超低剂量(ULD) CT去噪中感知损失的特征聚集

M. Green, E. Marom, E. Konen, N. Kiryati, Arnaldo Mayer
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引用次数: 2

摘要

肺癌CT筛查项目以牺牲图像质量为代价,不断减少患者的辐射暴露。最先进的去噪算法有助于保留这些图像的诊断价值。本文提出了一种新的ULD胸部CT去噪方法。该方法聚合了多尺度特征,为感知损失的计算提供了丰富的信息。进一步优化胸部CT数据的损失,在真实CT图像上使用去噪自编码器来构建特征提取网络,而不是使用在自然图像上训练的现有网络。所提出的方法在真实ULD和正常剂量扫描的共同注册对上进行了验证,并在定性和定量上与已发表的最先进的去噪网络进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Aggregation in Perceptual Loss for Ultra Low-Dose (ULD) CT Denoising
Lung cancer CT screening programs are continuously reducing patient exposure to radiation at the expense of image quality. State-of-the-art denoising algorithms are instrumental in preserving the diagnostic value of these images. In this work, a novel neural denoising scheme is proposed for ULD chest CT. The proposed method aggregates multi-scale features that provide rich information for the computation of a perceptive loss. The loss is further optimized for chest CT data by using denoising auto-encoders on real CT images to build the feature extracting network instead of using an existing network trained on natural images. The proposed method was validated on co-registered pairs of real ULD and normal dose scans and compared favorably with published state-of-the-art denoising$ networks both qualitatively and quantitatively.
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