Deep Learning for Distinguishing Mucinous Breast Carcinoma From Fibroadenoma on Ultrasound.

IF 2.9 3区 医学 Q2 ONCOLOGY
Clinical breast cancer Pub Date : 2025-01-01 Epub Date: 2024-09-04 DOI:10.1016/j.clbc.2024.09.001
Yuan Yao, Yang Zhao, Xu Guo, Xiangli Xu, Baiyang Fu, Hao Cui, Jian Xue, Jiawei Tian, Ke Lu, Lei Zhang
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引用次数: 0

Abstract

Purpose: Mucinous breast carcinoma (MBC) tends to be misdiagnosed as fibroadenomas (FA) due to its benign imaging characteristics. We aimed to develop a deep learning (DL) model to differentiate MBC and FA based on ultrasound (US) images. The model could contribute to the diagnosis of MBC for radiologists.

Methods: In this retrospective study, 884 eligible patients (700 FA patients and 184 MBC patients) with 2257 US images were enrolled. The images were randomly divided into a training set (n = 1805 images) and a test set (n = 452 images) in a ratio of 8:2. First, we used the training set to establish DL model, DL+ age-cutoff model and DL+ age-tree model. Then, we compared the diagnostic performance of three models to get the optimal model. Finally, we evaluated the diagnostic performance of radiologists (4 junior and 4 senior radiologists) with and without the assistance of the optimal model in the test set.

Results: The DL+ age-tree model yielded higher areas under the receiver operating characteristic curve (AUC) than DL model and DL+ age-cutoff model (0.945 vs. 0.835, P < .001; 0.945 vs. 0.931, P < .001, respectively). With the assistance of DL+ age-tree model, both junior and senior radiologists' AUC had significant improvement (0.746-0.818, P = .010, 0.827-0.860, P = .005, respectively).

Conclusions: The DL+ age-tree model based on US images and age showed excellent performance in the differentiation of MBC and FA. Moreover, it can effectively improve the performance of radiologists with different degrees of experience that may contribute to reducing the misdiagnosis of MBC.

通过深度学习在超声波上区分黏液性乳腺癌和纤维腺瘤
目的:粘液性乳腺癌(MBC)由于其良性成像特征,往往被误诊为纤维腺瘤(FA)。我们旨在开发一种深度学习(DL)模型,根据超声(US)图像区分 MBC 和 FA。该模型有助于放射科医生诊断 MBC:在这项回顾性研究中,884 名符合条件的患者(700 名 FA 患者和 184 名 MBC 患者)接受了 2257 张 US 图像。这些图像按 8:2 的比例随机分为训练集(n = 1805 张图像)和测试集(n = 452 张图像)。首先,我们利用训练集建立了 DL 模型、DL+ 年龄截断模型和 DL+ 年龄树模型。然后,我们比较了三种模型的诊断性能,以获得最佳模型。最后,我们评估了放射科医生(4 名初级放射科医生和 4 名高级放射科医生)在测试集中使用和不使用最优模型的情况下的诊断性能:结果:与 DL 模型和 DL+ 年龄截断模型相比,DL+ 年龄树模型产生了更高的接收者操作特征曲线下面积(AUC)(分别为 0.945 vs. 0.835,P < .001;0.945 vs. 0.931,P < .001)。在 DL+ 年龄树模型的帮助下,初级和高级放射医师的 AUC 均有显著提高(分别为 0.746-0.818, P = .010, 0.827-0.860, P = .005):结论:基于 US 图像和年龄的 DL+ 年龄树模型在 MBC 和 FA 的鉴别中表现出色。结论:基于 US 图像和年龄的 DL+ 年龄树模型在 MBC 和 FA 的鉴别中表现出色,而且能有效提高具有不同经验的放射科医生的工作效率,从而有助于减少 MBC 的误诊。
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来源期刊
Clinical breast cancer
Clinical breast cancer 医学-肿瘤学
CiteScore
5.40
自引率
3.20%
发文量
174
审稿时长
48 days
期刊介绍: Clinical Breast Cancer is a peer-reviewed bimonthly journal that publishes original articles describing various aspects of clinical and translational research of breast cancer. Clinical Breast Cancer is devoted to articles on detection, diagnosis, prevention, and treatment of breast cancer. The main emphasis is on recent scientific developments in all areas related to breast cancer. Specific areas of interest include clinical research reports from various therapeutic modalities, cancer genetics, drug sensitivity and resistance, novel imaging, tumor genomics, biomarkers, and chemoprevention strategies.
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