Deep-Learning-Aided Intraframe Motion Correction for Low-Count Dynamic Brain PET

被引:0
|
作者
Reimers, Erik [1 ]
Cheng, Ju-Chieh [2 ,3 ]
Sossi, Vesna [2 ]
机构
[1] the Department of Biomedical Engineering, University of British Columbia, Vancouver,BC,V6T 1Z1, Canada
[2] the Department of Physics and Astronomy, University of British Columbia, Vancouver,BC,V6T 1Z1, Canada
[3] the Pacific Parkinson’s Research Centre, University of British Columbia, Vancouver,BC,V6T 1Z3, Canada
来源
IEEE Transactions on Radiation and Plasma Medical Sciences | 2024年 / 8卷 / 01期
关键词
Deep learning - Image enhancement - Medical imaging - Motion compensation - Motion estimation - Neural networks - Noise abatement - Spatial distribution;
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摘要
—Data-driven intraframe motion correction of a dynamic brain PET scan (with each frame duration on the order of minutes) is often achieved through the co-registration of high-temporal-resolution (e.g., 1-s duration) subframes to estimate subject head motion. However, this conventional method of subframe co-registration may perform poorly during periods of low counts and/or drastic changes in the spatial tracer distribution over time. Here, we propose a deep learning (DL), U-Net-based convolutional neural network model which aids in the PET motion estimation to overcome these limitations. Unlike DL models for PET denoising, a nonstandard 2.5-D DL model was used which transforms the high-temporal-resolution subframes into nonquantitative DL subframes which allow for improved differentiation between noise and structural/functional landmarks and estimate a constant tracer distribution across time. When estimating motion during periods of drastic change in spatial distribution (within the first minute of the scan, ~1-s temporal resolution), the proposed DL method was found to reduce the expected magnitude of error (+/−) in the estimation for an artificially injected motion trace from 16 mm and 7◦ (conventional method) to 0.7 mm and 0.6◦ (DL method). During periods of low counts but a relatively constant spatial tracer distribution (60th min of the scan, ~1-s temporal resolution), an expected error was reduced from 0.5 mm and 0.7◦ (conventional method) to 0.3 mm and 0.4◦ (DL method). The use of the DL method was found to significantly improve the accuracy of an image-derived input function calculation when motion was present during the first minute of the scan. © 2023 IEEE.
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页码:53 / 63
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