基于卷积神经网络的数字乳腺断层合成图像中极致密乳腺组织图像增强模型

S. N. Sulaiman, Muhammad Hanzalah Normazli, N. A. Harron, N. Karim, K. A. Ahmad, Z. H. C. Soh
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引用次数: 0

摘要

在40岁以上的女性中,几乎有一半的乳房x光检查显示乳房致密。乳房密度与低BMI和绝经后激素替代疗法的使用有关。乳房密度高的女性比乳房脂肪多的女性更容易患乳腺癌,而且风险随着乳房密度的增加而增加。乳房密度高的女性的乳房x光检查可能比乳房脂肪多的女性更具挑战性。这是因为乳腺致密组织和病理性乳腺病变,如钙化和肿瘤,在乳房x光检查上表现为白色区域。因此,本研究旨在使用深度学习卷积神经网络(CNN)创建一种快速准确的方法来增强数字乳腺断层合成(DBT)图像。结果表明,与BICUBIC相比,极深超分辨率(VDSR)方法产生了最好的结果。最后,本研究将VDSR的所得结果与传统的BICUBIC方法进行比较。研究表明,该项目取得了满意的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Convolutional Neural Network Model for Image Enhancement of Extremely Dense Breast Tissue in Digital Breast Tomosynthesis Images
Almost half of all mammograms performed on women over 40 reveal dense breasts. Breast density has been associated with both low BMI and the use of postmenopausal hormone replacement therapy. Breast cancer is more common in women with dense breasts than in women with fatty breasts, and the risk increases with increasing breast density. Mammograms may be more challenging to read in women with dense breasts than in women with fatty breasts. This is because dense breast tissue and pathological breast alterations, such as calcifications and tumours, appear as white regions on mammography. As a result, this study aims to create a fast and accurate approach for enhancing Digital Breast Tomosynthesis (DBT) images using a deep learning convolution neural network (CNN). The results then show that the very deep super-resolution (VDSR) approach produces the best results compared to the BICUBIC. Finally, this research will compare the obtained results for VDSR with the traditional method, BICUBIC. This study can conclude that the project successfully obtained a satisfactory result.
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