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Evaluation of Image Quality of a Deep Learning Image Reconstruction Algorithm

机译:深度学习图像重建算法的图像质量评估

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摘要

The iterative reconstruction methods ASiR and ASiR-V have been accepted by hundreds of sites as their standard of care for a variety of protocols and applications. While the reduction in noise has been significant some readers have a preference for the classic image appearance. To maintain the classic image appearance of FBP at the same dose levels used for the standard of care with ASiR-V we introduce, Deep Learning Image Reconstruction (DLIR), a technique using artificial neural networks. This paper demonstrates that DLIR can maintain or improve upon the performance of the conventional iterative reconstruction algorithm (ASiR-V) in terms of low contrast detectability, noise, and spatial resolution.
机译:迭代重建方法ASiR和ASiR-V已被数百个站点接受为它们针对各种协议和应用的护理标准。尽管降噪效果显着,但一些读者还是偏爱经典的图像外观。为了将FBP的经典图像外观保持在与使用ASiR-V的护理标准相同的剂量水平,我们引入了深度学习图像重建(DLIR),这是一种使用人工神经网络的技术。本文证明了DLIR可以在低对比度可检测性,噪声和空间分辨率方面保持或改善常规迭代重建算法(ASiR-V)的性能。

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