Kozegar Ehsan, Soryani Mohsen, Behnam Hamid, Salamati Masoumeh, Tan Tao
School of Computer Engineering, Iran University of Science and Technology, Tehran, Iran.
School of Electrical Engineering, Iran University of Science and Technology, Tehran, Iran.
Ultrasonics. 2017 Aug;79:68-80. doi: 10.1016/j.ultras.2017.04.008. Epub 2017 Apr 20.
Automated 3D breast ultrasound (ABUS) is a new popular modality as an adjunct to mammography for detecting cancers in women with dense breasts. In this paper, a multi-stage computer aided detection system is proposed to detect cancers in ABUS images. In the first step, an efficient despeckling method called OBNLM is applied on the images to reduce speckle noise. Afterwards, a new algorithm based on isocontours is applied to detect initial candidates as the boundary of masses is hypo echoic. To reduce false generated isocontours, features such as hypoechoicity, roundness, area and contour strength are used. Consequently, the resulted candidates are further processed by a cascade classifier whose base classifiers are Random Under-Sampling Boosting (RUSBoost) that are introduced to deal with imbalanced datasets. Each base classifier is trained on a group of features like Gabor, LBP, GLCM and other features. Performance of the proposed system was evaluated using 104 volumes from 74 patients, including 112 malignant lesions. According to Free Response Operating Characteristic (FROC) analysis, the proposed system achieved the region-based sensitivity and case-based sensitivity of 68% and 76% at one false positive per image.
自动三维乳腺超声(ABUS)作为乳腺钼靶检查的辅助手段,用于检测乳腺致密女性的癌症,是一种新的流行模式。本文提出了一种多阶段计算机辅助检测系统,用于检测ABUS图像中的癌症。第一步,对图像应用一种名为OBNLM的高效去斑方法,以减少斑点噪声。之后,应用一种基于等值线的新算法来检测初始候选区域,因为肿块边界是低回声的。为了减少错误生成的等值线,使用了诸如低回声性、圆形度、面积和轮廓强度等特征。因此,通过级联分类器对得到的候选区域进行进一步处理,其基础分类器是引入的随机欠采样增强(RUSBoost),用于处理不平衡数据集。每个基础分类器在一组特征(如Gabor、LBP、GLCM和其他特征)上进行训练。使用来自74名患者的104个容积(包括112个恶性病变)对所提出系统的性能进行了评估。根据自由响应操作特征(FROC)分析,所提出的系统在每幅图像一个假阳性的情况下,实现了基于区域的灵敏度和基于病例的灵敏度分别为68%和76%。