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Analysis of margin sharpness for breast nodule classification on ultrasound images

机译:超声图像对乳腺结节分类的边缘清晰度分析

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Breast cancer has the highest prevalence, incidence and mortality for females in worldwide and no exception in Indonesia. Ultrasound is a recommended modality for diagnosing breast cancer through ultrasound images. However, misdiagnosis might still occurs which is caused by human factors. Margin of breast nodule is one of the malignancy characteristics based on BIRADS. This research proposes a computer aided diagnosis (CADx)-based method for classifying breast nodules in ultrasound images based on margin characteristics. In practice, CADx is used as a second opinion in interpreting ultrasound images in order to obtain more accurate diagnosis results. The proposed approach consists of adaptive median filter for marker removal, pre-processing with normalisation and speckle reduction anisotropic diffusion (SRAD) filter followed by neutrosophic and watershed methods for segmentation process, features extraction and feature selection. A total of ten selected features including of texture, geometry and margin sharpness features are then classified by using multi-layer perceptron (MLP). This study uses 102 breast ultrasound nodule images with 57 non-circumscribed and 45 circumscribed margins. The performance of proposed approach achieves the accuracy of 95.10%, sensitivity of 93.33%, specificity of 96.49%, PPV of 95.45%, NPV of 94.83%, Kappa of 0.9004 and area under curve (AUC) of 0.989. These promising results indicate that the proposed approach successfully classifies breast nodule based on margin characteristics has a potential for assisting the radiologists in interpreting breast ultrasound images.
机译:在世界范围内,乳腺癌是女性患病率,发病率和死亡率最高的国家,印度尼西亚也不例外。超声是通过超声图像诊断乳腺癌的一种推荐方式。但是,仍然可能发生由人为因素引起的误诊。乳房结节的边缘是基于BIRADS的恶性特征之一。这项研究提出了一种基于计算机辅助诊断(CADx)的方法,用于基于边缘特征对超声图像中的乳腺结节进行分类。在实践中,CADx用作解释超声图像的第二意见,以获得更准确的诊断结果。所提出的方法包括用于标记去除的自适应中值滤波器,使用归一化和散斑减少各向异性扩散(SRAD)滤波器进行的预处理,然后是用于分割过程,特征提取和特征选择的中智和分水岭方法。然后,使用多层感知器(MLP)对包括纹理,几何图形和边缘清晰度特征在内的总共十个选定特征进行分类。这项研究使用102个乳房超声结节图像和57个非外接边界和45个外接边界。所提方法的准确度为95.10%,灵敏度为93.33%,特异性为96.49%,PPV为95.45%,NPV为94.83%,Kappa为0.9004,曲线下面积(AUC)为0.989。这些有希望的结果表明,所提出的方法基于边缘特征成功地对乳腺结节进行了分类,具有帮助放射科医生解释乳腺超声图像的潜力。

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