计算机科学
心脏宠物
人工智能
帧(网络)
计算机视觉
参数统计
正电子发射断层摄影术
参考坐标系
模式识别(心理学)
核医学
数学
医学
电信
统计
作者
Xueqi Guo,Shi Lei,Xiongchao Chen,Bo Zhou,Qiong Liu,Huidong Xie,Yi-Hwa Liu,Richard Palyo,Edward J. Miller,Albert J. Sinusas,Bruce Spottiswoode,Chi Liu,Nicha C. Dvornek
标识
DOI:10.1007/978-3-031-44689-4_7
摘要
The rapid tracer kinetics of rubidium-82 (82Rb) and high variation of cross-frame distribution in dynamic cardiac positron emission tomography (PET) raise significant challenges for inter-frame motion correction, particularly for the early frames where conventional intensity-based image registration techniques are not applicable. Alternatively, a promising approach utilizes generative methods to handle the tracer distribution changes to assist existing registration methods. To improve frame-wise registration and parametric quantification, we propose a Temporally and Anatomically Informed Generative Adversarial Network (TAI-GAN) to transform the early frames into the late reference frame using an all-to-one mapping. Specifically, a feature-wise linear modulation layer encodes channel-wise parameters generated from temporal tracer kinetics information, and rough cardiac segmentations with local shifts serve as the anatomical information. We validated our proposed method on a clinical 82Rb PET dataset and found that our TAI-GAN can produce converted early frames with high image quality, comparable to the real reference frames. After TAI-GAN conversion, motion estimation accuracy and clinical myocardial blood flow (MBF) quantification were improved compared to using the original frames. Our code is published at https://github.com/gxq1998/TAI-GAN.
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