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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Nipple Segmentation and Localization Using Modified U-Net on Breast Ultrasound Images
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Nipple Segmentation and Localization Using Modified U-Net on Breast Ultrasound Images

机译:使用修改的U-Net在乳房超声图像上的乳头分割和定位

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Breast cancer causes massive deaths every year. To prevent this, the detection of a tumor in its initial stage is necessary. And correctly identifying a tumor from an ultrasound image requires years of experience and due to a few of a number of experienced specialists makes it a challenging task. In this work, a modified U-Net model named GRA U-Net is proposed to assist specialists in acceptably ascertaining a tumor in an ultrasound image. GRA U-Net is a combination of some of the existing techniques and can segment the nipple from Automated Whole Breast Ultrasound (AWBUS) images. Nipple segmentation is important as it can help in precisely locating the tumor from the outside of the breast. The segmented nipple can thus be used to locate tumor with respect to its position. There already exist so many segmentation models such as Residual-U-Net, Fcn8, Dense-U-Net and Squeeze U-Net. And on comparing them with the proposed model on parameters like accuracy, sensitivity, specificity, precision and so on. It was found that GRA U-Net delivers better performance with an accuracy of 99% and 71-measure of 92%. Thus this method could be used in bio-medical applications for improving the facilities that are present and provide a proper detection of tumor or a lesion in its initial stage.
机译:乳腺癌每年导致大规模的死亡。为了防止这种情况,需要在其初始阶段检测肿瘤。并正确地识别来自超声图像的肿瘤需要多年的经验,并且由于一些经验丰富的专家中,这是一个具有挑战性的任务。在这项工作中,提出了一种名为GRA U-Net的修改的U-Net模型,以帮助专家在超声图像中可接受地确定肿瘤。 GRA U-Net是一些现有技术的组合,并且可以从自动整体乳房超声(AWBUS)图像中划分乳头。乳头分割很重要,因为它可以帮助从乳房外部精确定位肿瘤。因此,分段的乳头可用于定位肿瘤相对于其位置。已经存在如此多的分段模型,例如残留U-Net,FCN8,Dense-U-Net和挤压U-Net。并将其与所提出的参数进行比较,如准确性,灵敏度,特异性,精度等的参数。发现GRA U-Net能够提供更好的性能,精度为99%和71次值为92%。因此,该方法可用于生物医学应用中,用于改善存在的设施,并在其初始阶段提供正确检测肿瘤或病变。

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