmed COVID-19 patients in three hospitals across China during the outbreak. Quantitative detection performance of the model was compared with three radiological residents with two experienced radiologists' reading reports as reference standard by assessing the accuracy, sensitivity, specificity, and F1 score.
Of 96 patients, 88 had pneumonia lesions on CT images and 8 had no abnormities on CT images. For per-patient basis, the algorithm showed superior sensitivity of 1.00 (95% confidence interval (CI) 0.95, 1.00) and F1 score of 0.97 in detecting lesions from CT images of COVID-19 pneumonia patients. While for per-lung lobe basis, the algorithm achieved a sensitivity of 0.96 (95% CI 0.94, 0.98) and a slightly inferior F1 score of 0.86. The median volume of lesions calculated by algorithm was 40.10 cm. An average running speed of 20.3 s ± 5.8 per case demonstrated the algorithm was much faster than the residents in assessing CT images (all p < 0.017). The deep learning algorithm can also assist radiologists make quicker diagnosis (all p < 0.0001) with superior diagnostic performance.
The algorithm showed excellent performance in detecting COVID-19 pneumonia on chest CT images compared with resident radiologists.
• The higher sensitivity of deep learning model in detecting COVID-19 pneumonia were found compared with radiological residents on a per-lobe and per-patient basis. • The deep learning model improves diagnosis efficiency by shortening processing time. • The deep learning model can automatically calculate the volume of the lesions and whole lung.
利用深度学习模型自动检测 COVID-19 患者胸部 CT 图像中的异常,并将其定量测定性能与放射科住院医师进行比较。
在包含明确病原体诊断的 14435 名胸部 CT 图像参与者中,训练和验证了一种包含病变检测、分割和定位的深度学习算法。该算法在中国三家医院的爆发期间对 96 例确诊 COVID-19 患者的非重叠数据集进行了测试。通过评估准确性、灵敏度、特异性和 F1 评分,将模型的定量检测性能与三位放射科住院医师与两位有经验的放射科医生的阅读报告进行比较。
96 例患者中,88 例 CT 图像上有肺炎病变,8 例 CT 图像无异常。基于每位患者,该算法在检测 COVID-19 肺炎患者 CT 图像中的病变方面表现出较高的灵敏度 1.00(95%置信区间(CI)0.95,1.00)和 F1 评分 0.97。而基于每肺叶基础,该算法的灵敏度为 0.96(95%CI 0.94,0.98),F1 评分略低为 0.86。算法计算的病变体积中位数为 40.10 cm。平均每个病例的运行速度为 20.3 s ± 5.8,表明该算法比住院医师评估 CT 图像快得多(均 p < 0.017)。深度学习算法还可以帮助放射科医生更快做出诊断(均 p < 0.0001),具有更好的诊断性能。
与放射科住院医师相比,该算法在检测胸部 CT 图像上的 COVID-19 肺炎方面表现出优异的性能。
与基于肺叶和基于每位患者的放射科住院医师相比,深度学习模型在检测 COVID-19 肺炎方面具有更高的灵敏度。
深度学习模型通过缩短处理时间提高诊断效率。
深度学习模型可以自动计算病变和全肺的体积。