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Computerized nipple identification for multiple image analysis in computer-aided diagnosis

机译:乳头识别的计算机辅助诊断中的多图像分析

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摘要

Correlation of information from multiple-view mammograms (e.g., MLO and CC views, bilateral views, or current and prior mammograms) can improve the performance of breast cancer diagnosis by radiologists or by computer. The nipple is a reliable and stable landmark on mammograms for the registration of multiple mammograms. However, accurate identification of nipple location on mammograms is challenging because of the variations in image quality and in the nipple projections, resulting in some nipples being nearly invisible on the mammograms. In this study, we developed a computerized method to automatically identify the nipple location on digitized mammograms. First, the breast boundary was obtained using a gradient-based boundary tracking algorithm, and then the gray level profiles along the inside and outside of the boundary were identified. A geometric convergence analysis was used to limit the nipple search to a region of the breast boundary. A two-stage nipple detection method was developed to identify the nipple location using the gray level information around the nipple, the geometric characteristics of nipple shapes, and the texture features of glandular tissue or ducts which converge toward the nipple. At the first stage, a rule-based method was designed to identify the nipple location by detecting significant changes of intensity along the gray level profiles inside and outside the breast boundary and the changes in the boundary direction. At the second stage, a texture orientation-field analysis was developed to estimate the nipple location based on the convergence of the texture pattern of glandular tissue or ducts towards the nipple. The nipple location was finally determined from the detected nipple candidates by a rule-based confidence analysis. In this study, 377 and 367 randomly selected digitized mammograms were used for training and testing the nipple detection algorithm, respectively. Two experienced radiologists identified the nipple locations which were used as the gold standard. In the training data set, 301 nipples were positively identified and were referred to as visible nipples. Seventy six nipples could not be positively identified and were referred to as invisible nipples. The radiologists provided their estimation of the nipple locations in the latter group for comparison with the computer estimates. The computerized method could detect 89.37% (269/301) of the visible nipples and 69.74% (53/76) of the invisible nipples within 1 cm of the gold standard. In the test data set, 298 and 69 of the nipples were classified as visible and invisible, respectively. 92.28% (275/298) of the visible nipples and 53.62% (37/69) of the invisible nipples were identified within 1 cm of the gold standard. The results demonstrate that the nipple locations on digitized mammograms can be accurately detected if they are visible and can be reasonably estimated if they are invisible. Automated nipple detection will be an important step towards multiple image analysis for CAD.
机译:多视图乳房X线照片(例如MLO和CC视图,双边视图或当前和先前的乳房X线照片)中信息的相关性可以提高放射科医生或计算机诊断乳腺癌的性能。乳头是X线照片上可靠且稳定的界标,可用于多个X线照片的配准。但是,由于图像质量和乳头投影的变化,在乳腺X线照片上准确识别乳头位置具有挑战性,导致一些乳头在乳腺X线照片上几乎不可见。在这项研究中,我们开发了一种计算机化的方法来自动识别数字化X线照片上的乳头位置。首先,使用基于梯度的边界跟踪算法获得乳房边界,然后识别沿边界内部和外部的灰度轮廓。使用几何收敛分析将乳头搜索限制在乳房边界区域。开发了一种两阶段乳头检测方法,以使用乳头周围的灰度信息,乳头形状的几何特征以及会聚到乳头的腺组织或导管的纹理特征来识别乳头位置。在第一阶段,设计了一种基于规则的方法,通过检测沿乳房边界内外的灰度轮廓的强度的显着变化以及边界方向的变化来识别乳头的位置。在第二阶段,根据腺组织或导管朝向乳头的纹理模式的收敛,进行了纹理定向场分析,以估计乳头的位置。最后,通过基于规则的置信度分析,从检测到的乳头候选对象中确定乳头位置。在这项研究中,分别使用377个和367个随机选择的数字化乳房X线照片来训练和测试乳头检测算法。两名经验丰富的放射科医生确定了乳头位置,将其用作金标准。在训练数据集中,阳性识别出301个乳头,被称为可见乳头。无法正确识别76个乳头,被称为隐形乳头。放射科医生提供了他们对后一组乳头位置的估计,以便与计算机估计进行比较。电脑化的方法可以检测到距黄金标准1 cm以内的可见乳头的89.37%(269/301)和不可见乳头的69.74%(53/76)。在测试数据集中,分别将298和69个乳头分类为可见和不可见。在黄金标准的1 cm以内,发现了92.28%(275/298)的可见乳头和53.62%(37/69)的不可见乳头。结果表明,如果数字化乳房X线照片上的乳头位置可见,则可以正确检测,如果不可见,则可以合理地估计。乳头自动检测将是CAD多图像分析的重要一步。

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