Liao Tingting, Li Lin, Ouyang Rushan, Lin Xiaohui, Lai Xiaohui, Cheng Guanxun, Ma Jie
Department of Radiology, The Second Clinical Medical College of Jinan University, Shenzhen 518020, China.
Department of Radiology, Shenzhen People's Hospital, the Second Clinical Medical College, Jinan University, Shenzhen 518020, China.
Eur J Radiol Open. 2023 Jul 1;11:100502. doi: 10.1016/j.ejro.2023.100502. eCollection 2023 Dec.
To investigate the effectiveness of a deep learning system based on the DenseNet convolutional neural network in diagnosing benign and malignant asymmetric lesions in mammography.
Clinical and image data from 460 women aged 23-82 years (47.57 ± 8.73 years) with asymmetric lesions who underwent mammography at Shenzhen People's Hospital, Shenzhen Luohu District People's Hospital, and Shenzhen Hospital of Peking University from December 2019 to December 2020 were retrospectively analyzed. Two senior radiologists, two junior radiologists, and the DL system read the mammographic images of 460 patients, respectively, and finally recorded the BI-RADS classification of asymmetric lesions. We then used the area under the curve (AUC) of the receiver operating characteristic (ROC) to evaluate the diagnostic efficacy and the difference between AUCs by the Delong method.
Specificity (0.909 vs. 0.835, 0.790, =8.21 and 17.22, <0.05) and precision (0.872 vs. 0.763, 0.726, =9.23 and 5.22, <0.05) of the DL system in the diagnosis of benign and malignant asymmetric lesions were higher than those of junior radiologist A and B, and there was a statistically significant difference between AUCs (0.778 vs. 0.579, 0.564, Z = 4.033 and 4.460, <0.05). Furthermore, the AUC (0.778 vs. 0.904, 0.862, Z = 3.191, and 2.167, <0.05) of benign and malignant asymmetric lesions diagnosed by the DL system was lower than that of senior radiologist A and senior radiologist B.
The DL system based on the DenseNet convolution neural network has high diagnostic efficiency, which can help junior radiologists evaluate benign and malignant asymmetric lesions more accurately. It can also improve diagnostic accuracy and reduce missed diagnoses caused by inexperienced junior radiologists.
探讨基于DenseNet卷积神经网络的深度学习系统在诊断乳腺钼靶中良性和恶性不对称性病变的有效性。
回顾性分析2019年12月至2020年12月在深圳市人民医院、深圳市罗湖区人民医院和北京大学深圳医院接受乳腺钼靶检查的460例年龄在23 - 82岁(平均47.57 ± 8.73岁)有不对称性病变的女性的临床和影像数据。两名资深放射科医生、两名初级放射科医生以及深度学习系统分别阅读460例患者的乳腺钼靶图像,最后记录不对称性病变的BI-RADS分类。然后我们使用受试者操作特征(ROC)曲线下面积(AUC)来评估诊断效能,并通过德龙法比较AUC之间的差异。
深度学习系统在诊断良性和恶性不对称性病变时的特异性(0.909对0.835、0.790,Z = 8.21和17.22,P < 0.05)和精确率(0.872对0.763、0.726,Z = 9.23和5.22,P < 0.05)高于初级放射科医生A和B,且AUC之间存在统计学显著差异(0.778对0.579、0.564,Z = 4.033和4.460,P < 0.05)。此外,深度学习系统诊断良性和恶性不对称性病变的AUC(0.778对0.904、0.862,Z = 3.191和2.167,P < 0.05)低于资深放射科医生A和资深放射科医生B。
基于DenseNet卷积神经网络的深度学习系统具有较高的诊断效率,可帮助初级放射科医生更准确地评估良性和恶性不对称性病变。它还可以提高诊断准确性,减少因经验不足的初级放射科医生导致的漏诊。