Department of Radiology, Seoul National University Hospital, Seoul National University College of Medicine, 101 Daehak-ro, Jongno-gu, Seoul, 03080, Republic of Korea.
Medical Research Collaborating Center, Seoul National University Hospital, Seoul, Republic of Korea.
Sci Rep. 2021 Jan 11;11(1):395. doi: 10.1038/s41598-020-79880-0.
A major limitation of screening breast ultrasound (US) is a substantial number of false-positive biopsy. This study aimed to develop a deep learning-based computer-aided diagnosis (DL-CAD)-based diagnostic model to improve the differential diagnosis of screening US-detected breast masses and reduce false-positive diagnoses. In this multicenter retrospective study, a diagnostic model was developed based on US images combined with information obtained from the DL-CAD software for patients with breast masses detected using screening US; the data were obtained from two hospitals (development set: 299 imaging studies in 2015). Quantitative morphologic features were obtained from the DL-CAD software, and the clinical findings were collected. Multivariable logistic regression analysis was performed to establish a DL-CAD-based nomogram, and the model was externally validated using data collected from 164 imaging studies conducted between 2018 and 2019 at another hospital. Among the quantitative morphologic features extracted from DL-CAD, a higher irregular shape score (P = .018) and lower parallel orientation score (P = .007) were associated with malignancy. The nomogram incorporating the DL-CAD-based quantitative features, radiologists' Breast Imaging Reporting and Data Systems (BI-RADS) final assessment (P = .014), and patient age (P < .001) exhibited good discrimination in both the development and validation cohorts (area under the receiver operating characteristic curve, 0.89 and 0.87). Compared with the radiologists' BI-RADS final assessment, the DL-CAD-based nomogram lowered the false-positive rate (68% vs. 31%, P < .001 in the development cohort; 97% vs. 45% P < .001 in the validation cohort) without affecting the sensitivity (98% vs. 93%, P = .317 in the development cohort; each 100% in the validation cohort). In conclusion, the proposed model showed good performance for differentiating screening US-detected breast masses, thus demonstrating a potential to reduce unnecessary biopsies.
筛查性乳腺超声(US)的一个主要局限性是大量假阳性活检。本研究旨在开发一种基于深度学习的计算机辅助诊断(DL-CAD)诊断模型,以改善筛查性 US 检测到的乳腺肿块的鉴别诊断并减少假阳性诊断。在这项多中心回顾性研究中,基于超声图像和从 DL-CAD 软件获得的信息,为使用筛查性 US 检测到的乳腺肿块患者开发了一种诊断模型;数据来自两家医院(开发集:2015 年 299 项影像学研究)。从 DL-CAD 软件获取定量形态学特征,并收集临床发现。使用多变量逻辑回归分析建立基于 DL-CAD 的列线图,并使用另一家医院在 2018 年至 2019 年期间进行的 164 项影像学研究的数据进行外部验证。从 DL-CAD 提取的定量形态学特征中,较高的不规则形状评分(P = .018)和较低的平行取向评分(P = .007)与恶性肿瘤相关。纳入基于 DL-CAD 的定量特征、放射科医师乳腺成像报告和数据系统(BI-RADS)最终评估(P = .014)和患者年龄(P < .001)的列线图在开发和验证队列中均具有良好的区分度(接受者操作特征曲线下面积,0.89 和 0.87)。与放射科医师的 BI-RADS 最终评估相比,基于 DL-CAD 的列线图降低了假阳性率(开发队列中为 68%比 31%,P < .001;验证队列中为 97%比 45%,P < .001),而不影响敏感性(开发队列中为 98%比 93%,P = .317;每个队列均为 100%)。总之,该模型在区分筛查性 US 检测到的乳腺肿块方面表现出良好的性能,因此有可能减少不必要的活检。