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Mammographic Image Conversion Between Source and Target Acquisition Systems Using cGAN

机译:使用cgan的源和目标采集系统之间的乳房X线图图像转换

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Our work aims at developing a machine learning-based image conversion algorithm to adjust quantum noise, sharpness, scattering, and other characteristics of radiographic images acquired with a given imaging system as if they had been acquired with a different acquisition system. Purely physics-based methods which have previously been developed for image conversion rely on the measurement of the physical properties of the acquisition devices, which limit the range of their applicability. In this study, we focused on the conversion of mammographic images from a source acquisition system into a target system using a conditional Generative Adversarial Network (cGAN). This network penalizes any possible structural differences between network-generated and target images. The optimization process was enhanced by designing new reconstruction loss terms which emphasized the quality of high frequency image contents. We trained our cGAN model on a dataset of paired synthetic mammograms and slanted edge phantom images. We coupled one independent slanted edge phantom image with each anthropomorphic breast image and presented the pair as a combined input into the network. To improve network performance at high frequencies, we incorporated an edge-based loss function into the reconstruction loss. Qualitative results demonstrated the feasibility of our method to adjust the sharpness of mammograms acquired with a source system to appear as if the they were acquired with a different target system. Our method was validated by comparing the presampled modulation transfer function (MTF) of the network-generated edge image and the MTF of the source and target mammography acquisition systems at different spatial frequencies. This image conversion technique may help training of machine learning algorithms so that their applicability generalizes to a larger set of medical image acquisition devices. Our work may also facilitate performance assessment of computer-aided detection systems.
机译:我们的作品旨在开发基于机器学习的图像转换算法,以调整用给定的成像系统获取的放射线图像的量子噪声,清晰度,散射和其他特征,就像通过不同的采集系统获取它们一样。以前已经开发的基于物理的方法用于图像转换依赖于测量采集设备的物理性质,这限制了其适用性的范围。在本研究中,我们专注于使用条件生成对冲网络从源采集系统转换为目标系统(Cgan)。该网络惩罚网络生成和目标图像之间的任何可能结构差异。通过设计强调高频图像内容的质量的新的重建损失术语来提高优化过程。我们培训了我们在成对的合成乳房X光图和倾斜边缘幻像图像的数据集上培训。我们将一个独立的倾斜边缘幻像图像耦合,每个拟蒽型乳房图像并将该对作为组合输入呈现为网络。为了提高高频的网络性能,我们将基于边缘的损耗函数纳入了重建损失。定性结果证明了我们的方法调整使用源系统获取的乳房X光检查的敏锐度看起来好像被不同的目标系统获取。通过在不同空间频率下比较网络生成的边缘图像的预先样调制传递函数(MTF)和源乳房采集系统的预先样的调制传递函数(MTF)来验证我们的方法。该图像转换技术可以帮助对机器学习算法的培训,使得它们的适用性推广到更大的一组医学图像采集设备。我们的工作还可以促进对计算机辅助检测系统的性能评估。

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