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Generating High Resolution Digital Mammogram from Digitized Film Mammogram with Conditional Generative Adversarial Network

机译:使用条件生成对抗网络从数字化胶片X线照片生成高分辨率数字X线照片

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Deep-learning based application for digital mammography screening is limited due to lack of labeled data. Generating digital mammogram (DM) from existing labeled digitized screen-film mammogram (DFM) dataset is one approach that may alleviate the problem. Generating high resolution DMs from DFMs is a challenge due to the limitations of network capacity and lack of GPU memory. In this study, we developed a deep learning framework, Cycle-HDDM, with which high resolution DMs were generated from DFMs. Our Cycle-HDDM model first used a sliding window to crop DFMs and DMs into patches of 256 by 256 in size. Then, we divided the patches into three categories (breast, background and boundary) using breast masks. We paired patches from the DFM and DM datasets for training with the constraint that these paired patches should be sampled from the same category of the two different image sets. We used U-Net as the generators and modified the discriminators so that the outputs of the discriminators were a two-channel image, one channel for distinguishing real and synthesized DMs, and the other for representing a probability map for breast mask. We designed a study to evaluate the usefulness of Cycle-HDDM in a segmentation task, the objective of which was to estimate the percentage of breast density (PD) on DMs using deep neural network (DNN). With IRB approval, 1651 DFMs and 813 DMs were collected. Both DFMs and DMs were normalized to a pixel size of 100μm × 100μm for the experiments. The results show that the synthesized DMs by Cycle-HDDM could significantly improve (p < 0.001) the DNN-based mammographic density segmentation.
机译:由于缺乏标记数据,基于深度学习的数字乳腺X线摄影筛查应用受到限制。从现有的已标记数字化的数字电影胶片X线照片(DFM)数据集中生成数字X线照片(DM)是可以缓解该问题的一种方法。由于网络容量的限制和GPU内存的不足,从DFM生成高分辨率DM是一项挑战。在这项研究中,我们开发了深度学习框架Cycle-HDDM,利用该框架从DFM生成高分辨率DM。我们的Cycle-HDDM模型首先使用滑动窗口将DFM和DM裁剪为256 x 256大小的小块。然后,我们使用乳房口罩将贴片分为三类(乳房,背景和边界)。我们将来自DFM和DM数据集的补丁配对以进行训练,但要限制这些配对的补丁应从两个不同图像集的同一类别中进行采样。我们使用U-Net作为生成器并修改了鉴别器,以使鉴别器的输出为两通道图像,一个通道用于区分真实和合成的DM,另一个用于表示胸罩的概率图。我们设计了一项研究,以评估Cycle-HDDM在分割任务中的有效性,其目的是使用深度神经网络(DNN)估计DM上的乳房密度(PD)百分比。经IRB批准,收集了1651个DFM和813个DM。为了进行实验,将DFM和DM均归一化为100μm×100μm的像素大小。结果表明,Cycle-HDDM合成的DM可以显着改善(p <0.001)基于DNN的乳腺摄影密度分割。

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