Mammogram Pre-processing Using filtering methods for Breast Cancer Diagnosis

Shah Hemali, Agrawal Smita, P. Oza, S. Tanwar, A. Alkhayyat
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Abstract

: Cancer is the second most found disease, and Breast cancer is the most common in women. Breast cancer is curable and can reduce mortality, but it needs to be identified early and treated accordingly. Radiologists use different modalities for the identification of Breast cancer. The superiority of Mammograms over other modalities is like minor radiation exposure and can identify different types of cancers. Therefore, mammograms are the most frequently used imaging modality for Breast Cancer Diagnosis. However, noise can be added while capturing the image, affecting the accuracy and analysis of the result. Therefore, using different filtering techniques to pre-process mammograms can enhance images and improve outcomes. For the study, the MIAS dataset has been used. This paper gives a comparative study on filters for Denoising and enhancement of mammograms. The study focuses on filters like Box Filter, Averaging filter, Gaussian Filter, Identical Filter, Convolutional 2D Filter, Median Filter, and Bilateral Filter. Performance measures used to compare these filters are Mean Squared Error (MSE), Structural Similarity Index Measure (SSIM), and Peak Signal-to-noise Ratio (PSNR). All Performance measures are evaluated for all images of MIAS dataset and compared accordingly. Results show that Gaussian Filter, Median Filter, and Bilateral Filter give better results than other filters.
使用滤波方法对乳腺x线照片进行预处理,用于乳腺癌诊断
癌症是发病率第二高的疾病,而乳腺癌在女性中最为常见。乳腺癌是可以治愈的,可以降低死亡率,但需要及早发现并进行相应的治疗。放射科医生使用不同的方式来识别乳腺癌。乳房x光检查相对于其他方式的优势就像轻微的辐射暴露,可以识别不同类型的癌症。因此,乳房x光检查是乳腺癌诊断中最常用的成像方式。但是,在捕获图像时可能会添加噪声,影响结果的准确性和分析。因此,使用不同的滤波技术来预处理乳房x线照片可以增强图像并改善结果。这项研究使用了MIAS数据集。本文对乳腺x线图像去噪和增强滤波器进行了比较研究。研究重点是盒滤波器,平均滤波器,高斯滤波器,相同滤波器,卷积二维滤波器,中值滤波器和双边滤波器等滤波器。用于比较这些滤波器的性能指标是均方误差(MSE)、结构相似性指数度量(SSIM)和峰值信噪比(PSNR)。对MIAS数据集的所有图像评估所有性能指标并进行相应的比较。结果表明,高斯滤波器、中值滤波器和双边滤波器比其他滤波器具有更好的滤波效果。
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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