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Low Dose CT Image Denoising Using a Generative Adversarial Network with Wasserstein Distance and Perceptual Loss

机译:使用具有Wasserstein距离和感知损失的生成对抗网络对低剂量CT图像进行降噪

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摘要

The continuous development and extensive use of CT in medical practice has raised a public concern over the associated radiation dose to the patient. Reducing the radiation dose may lead to increased noise and artifacts, which can adversely affect the radiologists judgement and confidence. Hence, advanced image reconstruction from low-dose CT data is needed to improve the diagnostic performance, which is a challenging problem due to its ill-posed nature. Over the past years, various low-dose CT methods have produced impressive results. However, most of the algorithms developed for this application, including the recently popularized deep learning techniques, aim for minimizing the mean-squared-error (MSE) between a denoised CT image and the ground truth under generic penalties. Although the peak signal-to-noise ratio (PSNR) is improved, MSE- or weighted-MSE-based methods can compromise the visibility of important structural details after aggressive denoising. This paper introduces a new CT image denoising method based on the generative adversarial network (GAN) with Wasserstein distance and perceptual similarity. The Wasserstein distance is a key concept of the optimal transport theory, and promises to improve the performance of GAN. The perceptual loss suppresses noise by comparing the perceptual features of a denoised output against those of the ground truth in an established feature space, while the GAN focuses more on migrating the data noise distribution from strong to weak statistically. Therefore, our proposed method transfers our knowledge of visual perception to the image denoising task and is capable of not only reducing the image noise level but also trying to keep the critical information at the same time. Promising results have been obtained in our experiments with clinical CT images.
机译:CT在医学实践中的不断发展和广泛使用引起了公众对患者辐射剂量的关注。降低辐射剂量可能会导致噪声和伪影增加,这可能会对放射科医生的判断和信心产生不利影响。因此,需要从低剂量CT数据进行高级图像重建以改善诊断性能,由于其不适定的性质,这是一个具有挑战性的问题。在过去的几年中,各种低剂量CT方法产生了令人印象深刻的结果。但是,为此应用程序开发的大多数算法,包括最近流行的深度学习技术,旨在在通用惩罚下最小化经过去噪的CT图像与地面真实性之间的均方误差(MSE)。尽管提高了峰值信噪比(PSNR),但基于MSE或加权MSE的方法在主动降噪后可能会损害重要结构细节的可见性。本文介绍了一种基于具有Wasserstein距离和感知相似度的生成对抗网络(GAN)的CT图像去噪新方法。 Wasserstein距离是最优输运理论的关键概念,有望改善GAN的性能。感知损失通过将去噪输出的感知特征与既有特征空间中的地面真实特征进行比较,从而抑制了噪声,而GAN更着重于将数据噪声分布从强统计迁移到弱统计。因此,我们提出的方法将我们的视觉感知知识转移到图像去噪任务中,不仅能够降低图像噪声水平,而且能够同时保留关键信息。我们在临床CT图像实验中获得了可喜的结果。

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