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Effect of ROI Size on the Performance of an Information-Theoretic CAD System in Mammography: Multi-size Fusion Analysis

机译:ROI大小对乳房X光检查信息 - 理论CAD系统性能的影响:多尺寸融合分析

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Featureless, knowledge-based CAD systems are an attractive alternative to feature-based CAD because they require no to minimal image preprocessing. Such systems compare images directly using the raw image pixel values rather than relying on low-level image features. Specifically, information-theoretic (IT) measures such as mutual information (MI) have been shown to be an effective, featureless, similarity measure for image comparisons. MI captures the statistical relationship between the gray level values of corresponding image pixels. In a CAD system developed at our laboratory, the above concept has been applied for location-specific detection of mammographic masses. The system is designed to operate on a fixed size region of interest (ROI) extracted around a suspicious mammographic location. Since mass sizes vary substantially, there is a potential drawback. When two ROIs are compared, it is unclear how much the parenchymal background contributes in the calculated MI. This uncertainty could deteriorate CAD performance in the extreme cases, namely when a small mass is present in the ROI or when a large mass extends beyond the fixed size ROI. The present study evaluates the effect of ROI size on the overall CAD performance and proposes multisize analysis for possible improvement. Based on two datasets of ROIs extracted from DDSM mammograms, there was a statistically significant decline of the CAD performance as the ROI size increased. The best size ranged between 512×512 and 256×256 pixels. Multisize fusion analysis using a linear model achieved further improvement in CAD performance for both datasets.
机译:无特征,知识的CAD系统是一个有吸引力的基于特征的CAD的替代品,因为它们需要否以最小的图像预处理。这样的系统使用原始图像像素值直接比较图像,而不是依赖于低级图像特征。具体地,已被证明是相互信息(MI)的信息 - 理论(IT)措施是图像比较的有效,无意识的相似度措施。 MI捕获相应图像像素的灰度级值之间的统计关系。在我们在我们的实验室开发的CAD系统中,上述概念已被应用于特异性乳腺素肿块的检测。该系统旨在在围绕可疑乳房X线切定位提取的固定尺寸的感兴趣区域(ROI)上操作。由于质量大小基本变化,因此存在潜在的缺点。比较两个ROI时,目前尚不清楚实质背景在计算的MI中有多少贡献。这种不确定性可以在极端情况下恶化CAD性能,即当ROI中存在小质量或当大质量延伸超过固定尺寸的ROI时。本研究评估了ROI大小对整体CAD性能的影响,提出了多功能分析,以实现可能的改进。基于从DDSM乳房X线照片提取的两个ROI数据集,随着ROI尺寸的增加,CAD性能存在统计上显着下降。最佳尺寸范围在512×512和256×256像素之间。使用线性模型的多态融合分析实现了两个数据集的CAD性能的进一步提高。

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