An Efficient Preprocessing Technique for Multimodality Breast Cancer Images

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
A. Y. K., A. S, Ramesh Babu D. R.
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引用次数: 0

Abstract

On average, one in every eight women is diagnosed with breast cancer during their lifetime, and accounts for 14% of cancers in women. Since early diagnosis could improve treatment outcomes and longer survival times for patients, it is absolutely necessary to develop techniques to classify lesions within breast cancer mammograms and ultrasound images. The main goal is to determine the class of tumor present within the image, which is pivotal in diagnosing breast cancer patients. In this paper, we propose an Sobel-Canny-Gabor(SCG) model, which is a hybrid model that implements three different edge detection filters; Sobel filter, Gabor filter, and Canny filter. This model is used to enhance the appearance of the mammogram and ultrasound images, which is then fed into a classification model. Through classification, there could be a potential improvement in the results of the overall classification. Post-classification, the model is then evaluated using the metric Peak Signal-to-Noise Ratio (PSNR), which measures the quality between the original image and the compressed image.On average, one in every eight women is diagnosed with breast cancer during their lifetime, and accounts for 14% of cancers in women. Since early diagnosis could improve treatment outcomes and longer survival times for patients, it is absolutely necessary to develop techniques to classify lesions within breast cancer mammograms and ultrasound images. The main goal is to determine the class of tumor present within the image, which is pivotal in diagnosing breast cancer patients. In this paper, we propose an Sobel-Canny-Gabor(SCG) model, which is a hybrid model that implements three different edge detection filters; Sobel filter, Gabor filter, and Canny filter. This model is used to enhance the appearance of the mammogram and ultrasound images, which is then fed into a classification model. Through classification, there could be a potential improvement in the results of the overall classification. Post-classification, the model is then evaluated using the metric Peak Signal-to-Noise Ratio (PSNR), which measures the quality between the original image and the compressed image.
一种高效的多模态乳腺癌图像预处理技术
平均每8名女性中就有1人在其一生中被诊断患有乳腺癌,占女性癌症患者的14%。由于早期诊断可以改善治疗效果并延长患者的生存时间,因此开发乳腺癌乳房x光片和超声图像中的病变分类技术是绝对必要的。主要目的是确定图像中存在的肿瘤类别,这是诊断乳腺癌患者的关键。在本文中,我们提出了Sobel-Canny-Gabor(SCG)模型,它是一种混合模型,实现了三种不同的边缘检测滤波器;Sobel过滤器,Gabor过滤器和Canny过滤器。该模型用于增强乳房x光片和超声图像的外观,然后将其输入分类模型。通过分类,整体分类的结果有可能得到改善。分类后,使用度量峰值信噪比(PSNR)对模型进行评估,PSNR衡量原始图像和压缩图像之间的质量。平均每8名女性中就有1人在其一生中被诊断患有乳腺癌,占女性癌症患者的14%。由于早期诊断可以改善治疗效果并延长患者的生存时间,因此开发乳腺癌乳房x光片和超声图像中的病变分类技术是绝对必要的。主要目的是确定图像中存在的肿瘤类别,这是诊断乳腺癌患者的关键。在本文中,我们提出了Sobel-Canny-Gabor(SCG)模型,它是一种混合模型,实现了三种不同的边缘检测滤波器;Sobel过滤器,Gabor过滤器和Canny过滤器。该模型用于增强乳房x光片和超声图像的外观,然后将其输入分类模型。通过分类,整体分类的结果有可能得到改善。分类后,使用度量峰值信噪比(PSNR)对模型进行评估,PSNR衡量原始图像和压缩图像之间的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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