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Computer aided detection of microcalcification clusters in digital mammogram images.

机译:计算机辅助检测数字化乳房X射线照片图像中的微钙化簇。

摘要

Recent advancements in computer technology have ensured that early detection of breast cancer, via computer aided detection (CAD) schemes, has become a rapidly expanding field of research. There is a desire to improve the detection accuracy of breast cancer without increasing the number of falsely identified cancers. The CAD scheme considered here is intended to assist radiologists in the detection of micro calcification clusters, providing a real contribution to the mammography screening process. Factors that affect the detection accuracy of micro calcifications in digital mammograms include the presence of high spatial frequency noise, and locally linear high intensity structures known as curvilinear structures (CLS). The two issues considered are how to compensate for the high frequency image noise and how to detect CLS thus removing their influence on micro calcification detection. First, an adaptive approach to modelling the image noise is adopted. This is derived directly from each mammogram and is adaptable to varying imaging conditions. It is found that compensating for the high frequency image noise significantly improves micro calcification detection accuracy. Second, due to the varying size and orientation of CLS in mammogram images, a shape parameter is designed for their detection using a multiresolution wavelet filter bank. The shape parameter leads to an efficient way of distinguishing curvilinear structures from faint micro calcifications. This improves micro calcification detection performance by reducing the number of false positive detections related to CLS. The detection and segmentation of micro calcification clusters is achieved by the development of a stochastic model, which classifies individual pixels within a mammogram into separate classes based on Bayesian decision theory. Both the high frequency noise model and CLS shape parameters are used as input to this segmentation process. The CAD scheme is specifically designed to be independent of the modality used, simultaneously exploiting the image data and prior knowledge available for micro calcification detection. A new hybrid clustering scheme enables the distinction between individual and clustered micro calcifications, where clustered micro calcifications are considered more clinically suspicious. The scheme utilises the observed properties of genuine clusters (such as a uniform distribution) providing a practical approach to the clustering process. The results obtained are encouraging with a high percentage of genuine clusters detected at the expense of very few false positive detections. An extensive performance evaluation of the CAD scheme helps determine the accuracy of the system and hence the potential contribution to the mammography screening process. Comparing the CAD scheme developed with previously developed micro calcification detection schemes shows that the performance of this method is highly competitive. The best results presented here give a sensitivity of 91% at an average false positive detection rate of 0.8 false positives per image.
机译:计算机技术的最新进展已确保通过计算机辅助检测(CAD)方案对乳腺癌进行早期检测已成为快速发展的研究领域。希望在不增加错误识别的癌症数量的情况下提高乳腺癌的检测准确性。这里考虑的CAD方案旨在帮助放射科医生检测微钙化团簇,为乳房X线照片筛查过程做出真正的贡献。影响数字乳房X线照片中微钙化的检测精度的因素包括高空间频率噪声的存在以及局部线性高强度结构(称为曲线结构(CLS))。考虑的两个问题是如何补偿高频图像噪声和如何检测CLS,从而消除它们对微钙化检测的影响。首先,采用自适应方法对图像噪声进行建模。这是直接从每个乳房X线照片得出的,并且适用于变化的成像条件。发现补偿高频图像噪声显着提高了微钙化检测精度。其次,由于乳腺X射线照片中CLS的大小和方向的变化,因此设计了形状参数以使用多分辨率小波滤波器组对其进行检测。形状参数导致区分曲线结构和微微钙化的有效方法。通过减少与CLS相关的假阳性检测次数,可以提高微钙化检测性能。微钙化簇的检测和分割是通过建立随机模型实现的,该模型基于贝叶斯决策理论将乳房X线照片中的各个像素分为不同的类别。高频噪声模型和CLS形状参数都用作此分割过程的输入。 CAD方案经过专门设计,与所使用的模态无关,同时可利用图像数据和可用于微钙化检测的先验知识。一种新的混合聚类方案可以区分单个和聚簇的微钙化,其中聚簇的微钙化在临床上更可疑。该方案利用了真实聚类的观察特性(例如均匀分布),为聚类过程提供了一种实用的方法。高百分比的真实簇被发现而获得的结果令人鼓舞,其代价是极少的假阳性检测。 CAD方案的广泛性能评估有助于确定系统的准确性,从而确定对X光检查的潜在贡献。将已开发的CAD方案与先前开发的微钙化检测方案进行比较,表明该方法的性能极具竞争力。此处呈现的最佳结果的灵敏度为91%,每张图像的平均假阳性检出率为0.8假阳性。

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  • 作者

    McLoughlin Kirstin J.;

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  • 年度 2004
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  • 原文格式 PDF
  • 正文语种 en
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