Wang Yi, Qin Chenchen, Lin Chuanlu, Lin Di, Xu Min, Luo Xiao, Wang Tianfu, Li Anhua, Ni Dong
National-Regional Key Technology Engineering Laboratory for Medical Ultrasound, Guangdong Key Laboratory for Biomedical Measurements and Ultrasound Imaging, School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen, 518060, China.
The College of Intelligence and Computing, Tianjin University, Tianjin, 300354, China.
Med Phys. 2020 Nov;47(11):5582-5591. doi: 10.1002/mp.14389. Epub 2020 Oct 13.
Breast cancer is the most common cancer and the leading cause of cancer-related deaths for women all over the world. Recently, automated breast ultrasound (ABUS) has become a new and promising screening modality for whole breast examination. However, reviewing volumetric ABUS is time-consuming and lesions could be missed during the examination. Therefore, computer-aided cancer detection in ABUS volume is extremely expected to help clinician for the breast cancer screening.
We develop a novel end-to-end 3D convolutional network for automated cancer detection in ABUS volume, in order to accelerate reviewing and meanwhile to provide high detection sensitivity with low false positives (FPs). Specifically, an efficient 3D Inception Unet-style architecture with fusion deep supervision mechanism is proposed to attain decent detection performance. In addition, a novel asymmetric loss is designed to help the network balancing false positive and false negative regions, thus improving detection sensitivity for small cancerous lesions.
The efficacy of our network was extensively validated on a dataset including 196 patients with 661 cancer regions. Our network obtained a detection sensitivity of 95.1% with 3.0 FPs per ABUS volume. Furthermore, the average inference time of the network was 0.1 second per volume, which largely shortens the conventional reviewing time.
The proposed network provides efficient and accurate cancer detection scheme using ABUS volume, and may assist clinicians for more efficient breast cancer screening.
乳腺癌是全球最常见的癌症,也是女性癌症相关死亡的主要原因。近年来,自动乳腺超声(ABUS)已成为一种用于全乳检查的新的、有前景的筛查方式。然而,查看容积式ABUS耗时且在检查过程中可能会遗漏病变。因此,极希望在ABUS容积中进行计算机辅助癌症检测以帮助临床医生进行乳腺癌筛查。
我们开发了一种用于在ABUS容积中自动进行癌症检测的新型端到端3D卷积网络,以加快查看速度,同时提供高检测灵敏度和低假阳性(FP)率。具体而言,提出了一种具有融合深度监督机制的高效3D Inception Unet风格架构,以获得良好的检测性能。此外,设计了一种新型非对称损失,以帮助网络平衡假阳性和假阴性区域,从而提高对小癌性病变的检测灵敏度。
我们的网络在一个包含196例患者和661个癌症区域的数据集上得到了广泛验证。我们的网络在每个ABUS容积中获得了95.1% 的检测灵敏度,假阳性率为3.0。此外,网络的平均推理时间为每容积0.1秒,这大大缩短了传统的查看时间。
所提出的网络使用ABUS容积提供了高效且准确的癌症检测方案,并可能帮助临床医生进行更高效的乳腺癌筛查。