Li Yanfeng, Wu Wen, Chen Houjin, Cheng Lin, Wang Shu
School of Electronic and Information Engineering, Beijing Jiaotong University, Beijing, China.
Center for Breast, People's Hospital of Peking University, Beijing, China.
Med Phys. 2020 Nov;47(11):5669-5680. doi: 10.1002/mp.14477. Epub 2020 Oct 6.
Automated breast ultrasound (ABUS) has drawn attention in breast disease detection and diagnosis applications. Reviewing hundreds of slices produced by ABUS is time-consuming. In this paper, a tumor detection method for ABUS image based on convolutional neural network is proposed.
First, integrating multitask learning with YOLOv3, an improved YOLOv3 detection network is designed to detect tumor candidate in two-dimensional (2D) slices. Two-dimensional detection separately treats each slice, leading to larger differences of position and score for tumor candidate in adjacent slices. Due to the influence of artifact, noise, and mammary tissues, 2D detection may include many false positive regions. To alleviate these problems, a rescoring processing algorithm is first designed. Then three-dimensional volume forming and FP reduction scheme are built.
This method was tested on 340 volumes (124 patients, 181 tumors) with fivefold cross validation. It achieved sensitivities of 90%, 85%, 80%, 75%, and 70% at 7.42, 3.31, 1.62, 1.23, and 0.88 false positives per volume.
Compared with existing ABUS tumor detection methods, our method gets a promising result.
自动乳腺超声(ABUS)在乳腺疾病检测与诊断应用中受到关注。查看由ABUS生成的数百张切片很耗时。本文提出一种基于卷积神经网络的ABUS图像肿瘤检测方法。
首先,将多任务学习与YOLOv3相结合,设计一种改进的YOLOv3检测网络来检测二维(2D)切片中的肿瘤候选区域。二维检测分别处理每个切片,导致相邻切片中肿瘤候选区域的位置和得分差异较大。由于伪影、噪声和乳腺组织的影响,二维检测可能会包含许多假阳性区域。为缓解这些问题,首先设计一种重新评分处理算法。然后构建三维体积形成和假阳性减少方案。
该方法在340个容积(124例患者,181个肿瘤)上进行了五折交叉验证测试。在每容积分别为7.42、3.31、1.62、1.23和0.88个假阳性时,其灵敏度分别达到90%、85%、80%、75%和70%。
与现有的ABUS肿瘤检测方法相比,我们的方法取得了有前景的结果。