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Deep learning applied to two-dimensional color Doppler flow imaging ultrasound images significantly improves diagnostic performance in the classification of breast masses: a multicenter study

Deep learning applied to two-dimensional color Doppler flow imaging ultrasound images significantly improves diagnostic performance in the classification of breast masses: a multicenter study

摘要Background::The current deep learning diagnosis of breast masses is mainly reflected by the diagnosis of benign and malignant lesions. In China, breast masses are divided into four categories according to the treatment method: inflammatory masses, adenosis, benign tumors, and malignant tumors. These categorizations are important for guiding clinical treatment. In this study, we aimed to develop a convolutional neural network (CNN) for classification of these four breast mass types using ultrasound (US) images.Methods::Taking breast biopsy or pathological examinations as the reference standard, CNNs were used to establish models for the four-way classification of 3623 breast cancer patients from 13 centers. The patients were randomly divided into training and test groups ( n = 1810 vs. n = 1813). Separate models were created for two-dimensional (2D) images only, 2D and color Doppler flow imaging (2D-CDFI), and 2D-CDFI and pulsed wave Doppler (2D-CDFI-PW) images. The performance of these three models was compared using sensitivity, specificity, area under receiver operating characteristic curve (AUC), positive (PPV) and negative predictive values (NPV), positive (LR+) and negative likelihood ratios (LR-), and the performance of the 2D model was further compared between masses of different sizes with above statistical indicators, between images from different hospitals with AUC, and with the performance of 37 radiologists. Results::The accuracies of the 2D, 2D-CDFI, and 2D-CDFI-PW models on the test set were 87.9%, 89.2%, and 88.7%, respectively. The AUCs for classification of benign tumors, malignant tumors, inflammatory masses, and adenosis were 0.90, 0.91, 0.90, and 0.89, respectively (95% confidence intervals [CIs], 0.87-0.91, 0.89-0.92, 0.87-0.91, and 0.86-0.90). The 2D-CDFI model showed better accuracy (89.2%) on the test set than the 2D (87.9%) and 2D-CDFI-PW (88.7%) models. The 2D model showed accuracy of 81.7% on breast masses ≤1 cm and 82.3% on breast masses >1 cm; there was a significant difference between the two groups ( P < 0.001). The accuracy of the CNN classifications for the test set (89.2%) was significantly higher than that of all the radiologists (30%). Conclusions::The CNN may have high accuracy for classification of US images of breast masses and perform significantly better than human radiologists.Trial registration::Chictr.org, ChiCTR1900021375; http://www.chictr.org.cn/showproj.aspx?proj=33139.

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abstractsBackground::The current deep learning diagnosis of breast masses is mainly reflected by the diagnosis of benign and malignant lesions. In China, breast masses are divided into four categories according to the treatment method: inflammatory masses, adenosis, benign tumors, and malignant tumors. These categorizations are important for guiding clinical treatment. In this study, we aimed to develop a convolutional neural network (CNN) for classification of these four breast mass types using ultrasound (US) images.Methods::Taking breast biopsy or pathological examinations as the reference standard, CNNs were used to establish models for the four-way classification of 3623 breast cancer patients from 13 centers. The patients were randomly divided into training and test groups ( n = 1810 vs. n = 1813). Separate models were created for two-dimensional (2D) images only, 2D and color Doppler flow imaging (2D-CDFI), and 2D-CDFI and pulsed wave Doppler (2D-CDFI-PW) images. The performance of these three models was compared using sensitivity, specificity, area under receiver operating characteristic curve (AUC), positive (PPV) and negative predictive values (NPV), positive (LR+) and negative likelihood ratios (LR-), and the performance of the 2D model was further compared between masses of different sizes with above statistical indicators, between images from different hospitals with AUC, and with the performance of 37 radiologists. Results::The accuracies of the 2D, 2D-CDFI, and 2D-CDFI-PW models on the test set were 87.9%, 89.2%, and 88.7%, respectively. The AUCs for classification of benign tumors, malignant tumors, inflammatory masses, and adenosis were 0.90, 0.91, 0.90, and 0.89, respectively (95% confidence intervals [CIs], 0.87-0.91, 0.89-0.92, 0.87-0.91, and 0.86-0.90). The 2D-CDFI model showed better accuracy (89.2%) on the test set than the 2D (87.9%) and 2D-CDFI-PW (88.7%) models. The 2D model showed accuracy of 81.7% on breast masses ≤1 cm and 82.3% on breast masses >1 cm; there was a significant difference between the two groups ( P < 0.001). The accuracy of the CNN classifications for the test set (89.2%) was significantly higher than that of all the radiologists (30%). Conclusions::The CNN may have high accuracy for classification of US images of breast masses and perform significantly better than human radiologists.Trial registration::Chictr.org, ChiCTR1900021375; http://www.chictr.org.cn/showproj.aspx?proj=33139.

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作者 Yu Teng-Fei [1] He Wen [1] Gan Cong-Gui [2] Zhao Ming-Chang [2] Zhu Qiang [3] Zhang Wei [4] Wang Hui [5] Luo Yu-Kun [6] Nie Fang [7] Yuan Li-Jun [8] Wang Yong [9] Guo Yan-Li [10] Yuan Jian-Jun [11] Ruan Li-Tao [12] Wang Yi-Cheng [13] Zhang Rui-Fang [14] Zhang Hong-Xia [1] Ning Bin [1] Song Hai-Man [1] Zheng Shuai [1] Li Yi [1] Guang Yang [1] 学术成果认领
作者单位 Department of Ultrasound, Beijing Tian Tan Hospital, Capital Medical University, Beijing 100070, China [1] Department of R amp;D, CHISON Medical Technologies Co., Ltd, Wuxi, Jiangsu 214028, China [2] Department of Ultrasound, Beijing Tongren Hospital, Capital Medical University, Beijing 100730, China [3] Department of Ultrasound, The Third Affiliated Hospital of Guangxi Medical University, Nanning, Guangxi 9530031, China [4] Department of Ultrasound, China-Japan Union Hospital of Jilin University, Changchun, Jilin 130033, China [5] Department of Ultrasound, Chinese PLA General Hospital, Beijing 100850, China [6] Department of Ultrasound, Lanzhou University Second Hospital, Lanzhou, Gansu 730030, China [7] Department of Ultrasound, Xi’an Tangdu Hospital of No. 4 Military Medical University, Xi’an, Shaanxi 710038, China [8] Department of Ultrasound, Chinese Academy of Medical Sciences Cancer Institute and Hospital, Beijing 100021, China [9] Department of Ultrasound, The Third Military Medical University Southwest Hospital, Chongqing 400038, China [10] Department of Ultrasound, Henan Provincial People’s Hospital, Zhengzhou city, Henan 450003, China [11] Department of Ultrasound, Xi’an Jiaotong University Medical College First Affiliated Hospital, Xi’an, Shaanxi 710061, China [12] Department of Ultrasound, Hebei Medical University First Affiliated Hospital, Zhangjiakou, Hebei 075061, China [13] Department of Ultrasound, Zhengzhou University First Affiliated Hospital, Zhengzhou, Henan 450052, China [14]
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DOI 10.1097/CM9.0000000000001329
发布时间 2025-04-22
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