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Automatic lesion detection and segmentation algorithm on 2D breastultrasound images

机译:2D刷新图像中的自动病变检测与分割算法

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Although X-ray mammography (MG) is the dominant imaging modality, ultrasonography (US), with recent advances in technologies, has proven very useful in the evaluation of breast abnormalities. But radiologist should investigate a lot of images for proper diagnosis unlike MG. This paper proposes the automatic algorithm of detecting and segmenting lesions on 2D breast ultrasound images to help radiologist. The detecting part is based on the Hough transform with downsampling process which is very efficient to sharpen the smooth lesion boundary and also to reduce the noise. In segmenting part, radial dependent contrast adjustment (RDCA) method is newly proposed. RDCA is introduced to overcome the limitation of Gaussian constraint function. It decreases contrast around the center of lesion but increases contrast proportional to the distance from the center of lesion. As a result, segmentation algorithm shows robustness in various shapes of lesion. The proposed algorithms may help to detect lesions and to find boundary of lesions efficiently.
机译:虽然X射线乳房X线照相术(MG)是主导的成像模态,超声检查(美国),但最近技术的进步,证明在评估乳房异常方面非常有用。但放射科医生应该调查很多图像以与MG不同的诊断。本文提出了在2D乳房超声图像上检测和分割病变的自动算法,以帮助放射学家。检测部分基于霍夫变换,利用下采样过程,这非常有效地锐化平滑的病变边界,并还可以减少噪声。在分割部分中,新提出了径向依赖性对比度调整(RDCA)方法。介绍了RDCA以克服高斯约束函数的限制。它减少了病变中心周围的对比度,但随着距离病变中心的距离而增加的对比度增加。结果,分割算法显示了各种形状的病变中的鲁棒性。所提出的算法可以有助于检测病变并有效地找到病变的边界。

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