Fast-MC-PET: A Novel Deep Learning-aided Motion Correction and Reconstruction Framework for Accelerated PET

Bo Zhou, Yu-Jung Tsai, Jiazhen Zhang, Xueqi Guo, Huidong Xie, Xiongchao Chen, T. Miao, Yihuan Lu, J. Duncan, Chi Liu
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引用次数: 4

Abstract

Patient motion during PET is inevitable. Its long acquisition time not only increases the motion and the associated artifacts but also the patient's discomfort, thus PET acceleration is desirable. However, accelerating PET acquisition will result in reconstructed images with low SNR, and the image quality will still be degraded by motion-induced artifacts. Most of the previous PET motion correction methods are motion type specific that require motion modeling, thus may fail when multiple types of motion present together. Also, those methods are customized for standard long acquisition and could not be directly applied to accelerated PET. To this end, modeling-free universal motion correction reconstruction for accelerated PET is still highly under-explored. In this work, we propose a novel deep learning-aided motion correction and reconstruction framework for accelerated PET, called Fast-MC-PET. Our framework consists of a universal motion correction (UMC) and a short-to-long acquisition reconstruction (SL-Reon) module. The UMC enables modeling-free motion correction by estimating quasi-continuous motion from ultra-short frame reconstructions and using this information for motion-compensated reconstruction. Then, the SL-Recon converts the accelerated UMC image with low counts to a high-quality image with high counts for our final reconstruction output. Our experimental results on human studies show that our Fast-MC-PET can enable 7-fold acceleration and use only 2 minutes acquisition to generate high-quality reconstruction images that outperform/match previous motion correction reconstruction methods using standard 15 minutes long acquisition data.
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Fast-MC-PET:一种新的加速PET的深度学习辅助运动校正和重建框架
患者在PET期间的运动是不可避免的。它的长采集时间不仅增加了运动和相关的伪影,而且增加了患者的不适感,因此PET加速是可取的。然而,加速PET采集将导致重建图像信噪比较低,并且图像质量仍然会因运动引起的伪影而下降。以前的PET运动校正方法大多是特定于运动类型的,需要运动建模,因此当多种类型的运动同时存在时可能会失败。此外,这些方法是为标准长采集定制的,不能直接应用于加速PET。为此,加速PET的无建模通用运动校正重建还有待进一步探索。在这项工作中,我们提出了一种新的用于加速PET的深度学习辅助运动校正和重建框架,称为Fast-MC-PET。我们的框架由一个通用运动校正(UMC)和一个短到长采集重建(SL-Reon)模块组成。UMC通过从超短帧重建中估计准连续运动,并将此信息用于运动补偿重建,从而实现无建模运动校正。然后,SL-Recon将具有低计数的加速UMC图像转换为具有高计数的高质量图像,用于我们的最终重建输出。我们在人体研究上的实验结果表明,我们的Fast-MC-PET可以实现7倍的加速,只需2分钟的采集就可以生成高质量的重建图像,优于/匹配以前使用标准15分钟采集数据的运动校正重建方法。
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