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- 2025년 05월호
[Appl Radiat Isot .] Feasibility verification of deep-learning based collimator-less imaging system using a voxelated GAGG(Ce) single volume detector: A Monte Carlo simulation복셀화된 GAGG(Ce) 단일 체적 검출기를 이용한 콜리메이터 없는 영상 시스템의 딥러닝 기반 실현 가능성 검증: 몬테카를로 시뮬레이션고려대 / 조아진, 이원호*
- 출처
- Appl Radiat Isot .
- 등재일
- 2025 Mar
- 저널이슈번호
- 217:111605.
- 내용
Abstract
A 4π-field of view deep-learning-based collimator-less imaging system was designed with the Monte Carlo method and performance of the system was studied to verify the feasibility of system. A 4 × 4 × 4 voxelated single-volume GAGG(Ce) system and 57Co, 133Ba, 22Na, and 137Cs point sources at 2000 positions were modeled using Monte-Carlo N-particle transport code version 6 (MCNP6). Two types of the localized energy deposition acquired with a voxelated detector system with and without energy bins, were calculated. The F6 tally was used to provide the entire energy deposited in each voxel and the F8 tally to provide energy spectrum data for each voxel. This system utilized these energy deposition patterns depending on the source type and position to reconstruct the source distribution image. A fully convolutional network which is advantageous for the prediction of image outputs was used to estimate source distribution. The models utilizing energy deposition patterns generated on total energy deposition and energy spectrum data were trained with labels from 30° to 10 degree of full-width half-maximum (FWHM). As a result of training with single and multiple source data, types of isotopes and source locations were discriminated up to 5 sources when using energy spectral data, and the average image similarity between ground truth images and predicted ones were 0.9936 for total energy deposition model and 0.9966 for divided energy bin model. These results showed the feasibility of a collimator-less imaging system based on deep learning method that requires no filtration of any type of interaction.Affiliations
Ajin Jo 1, Dongmyoung Hong 2, Wonho Lee 3
1Health Science Research Center, Korea University, Anam-ro 145, Seoul, 02841, Republic of Korea.
2Department of Health and Safety Convergence Science, Korea University, Anam-ro 145, Seoul, 02841, Republic of Korea; Transdisciplinary Major in Learning Health System, Graduate School, Korea University, Seoul, 02841, Republic of Korea.
3Department of Health and Safety Convergence Science, Korea University, Anam-ro 145, Seoul, 02841, Republic of Korea; Transdisciplinary Major in Learning Health System, Graduate School, Korea University, Seoul, 02841, Republic of Korea. Electronic address: wonhol@korea.ac.kr.
- 키워드
- 4π FOV γ-ray imaging system; Collimator-less imaging system; Deep-learning-based imaging system; Fully-convolutional network; Voxelated single-volume GAGG(Ce) scintillator system.
- 덧글달기






편집위원
콜리메이터를 완전히 제거하고도, 딥러닝으로 감마선의 위치 정보를 추정해 이미지를 재구성하는 데 성공했다는 점에서 흥미로움
덧글달기닫기2025-05-09 14:08:22
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