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Employing Multiple Low-Dose PET Images (at Different Dose Levels) as Prior Knowledge to Predict Standard-Dose PET Images.
- Source :
- Journal of Digital Imaging; Aug2023, Vol. 36 Issue 4, p1588-1596, 9p, 2 Black and White Photographs, 2 Charts, 2 Graphs
- Publication Year :
- 2023
-
Abstract
- The existing deep learning-based denoising methods predicting standard-dose PET images (S-PET) from the low-dose versions (L-PET) solely rely on a single-dose level of PET images as the input of deep learning network. In this work, we exploited the prior knowledge in the form of multiple low-dose levels of PET images to estimate the S-PET images. To this end, a high-resolution ResNet architecture was utilized to predict S-PET images from 6 to 4% L-PET images. For the 6% L-PET imaging, two models were developed; the first and second models were trained using a single input of 6% L-PET and three inputs of 6%, 4%, and 2% L-PET as input to predict S-PET images, respectively. Similarly, for 4% L-PET imaging, a model was trained using a single input of 4% low-dose data, and a three-channel model was developed getting 4%, 3%, and 2% L-PET images. The performance of the four models was evaluated using structural similarity index (SSI), peak signal-to-noise ratio (PSNR), and root mean square error (RMSE) within the entire head regions and malignant lesions. The 4% multi-input model led to improved SSI and PSNR and a significant decrease in RMSE by 22.22% and 25.42% within the entire head region and malignant lesions, respectively. Furthermore, the 4% multi-input network remarkably decreased the lesions' SUV<subscript>mean</subscript> bias and SUV<subscript>max</subscript> bias by 64.58% and 37.12% comparing to single-input network. In addition, the 6% multi-input network decreased the RMSE within the entire head region, within the lesions, lesions' SUV<subscript>mean</subscript> bias, and SUV<subscript>max</subscript> bias by 37.5%, 39.58%, 86.99%, and 45.60%, respectively. This study demonstrated the significant benefits of using prior knowledge in the form of multiple L-PET images to predict S-PET images. [ABSTRACT FROM AUTHOR]
Details
- Language :
- English
- ISSN :
- 08971889
- Volume :
- 36
- Issue :
- 4
- Database :
- Complementary Index
- Journal :
- Journal of Digital Imaging
- Publication Type :
- Academic Journal
- Accession number :
- 169808810
- Full Text :
- https://doi.org/10.1007/s10278-023-00815-y