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A new approach for detecting abnormalities in mammograms using a computer-aided windowing system based on Otsu's method

机译:一种新方法,用于使用基于OTSU方法的计算机辅助窗口系统检测乳房X光检查的异常

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摘要

Breast cancer is the most common cancer and the leading cause of cancer deaths in women worldwide. This study aimed to provide an automatic windowing method in mammograms, based on the principles of Otsu's thresholding function, to help radiologists more easily detect abnormalities on mammograms. A total of 322 mammographic images from the Mam-mographic Image Analysis Society (MIAS) database were used in the present study. The image background was removed based on Otsu's method. After selecting the threshold in the computer-aided windowing (CAW) system, the pixel values were kept larger than the threshold and displayed on a grayscale. A radiologist evaluated images randomly before and after CAW. Using CAW, the radiologist correctly diagnosed all healthy images (207 images). A total of 115 mammograms were evaluated to differentiate malignancy from benign masses. All 63 benign images were accurately diagnosed after using CAW. Moreover, of 52 malignant images, all were accurately recognized as malignant except one, which was recognized as benign. Therefore, specificity and sensitivity were significantly improved to 98% and 99.6%, respectively, and the area under the receiver operating characteristic (ROC) curve was calculated to be 0.99. The study showed that the use of CAW can potentially lead to quicker image assessment and improve the diagnostic accuracy of radiologists in differentiating between benign and malignant masses on mammograms.
机译:乳腺癌是全世界癌症最常见的癌症和癌症死亡原因。本研究旨在基于OTSU的阈值函数的原理提供乳房X光检查的自动窗口方法,帮助放射科医生更容易地检测乳房X光检查的异常。本研究中使用了来自MAM-Momlographic图像分析学会(MIS)数据库的322个乳房Xmmography图像。基于OTSU的方法除去图像背景。在选择计算机辅助窗口(CAW)系统中的阈值之后,像素值保持大于阈值并显示在灰度上。放射科医生在CAW之前和之后随机评估图像。使用Caw,放射科医生正确诊断出所有健康的图像(207个图像)。评估了115个乳房X线照片以区分恶性肿瘤。使用CAW后,所有63个良性图像都被精确诊断出来。此外,52个恶性图像,所有人都被准确地被认为是恶性的,除了一个被认为是良性的。因此,特异性和敏感性分别显着提高至98%和99.6%,并且将接收器操作特征(ROC)曲线下的区域计算为0.99。该研究表明,CAW的使用可能导致更快的图像评估,提高放射科医生在乳房X光图上的良性和恶性肿块之间的诊断准确性。

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