글로벌 연구동향
의학물리학
- 2025년 09월호
[Med Phys .] Continuous representation-based reconstruction for computed tomography연세대 / 유민우, 백종덕*
- 출처
- Med Phys .
- 등재일
- 2025 Jul
- 저널이슈번호
- 52(7):e17849.
- 내용
Abstract
Background: Computed tomography (CT) imaging has been developed to acquire a higher resolution image for detecting early-stage lesions. However, the lack of spatial resolution of CT images is still a limitation to fully utilize the capabilities of display devices for radiologists.Purpose: This limitation can be addressed by improving the quality of the reconstructed image using super-resolution (SR) techniques without changing data acquisition protocols. In particular, local implicit representation-based techniques proposed in the field of low-level computer vision have shown promising performance, but their integration into CT image reconstruction is limited by considerable memory and runtime requirements due to excessive input data size.
Methods: To address these limitations, we propose a continuous image representation-based CT image reconstruction (CRET) structure. Our CRET ensures fast and memory-efficient reconstruction for the specific region of interest (ROI) image by adapting our proposed sinogram squeezing and decoding via a set of sinusoidal basis functions. Furthermore, post-restoration step can be employed to mitigate residual artifacts and blurring effects, leading to improve image quality.
Results: Our proposed method shows superior image quality than other local implicit representation methods and can be further improved with additional post-processing. In addition proposed structure achieves superior performance in terms of anthropomorphic observer model evaluation compared to conventional techniques. This results highlights that CRET can be used to improve diagnostic capabilities by setting the reconstruction resolution higher than the ground truth images in training.
Conclusions: Our proposed CRET method offers a promising solution for improving CT image resolution while addressing excessive memory and runtime consumption. The source code of our proposed CRET is available at https://github.com/minwoo-yu/CRET.
Affiliations
Minwoo Yu 1, Junhyun Ahn 2, Jongduk Baek 1 3
1Department of Artificial Intelligence, Yonsei University, Seoul, South Korea.
2School of Integrated Technology, Yonsei University, Seoul, South Korea.
3BareuneX Imaging Inc., Seoul, South Korea.
- 키워드
- computed tomography (CT) image; continuous image representation; sinogram squeezing; sinusoidal basis decoder.
- 연구소개
- CT영상 복원 시 가장 널리 사용하는 FBP 재구성 기법에 local implicit representation기반 기법을 통합하는 방법론을 제안하는 연구입니다. 재구성 시 연산 효율을 개선하고, 영상 품질을 높이기 위한 처리 기법들을 함께 포함하는데, 원하는 영상 구역에 따라 시노그램 데이터를 가공하는 방법을 통해서 효율 개선 및 품질 향상 모두를 기록할 수 있음을 보였습니다.
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