School of Computer Engineering, Iran University of Science and Technology, Tehran, Iran.
Department of Computer Engineering and Engineering Sciences, Faculty of Technology and Engineering, University of Guilan, Rudsar-Vajargah, Guilan, Iran.
Phys Med. 2024 Aug;124:103433. doi: 10.1016/j.ejmp.2024.103433. Epub 2024 Jul 13.
Early detection of breast cancer has a significant effect on reducing its mortality rate. For this purpose, automated three-dimensional breast ultrasound (3-D ABUS) has been recently used alongside mammography. The 3-D volume produced in this imaging system includes many slices. The radiologist must review all the slices to find the mass, a time-consuming task with a high probability of mistakes. Therefore, many computer-aided detection (CADe) systems have been developed to assist radiologists in this task. In this paper, we propose a novel CADe system for mass detection in 3-D ABUS images.
The proposed system includes two cascaded convolutional neural networks. The goal of the first network is to achieve the highest possible sensitivity, and the second network's goal is to reduce false positives while maintaining high sensitivity. In both networks, an improved version of 3-D U-Net architecture is utilized in which two types of modified Inception modules are used in the encoder section. In the second network, new attention units are also added to the skip connections that receive the results of the first network as saliency maps.
The system was evaluated on a dataset containing 60 3-D ABUS volumes from 43 patients and 55 masses. A sensitivity of 91.48% and a mean false positive of 8.85 per patient were achieved.
The suggested mass detection system is fully automatic without any user interaction. The results indicate that the sensitivity and the mean FP per patient of the CADe system outperform competing techniques.
早期发现乳腺癌对降低其死亡率有显著影响。为此,自动化三维乳腺超声(3-D ABUS)已与乳房 X 光摄影术一起被用于临床。该成像系统生成的三维体积包含许多切片。放射科医生必须查看所有切片以找到肿块,这是一项耗时且容易出错的任务。因此,已经开发了许多计算机辅助检测(CADe)系统来协助放射科医生完成这项任务。在本文中,我们提出了一种用于 3-D ABUS 图像中肿块检测的新型 CADe 系统。
所提出的系统包括两个级联的卷积神经网络。第一个网络的目标是实现尽可能高的灵敏度,第二个网络的目标是在保持高灵敏度的同时减少假阳性。在这两个网络中,使用了改进的 3-D U-Net 架构,在该架构中,编码器部分使用了两种类型的改进型 Inception 模块。在第二个网络中,还在接收第一网络结果的跳过连接中添加了新的注意力单元作为显着性图。
该系统在包含 43 名患者和 55 个肿块的 60 个 3-D ABUS 容积的数据集上进行了评估。实现了 91.48%的灵敏度和每位患者 8.85 个平均假阳性。
所提出的肿块检测系统完全自动化,无需任何用户交互。结果表明,CADe 系统的灵敏度和每位患者的平均 FP 优于竞争技术。