Xu Feng, Zhu Chuang, Wang Zhihao, Zhang Lei, Gao Haifeng, Ma Zhenhai, Gao Yue, Guo Yang, Li Xuewen, Luo Yunzhao, Li Mengxin, Shen Guangqian, Liu He, Li Yanshuang, Zhang Chao, Cui Jianxiu, Li Jie, Jiang Hongchuan, Liu Jun
Department of Breast Surgery, Beijing Chao-Yang Hospital, Capital Medical University, Beijing, China.
School of Artificial Intelligence, Beijing University of Posts and Telecommunications, Beijing, China.
Front Oncol. 2023 Mar 22;13:1103145. doi: 10.3389/fonc.2023.1103145. eCollection 2023.
As a common breast cancer-related complaint, pathological nipple discharge (PND) detected by ductoscopy is often missed diagnosed. Deep learning techniques have enabled great advances in clinical imaging but are rarely applied in breast cancer with PND. This study aimed to design and validate an Intelligent Ductoscopy for Breast Cancer Diagnostic System (IDBCS) for breast cancer diagnosis by analyzing real-time imaging data acquired by ductoscopy.
The present multicenter, case-control trial was carried out in 6 hospitals in China. Images for consecutive patients, aged ≥18 years, with no previous ductoscopy, were obtained from the involved hospitals. All individuals with PND confirmed from breast lesions by ductoscopy were eligible. Images from Beijing Chao-Yang Hospital were randomly assigned (8:2) to the training (IDBCS development) and internal validation (performance evaluation of the IDBCS) datasets. Diagnostic performance was further assessed with internal and prospective validation datasets from Beijing Chao-Yang Hospital; further external validation was carried out with datasets from 5 primary care hospitals. Diagnostic accuracies, sensitivities, specificities, and positive and negative predictive values for IDBCS and endoscopists (expert, competent, or trainee) in the detection of malignant lesions were obtained by the Clopper-Pearson method.
Totally 11305 ductoscopy images in 1072 patients were utilized for developing and testing the IDBCS. Area under the curves (AUCs) in breast cancer detection were 0·975 (95%CI 0·899-0·998) and 0·954 (95%CI 0·925-0·975) in the internal validation and prospective datasets, respectively, and ranged between 0·922 (95%CI 0·866-0·960) and 0·965 (95%CI 0·892-0·994) in the 5 external validation datasets. The IDBCS had superior diagnostic accuracy compared with expert (0.912 [95%CI 0.839-0.959] vs 0.726 [0.672-0.775]; p<0.001), competent (0.699 [95%CI 0.645-0.750], p<0.001), and trainee (0.703 [95%CI 0.648-0.753], p<0.001) endoscopists.
IDBCS outperforms clinical oncologists, achieving high accuracy in diagnosing breast cancer with PND. The novel system could help endoscopists improve their diagnostic efficacy in breast cancer diagnosis.
作为一种常见的与乳腺癌相关的症状,经乳管镜检查发现的病理性乳头溢液(PND)常被漏诊。深度学习技术在临床成像方面取得了巨大进展,但很少应用于伴有PND的乳腺癌。本研究旨在通过分析乳管镜获取的实时成像数据,设计并验证一种用于乳腺癌诊断的智能乳管镜诊断系统(IDBCS)。
本多中心病例对照试验在中国的6家医院进行。从参与研究的医院获取年龄≥18岁、此前未进行过乳管镜检查的连续患者的图像。所有经乳管镜检查确诊为乳腺病变伴有PND的个体均符合条件。将北京朝阳医院的图像随机分配(8:2)到训练(IDBCS开发)和内部验证(IDBCS性能评估)数据集。使用北京朝阳医院的内部和前瞻性验证数据集进一步评估诊断性能;使用5家基层医院的数据集进行进一步的外部验证。通过Clopper-Pearson方法获得IDBCS和内镜医师(专家、胜任者或实习生)在检测恶性病变方面的诊断准确性、敏感性、特异性以及阳性和阴性预测值。
共使用了1072例患者的11305张乳管镜图像来开发和测试IDBCS。在内部验证和前瞻性数据集中,乳腺癌检测的曲线下面积(AUC)分别为0.975(95%CI 0.899 - 0.998)和0.954(95%CI 0.925 - 0.975),在5个外部验证数据集中,AUC范围为0.922(95%CI 0.866 - 0.960)至0.965(95%CI 0.892 - 0.994)。与专家内镜医师(0.912 [95%CI 0.839 - 0.959] 对 0.726 [0.672 - 0.775];p<0.001)、胜任内镜医师(0.699 [95%CI 0.645 - 0.750],p<0.001)和实习内镜医师(0.703 [95%CI 0.648 - 0.753],p<0.001)相比,IDBCS具有更高的诊断准确性。
IDBCS的表现优于临床肿瘤学家,在诊断伴有PND的乳腺癌方面具有很高的准确性。该新系统可帮助内镜医师提高乳腺癌诊断的效能。