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Automatic detection of abnormal mammograms in mammographic images

机译:自动检测乳房X线照片中的异常X线照片

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This paper proposes a detection method for abnormal mammograms in mammographic datasets based on the novel abnormality detection classifier (ADC) by extracting a few of discriminative features, first-order statistical intensities and gradients. As tumorous masses are often indistinguishable from the surrounding parenchyma, automatic mass detection on highly complex breast tissues has been a challenge. However, most tumor detection methods require extraction of a large number of textural features for further multiple computations. The study first investigates image preprocessing techniques for obtaining more accurate breast segmentation prior to mass detection, including global equalization transformation, denoising, binarization, breast orientation determination and the pectoral muscle suppression. After performing gray level quantization on the breast images segmented, the presented feature difference matrices could be created by five features extracted from a suspicious region of interest (ROI); subsequently, principal component analysis (PCA) is applied to aid the determination of feature weights. The experimental results show that applying the algorithm of ADC accompanied with the feature weight adjustments to detect abnormal mammograms has yielded prominent sensitivities of 88% and 86% on the two respective datasets. Comparing other automated mass detection systems, this study proposes a new method for fully developing a high-performance, computer-aided decision (CAD) system that can automatically detect abnormal mammograms in screening programs, especially when an entire database is tested.
机译:本文提出了一种基于新型异常检测分类器(ADC)的乳腺X线摄影数据集异常特征检测方法,该方法通过提取一些判别特征,一阶统计强度和梯度。由于肿瘤肿块通常与周围的薄壁组织无法区分,因此在高度复杂的乳腺组织上进行自动肿块检测一直是一个挑战。然而,大多数肿瘤检测方法需要提取大量纹理特征以进行进一步的多次计算。这项研究首先研究了图像预处理技术,以在进行质量检测之前获得更准确的乳房分割,包括全局均衡变换,降噪,二值化,乳房方向确定和胸肌抑制。在对分割的乳房图像执行灰度量化后,可以通过从可疑目标区域(ROI)提取的五个特征来创建呈现的特征差异矩阵。随后,应用主成分分析(PCA)来帮助确定特征权重。实验结果表明,将ADC算法与特征权重调整相结合来检测异常X线照片,在两个数据集上的灵敏度分别为88%和86%。与其他自动质量检测系统相比,本研究提出了一种新方法,可以全面开发高性能的计算机辅助决策(CAD)系统,该系统可以自动检测筛查程序中的异常乳房X线照片,尤其是在测试整个数据库时。

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