Application of deep learning with fractal images to sparse-view CT.
Authors
Affiliations (4)
Affiliations (4)
- Department of Graduate School of Health Sciences, Kyorin University, 5-4-1 Shimorenjaku, Mitaka City, Tokyo, 181-8612, Japan.
- Department of Radiology, Toho University Ohashi Medical Center, 2-22-36, Ohashi, Meguro-Ku, Tokyo, 153-8514, Japan.
- Department of Radiological Technology, Faculty of Health Science, Juntendo University, 1-5-32, Yushima, Bunkyo-Ku, Tokyo, 113-0034, Japan.
- Department of Graduate School of Health Sciences, Kyorin University, 5-4-1 Shimorenjaku, Mitaka City, Tokyo, 181-8612, Japan. [email protected].
Abstract
Deep learning has been widely used in research on sparse-view computed tomography (CT) image reconstruction. While sufficient training data can lead to high accuracy, collecting medical images is often challenging due to legal or ethical concerns, making it necessary to develop methods that perform well with limited data. To address this issue, we explored the use of nonmedical images for pre-training. Therefore, in this study, we investigated whether fractal images could improve the quality of sparse-view CT images, even with a reduced number of medical images. Fractal images generated by an iterated function system (IFS) were used for nonmedical images, and medical images were obtained from the CHAOS dataset. Sinograms were then generated using 36 projections in sparse-view and the images were reconstructed by filtered back-projection (FBP). FBPConvNet and WNet (first module: learning fractal images, second module: testing medical images, and third module: learning output) were used as networks. The effectiveness of pre-training was then investigated for each network. The quality of the reconstructed images was evaluated using two indices: structural similarity (SSIM) and peak signal-to-noise ratio (PSNR). The network parameters pre-trained with fractal images showed reduced artifacts compared to the network trained exclusively with medical images, resulting in improved SSIM. WNet outperformed FBPConvNet in terms of PSNR. Pre-training WNet with fractal images produced the best image quality, and the number of medical images required for main-training was reduced from 5000 to 1000 (80% reduction). Using fractal images for network training can reduce the number of medical images required for artifact reduction in sparse-view CT. Therefore, fractal images can improve accuracy even with a limited amount of training data in deep learning.