论文标题
MRI重建增强的可逆锐化网络
Invertible Sharpening Network for MRI Reconstruction Enhancement
论文作者
论文摘要
高质量的MRI重建在临床应用中起着至关重要的作用。基于深度学习的方法已在MRI重建方面取得了令人鼓舞的结果。但是,大多数最先进的方法旨在优化通常用于自然图像的评估指标,例如PSNR和SSIM,而视觉质量并未主要追求。与完全采样的图像相比,重建的图像通常是模糊的,在这些图像中,高频特征可能不够锋利,无法自信临床诊断。为此,我们提出了一个可逆的锐化网络(Invsharpnet),以提高MRI重建的视觉质量。在培训期间,与传统的方法不同,学会将输入数据映射到地面真相,而Invsharpnet适应了一种向后的训练策略,该策略从地面真相(完全采样的图像)到输入数据(模糊重建)学习了模糊的转变。在推断过程中,学习的模糊变换可以倒转为利用网络的可逆性的锐化变换。各种MRI数据集的实验表明,InvSharpnet可以通过很少的伪影改善重建清晰度。放射科医生还评估了结果,表明我们提出的方法的视觉质量和诊断信心更好。
High-quality MRI reconstruction plays a critical role in clinical applications. Deep learning-based methods have achieved promising results on MRI reconstruction. However, most state-of-the-art methods were designed to optimize the evaluation metrics commonly used for natural images, such as PSNR and SSIM, whereas the visual quality is not primarily pursued. Compared to the fully-sampled images, the reconstructed images are often blurry, where high-frequency features might not be sharp enough for confident clinical diagnosis. To this end, we propose an invertible sharpening network (InvSharpNet) to improve the visual quality of MRI reconstructions. During training, unlike the traditional methods that learn to map the input data to the ground truth, InvSharpNet adapts a backward training strategy that learns a blurring transform from the ground truth (fully-sampled image) to the input data (blurry reconstruction). During inference, the learned blurring transform can be inverted to a sharpening transform leveraging the network's invertibility. The experiments on various MRI datasets demonstrate that InvSharpNet can improve reconstruction sharpness with few artifacts. The results were also evaluated by radiologists, indicating better visual quality and diagnostic confidence of our proposed method.