数字减影血管造影
投影(关系代数)
减法
金标准(测试)
人工智能
血管造影
旋转血管造影
放射科
迭代重建
医学
计算机视觉
辐射剂量
计算机科学
三维重建
医学物理学
核医学
数学
算法
算术
作者
Huangxuan Zhao,Zhenghong Zhou,Feihong Wu,Dongqiao Xiang,Hui Zhao,Zhang We,Lin Li,Zhong Li,Jia Huang,Hongyao Hu,Chengbo Liu,Tao Wang,Wenyu Liu,Jinqiang Ma,Fan Yang,Xinggang Wang,Chuansheng Zheng
标识
DOI:10.1016/j.xcrm.2022.100775
摘要
3D digital subtraction angiography (DSA) reconstruction from rotational 2D projection X-ray angiography is an important basis for diagnosis and treatment of intracranial aneurysms (IAs). The gold standard requires approximately 133 different projection views for 3D reconstruction. A method to significantly reduce the radiation dosage while ensuring the reconstruction quality is yet to be developed. We propose a self-supervised learning method to realize 3D-DSA reconstruction using ultra-sparse 2D projections. 202 cases (100 from one hospital for training and testing, 102 from two other hospitals for external validation) suspected to be suffering from IAs were conducted to analyze the reconstructed images. Two radiologists scored the reconstructed images from internal and external datasets using eight projections and identified all 82 lesions with high diagnostic confidence. The radiation dosages are approximately 1/16.7 compared with the gold standard method. Our proposed method can help develop a revolutionary 3D-DSA reconstruction method for use in clinic.
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