Artificial intelligence iterative reconstruction of CT images:Phantom experiment
10.13929/j.issn.1003-3289.2025.04.011
- VernacularTitle:深度学习全模型迭代算法用于重建CT图像:体模实验
- Author:
Wenjing CAO
1
;
Haohua SUN
1
;
Liyi ZHAO
1
;
Xiang LI
1
;
Guotao QUAN
1
Author Information
1. 上海联影医疗科技股份有限公司,上海 201800
- Publication Type:Journal Article
- Keywords:
tomography,X-ray computed;
image processing,computer-assisted;
deep learning;
phantoms,imaging
- From:
Chinese Journal of Medical Imaging Technology
2025;41(4):557-562
- CountryChina
- Language:Chinese
-
Abstract:
Objective To observe the value of artificial intelligence iterative reconstruction(AIIR)for reconstruction CT images of phantoms.Methods AIIR was developed through combining model-based iterative reconstruction(MBIR)with deep learning(DL)techniques.CT scanning of CCT MITA IQ phantom,CT ACR 464 phantom,Catphan 700 phantom,disc stack phantom and CT PBU-60 whole body phantom were performed,and the images were reconstructed with conventional algorithms like filtered back projection(FBP)and KARL 3D iterative reconstruction,as well as AIIR,respectively.Then the noise,X-ray dosage,as well as low contrast resolution,high contrast spatial resolution,cone-beam artifacts and streaking artifacts of various reconstructed images were compared.Results Compared to CT images reconstructed with conventional algorithms,those reconstructed with AIIR showed 61.74%—99.76% reduction of image noise and 60.00%—90.00% reduction of X-ray dosage,while increased image low contrast resolution to 1.99-4.86 times and high contrast spatial resolution to 1.55-2.57 times.Additionally,AIIR significantly reduced cone-beam artifacts and streaking artifacts.Conclusion AIIR showed obvious advantages for reconstruction CT images of phantoms compared with conventional algorithms.