论文标题
S2MS:自学学习驱动的多光谱CT图像增强
S2MS: Self-Supervised Learning Driven Multi-Spectral CT Image Enhancement
论文作者
论文摘要
光子计数光谱CT(PCCT)可以在不同能量通道中产生重建的衰减图,从而反映扫描物体的能量性能。由于光子数量有限和每个能量通道的非理想检测器响应,重建的图像通常包含很多噪声。随着深度学习(DL)技术的发展,已经提出了降低降噪的不同类型的基于DL的模型。但是,大多数模型都需要干净的数据集作为培训标签,这在医学成像领域并不总是可用。我们通过每个频道重建图像的相似性启发,我们通过多光谱通道(S2MS)提出了一个基于自我监视的学习PCCT图像增强框架。在S2MS框架中,输入和输出标签都是嘈杂的图像。具体而言,一个单个通道图像被用作输出,而其他单个通道和通道-SUM图像的图像被用作训练网络的输入,该输入可以完全使用光谱数据信息而无需额外成本。基于AAPM低剂量CT挑战数据库的仿真结果表明,与传统的DL模型相比,提出的S2MS模型可以更有效地抑制噪声并保留细节,这有可能提高临床应用中PCCT的图像质量。
Photon counting spectral CT (PCCT) can produce reconstructed attenuation maps in different energy channels, reflecting energy properties of the scanned object. Due to the limited photon numbers and the non-ideal detector response of each energy channel, the reconstructed images usually contain much noise. With the development of Deep Learning (DL) technique, different kinds of DL-based models have been proposed for noise reduction. However, most of the models require clean data set as the training labels, which are not always available in medical imaging field. Inspiring by the similarities of each channel's reconstructed image, we proposed a self-supervised learning based PCCT image enhancement framework via multi-spectral channels (S2MS). In S2MS framework, both the input and output labels are noisy images. Specifically, one single channel image was used as output while images of other single channels and channel-sum image were used as input to train the network, which can fully use the spectral data information without extra cost. The simulation results based on the AAPM Low-dose CT Challenge database showed that the proposed S2MS model can suppress the noise and preserve details more effectively in comparison with the traditional DL models, which has potential to improve the image quality of PCCT in clinical applications.