结直肠癌
癌症
医学
人工智能
医学物理学
放射科
计算机科学
内科学
作者
Lan Zhu,Bowen Shi,Bei Ding,Yihan Xia,Kangning Wang,Weiming Feng,Jiankun Dai,Tianyong Xu,Baisong Wang,Fei Yuan,Hailin Shen,Haipeng Dong,Huan Zhang
标识
DOI:10.1007/s10278-024-01345-x
摘要
Deep learning reconstruction (DLR) has exhibited potential in saving scan time. There is limited research on the evaluation of accelerated acquisition with DLR in staging rectal cancers. Our first objective was to explore the best DLR level in saving time through phantom experiments. Resolution and number of excitations (NEX) adjusted for different scan time, image quality of conventionally reconstructed T2W images were measured and compared with images reconstructed with different DLR level. The second objective was to explore the feasibility of accelerated T2W imaging with DLR in image quality and diagnostic performance for rectal cancer patients. 52 patients were prospectively enrolled to undergo accelerated acquisition reconstructed with highly-denoised DLR (DLR_H
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