基于birads的乳腺结节边缘、方向和后方超声图像的恶性检测

Yuli Triyani, Wahyuni Khabzli, Wiwin Styorini
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引用次数: 0

摘要

到2020年,乳腺癌在世界上的患病率最高,有2,261,419例,占11.7%。它也是癌症死亡的主要原因,占所有癌症死亡人数的6.9%。亚洲和印度尼西亚的患病率和死亡率最高。这是一个必须解决的紧迫问题。超声检查(USG)被建议用于评估乳腺结节的特征。超声图像上的乳腺结节使用乳腺成像、报告和数据系统(BIRADS)分类进行解释,该分类有五个特征。然而,超声成像的假阳性结果(FPR)的概率相对较高。计算机辅助诊断(CAD)的创建是为了降低FPR。然而,基于BIRADS许多特征的CAD研究目前处于边缘。因此,本研究旨在基于BIRADS的三个特征,即边缘、后部和取向方面,提出诊断乳腺结节恶性肿瘤的方法。该方法包括预处理、自动分割、特征提取和分类4个阶段。采用预处理自适应中值滤波,最大窗口大小为11像素,线性直方图归一化和减少各向异性扩散(SRAD)滤波构建该方法。建议的自动分割采用中性分水岭法。基于结节的边缘、方向和后部,提出了10个特征:结节宽度、梯度、长细度、边缘锐度、阴影指标、偏度、能量、熵、离散度和坚固性。MLP是一种分类方法。该方法使用94张结节图像,准确率为88.30%,灵敏度为82.35%,特异性为91.67%,Kappa为0.7449,AUC为0.865。因此,可以得出结论,该方法能够在超声图像中检测乳腺结节中的恶性肿瘤。为了使所提出的方法在未来更加可靠,可以开发自动RoI。
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Malignant Detection of Breast Nodules On BIRADS-Based Ultrasound Images Margin, Orientation, And Posterior
Breast cancer has the largest prevalence in the world in 2020, with 2,261,419 cases or 11.7%. It is also the leading cause of cancer death, accounting for 6.9% of all cancer deaths. Asia and Indonesia have the greatest prevalence and mortality rates. This is an urgent issue that must be addressed. Ultrasonography (USG) is advised for assessing the features of breast nodules. Breast nodules on ultrasound pictures are interpreted using the Breast Imaging, Reporting, and Data System (BIRADS) category, which has five features. Yet, the probability of a False Positive Result (FPR) on ultrasound imaging is relatively high. Computer Aided Diagnosis (CAD) was created to reduce FPR. However, CAD research based on many BIRADS traits is currently margined. As a result, based on three BIRADS characteristics, namely the margin, posterior, and orientation aspects, this study aims to proposed the methode for diagnosing breast nodule malignancy. The proposed method consists of 4 stages, namely, pre-processing, automatic segmentation, features extraction, and classification. Pre-processing adaptive median filter maximum window size is 11 pixels, linear histogram normalizing, and Reduction Anisotropic Diffusion (SRAD) filter were used to construct the method. The neutrosophic watershed method was used in the suggested automatic segmentation. Based on the nodule's margin, orientation, and posterior, 10 features were proposed: nodule width, gradient, slenderness, margin sharpness, shadow indicators, skewness, energy, entropy, dispersion, and solidity. MLP is a classification approach. The test used 94 nodule pictures and yielded an accuracy of 88.30%, a sensitivity of 82.35%, a specificity of 91.67%, a Kappa of 0.7449, and an AUC of 0.865. As a result, it is feasible to conclude that the proposed method is capable of detecting malignancy in breast nodules in ultrasound images. To make the proposed method more reliable in the future, automatic RoI can be developed.
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