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首页> 外文期刊>Scientific reports. >Physics-informed Deep Learning for Dual-Energy Computed Tomography Image Processing
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Physics-informed Deep Learning for Dual-Energy Computed Tomography Image Processing

机译:物理知识深度学习双能计算断层扫描图像处理

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摘要

Dual-energy CT (DECT) was introduced to address the inability of conventional single-energy computed tomography (SECT) to distinguish materials with similar absorbances but different elemental compositions. However, material decomposition algorithms based purely on the physics of the underlying attenuation process have several limitations, leading to low signal-to-noise ratio (SNR) in the derived material-specific images. To overcome these, we trained a convolutional neural network (CNN) to develop a framework to reconstruct non-contrast SECT images from DECT scans. We show that the traditional physics-based decomposition algorithms do not bring to bear the full information content of the image data. A CNN that leverages the underlying physics of the DECT image generation process as well as the anatomic information gleaned via training with actual images can generate higher fidelity processed DECT images.
机译:引入双能CT(DECT)以解决常规单能计算断层摄影(SECT)的无法能力,以区分具有类似吸光度但不同元素组合物的材料。然而,基于潜在的衰减过程的物理学的材料分解算法具有若干限制,导致衍生材料特定图像中的低信噪比(SNR)。为了克服这些,我们培训了卷积神经网络(CNN)来开发一个框架,以从DECT扫描重建非对比度图像。我们表明,传统的基于物理的分解算法不会带来图像数据的完整信息内容。利用DECT图像生成过程的底层物理以及通过用实际图像训练收集的解剖学信息的CNN可以产生更高的保真处理DECT图像。

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