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Computer-aided detection and diagnosis of mammographic masses using multi-resolution analysis of oriented tissue patterns

机译:使用定向组织模式的多分辨率分析对乳房X线摄影肿块进行计算机辅助检测和诊断

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In this article, a novel approach is proposed for automatic detection and diagnosis of mammographic masses, one of the common signs of non-palpable breast cancer. However, detection and diagnosis of mass are difficult due to its irregular shape, variability in size, and occlusion within breast tissue. The main aim of this study is to classify masses into benign and malignant after detecting them automatically. We propose an iterative method of high-to-low intensity thresholding controlled by radial region growing for the detection of masses. Based on the observation that in presence of mass orientation of tissue patterns changes, which may differ from benign to malignant, a multi resolution analysis of orientation of tissue patterns is then performed to categorize them. The performance of the proposed algorithm is evaluated with images from the digital database for screening mammography (DDSM), containing 450 benign masses, 440 malignant masses, and 410 normal images. A sensitivity of 85.0% is achieved at 1.4 false positives per image in mass detection, whereas an area under the receiver operating characteristic curve of 0.92 with an accuracy of 83.30% is achieved for the diagnosis of malignant masses. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在本文中,提出了一种新颖的方法来自动检测和诊断乳腺摄影肿块,这是不可触及的乳腺癌的常见征兆之一。但是,由于肿块的形状不规则,大小不一以及乳房组织内的阻塞,很难进行肿块的检测和诊断。这项研究的主要目的是在自动检测到肿块后将其分为良性和恶性。我们提出了一种由径向区域生长控制的从高到低强度阈值化的迭代方法,用于检测质量。基于观察到,在存在组织模式的质量方向变化的情况下(从良性到恶性可能会有所不同),然后对组织模式的方向进行多分辨率分析以将其分类。该算法的性能通过来自数字数据库的乳腺X线筛查(DDSM)图像进行评估,该图像包含450个良性肿块,440个恶性肿块和410个正常图像。在质量检测中,每个图像1.4个假阳性时,灵敏度为85.0%,而在接收器工作特性曲线下的面积为0.92,准确度为83.30%,可用于诊断恶性肿块。 (C)2018 Elsevier Ltd.保留所有权利。

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