4.6 Article

PET image reconstruction with deep progressive learning

Journal

PHYSICS IN MEDICINE AND BIOLOGY
Volume 66, Issue 10, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1361-6560/abfb17

Keywords

image reconstruction; positron emission tomography; deep learning; convolutional neural networks

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In this study, a deep progressive learning (DPL) method is proposed for PET image reconstruction to bridge the gap between low quality and high quality images through two learning steps. The experimental results show promising outcomes in reducing noise and improving contrast of PET images, with potential versatility for various imaging and image processing problems.
Convolutional neural networks (CNNs) have recently achieved state-of-the-art results for positron emission tomography (PET) imaging problems. However direct learning from input image to target image is challenging if the gap is large between two images. Previous studies have shown that CNN can reduce image noise, but it can also degrade contrast recovery for small lesions. In this work, a deep progressive learning (DPL) method for PET image reconstruction is proposed to reduce background noise and improve image contrast. DPL bridges the gap between low quality image and high quality image through two learning steps. In the iterative reconstruction process, two pre-trained neural networks are introduced to control the image noise and contrast in turn. The feedback structure is adopted in the network design, which greatly reduces the parameters. The training data come from uEXPLORER, the world's first total-body PET scanner, in which the PET images show high contrast and very low image noise. We conducted extensive phantom and patient studies to test the algorithm for PET image quality improvement. The experimental results show that DPL is promising for reducing noise and improving contrast of PET images. Moreover, the proposed method has sufficient versatility to solve various imaging and image processing problems.

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