Wu Dufan, Kim Kyungsang, El Fakhri Georges, Li Quanzheng
IEEE Trans Med Imaging. 2017 Dec;36(12):2479-2486. doi: 10.1109/TMI.2017.2753138. Epub 2017 Sep 15.
Dose reduction in computed tomography (CT) is essential for decreasing radiation risk in clinical applications. Iterative reconstruction algorithms are one of the most promising way to compensate for the increased noise due to reduction of photon flux. Most iterative reconstruction algorithms incorporate manually designed prior functions of the reconstructed image to suppress noises while maintaining structures of the image. These priors basically rely on smoothness constraints and cannot exploit more complex features of the image. The recent development of artificial neural networks and machine learning enabled learning of more complex features of image, which has the potential to improve reconstruction quality. In this letter, K-sparse auto encoder was used for unsupervised feature learning. A manifold was learned from normal-dose images and the distance between the reconstructed image and the manifold was minimized along with data fidelity during reconstruction. Experiments on 2016 Low-dose CT Grand Challenge were used for the method verification, and results demonstrated the noise reduction and detail preservation abilities of the proposed method.
在计算机断层扫描(CT)中降低剂量对于降低临床应用中的辐射风险至关重要。迭代重建算法是补偿由于光子通量减少而增加的噪声的最有前途的方法之一。大多数迭代重建算法都包含手动设计的重建图像先验函数,以在保持图像结构的同时抑制噪声。这些先验基本上依赖于平滑约束,无法利用图像的更复杂特征。人工神经网络和机器学习的最新发展使得能够学习图像的更复杂特征,这有可能提高重建质量。在这封信中,K稀疏自动编码器用于无监督特征学习。从正常剂量图像中学习一个流形,并且在重建过程中,重建图像与流形之间的距离与数据保真度一起被最小化。使用2016年低剂量CT大挑战的实验对该方法进行验证,结果证明了所提出方法的降噪和细节保留能力。