Detection and classification of breast lesions using multiple information on contrast-enhanced mammography by a multiprocess deep-learning system: A multicenter study.

Yuqian Chen, Zhen Hua, Fan Lin, Tiantian Zheng, Heng Zhou, Shijie Zhang, Jing Gao, Zhongyi Wang, Huafei Shao, Wenjuan Li, Fengjie Liu, Simin Wang, Yan Zhang, Feng Zhao, Hao Liu, Haizhu Xie, Heng Ma, Haicheng Zhang, Ning Mao
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Abstract

Objective: Accurate detection and classification of breast lesions in early stage is crucial to timely formulate effective treatments for patients. We aim to develop a fully automatic system to detect and classify breast lesions using multiple contrast-enhanced mammography (CEM) images.

Methods: In this study, a total of 1,903 females who underwent CEM examination from three hospitals were enrolled as the training set, internal testing set, pooled external testing set and prospective testing set. Here we developed a CEM-based multiprocess detection and classification system (MDCS) to perform the task of detection and classification of breast lesions. In this system, we introduced an innovative auxiliary feature fusion (AFF) algorithm that could intelligently incorporates multiple types of information from CEM images. The average free-response receiver operating characteristic score (AFROC-Score) was presented to validate system's detection performance, and the performance of classification was evaluated by area under the receiver operating characteristic curve (AUC). Furthermore, we assessed the diagnostic value of MDCS through visual analysis of disputed cases, comparing its performance and efficiency with that of radiologists and exploring whether it could augment radiologists' performance.

Results: On the pooled external and prospective testing sets, MDCS always maintained a high standalone performance, with AFROC-Scores of 0.953 and 0.963 for detection task, and AUCs for classification were 0.909 [95% confidence interval (95% CI): 0.822-0.996] and 0.912 (95% CI: 0.840-0.985), respectively. It also achieved higher sensitivity than all senior radiologists and higher specificity than all junior radiologists on pooled external and prospective testing sets. Moreover, MDCS performed superior diagnostic efficiency with an average reading time of 5 seconds, compared to the radiologists' average reading time of 3.2 min. The average performance of all radiologists was also improved to varying degrees with MDCS assistance.

Conclusions: MDCS demonstrated excellent performance in the detection and classification of breast lesions, and greatly enhanced the overall performance of radiologists.

通过多过程深度学习系统使用对比增强乳房x线照相术的多种信息检测和分类乳腺病变:一项多中心研究。
目的:早期准确发现和分类乳腺病变,对患者及时制定有效的治疗方案至关重要。我们的目标是开发一个全自动系统来检测和分类乳房病变使用多个对比增强乳房x线照相术(CEM)图像。方法:采用训练集、内部测试集、合并外部测试集和前瞻性测试集,选取3家医院接受CEM检查的女性1903例。在此,我们开发了一个基于cem的多过程检测和分类系统(MDCS)来完成乳腺病变的检测和分类任务。在该系统中,我们引入了一种创新的辅助特征融合(AFF)算法,该算法可以智能地融合来自CEM图像的多种类型信息。给出自由响应的平均受试者工作特征得分(AFROC-Score)来验证系统的检测性能,并通过受试者工作特征曲线下面积(AUC)来评价分类性能。此外,我们通过对争议病例的视觉分析来评估MDCS的诊断价值,将其与放射科医生的表现和效率进行比较,并探讨它是否可以提高放射科医生的表现。结果:在合并的外部和前瞻性测试集上,MDCS始终保持较高的独立性能,检测任务的AFROC-Scores分别为0.953和0.963,分类的auc分别为0.909和0.912[95%可信区间(95% CI): 0.822-0.996]和0.912 (95% CI: 0.840-0.985)。在综合外部和前瞻性测试集上,它也比所有高级放射科医生具有更高的灵敏度,比所有初级放射科医生具有更高的特异性。此外,MDCS的诊断效率更高,平均阅读时间为5秒,而放射科医生的平均阅读时间为3.2分钟。在MDCS的帮助下,所有放射科医生的平均表现也有不同程度的提高。结论:MDCS在乳腺病变的检测和分类方面表现优异,大大提高了放射科医生的整体工作水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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