迭代重建
医学
放射科
肺静脉
血管造影
投影(关系代数)
最大强度投影
肺动脉
计算机断层血管造影
核医学
人工智能
计算机科学
算法
外科
内科学
烧蚀
作者
Chiaki Suzuki,Jin Nakano,Kosuke Matsubara
出处
期刊:Japanese Journal of Radiological Technology
日期:2021-01-01
卷期号:77 (11): 1309-1316
标识
DOI:10.6009/jjrt.2021_jsrt_77.11.1309
摘要
This study aimed to determine the optimal image reconstruction method for preoperative computed tomography (CT) angiography for pulmonary segmentectomy. This study enrolled 20 patients who underwent contrast-enhanced CT examination for pulmonary segmentectomy. The optimal image reconstruction algorithm among four different reconstruction algorithms (filtered back projection, hybrid iterative reconstruction, model- based iterative reconstruction, and deep learning reconstruction [DLR]) was investigated by assessing the CT numbers, vessel extraction ratios, and misclassification ratios. The vessel extraction ratios for main and subsegment branches reconstructed using DLR were significantly higher than those using other reconstruction algorithms (96.7% and 90.8% for pulmonary artery and vein, respectively). The misclassification ratios at the right upper lobe pulmonary vessels (V1 and V2) were especially high because they were close to the superior vena cava, and their CT numbers were similar in all four reconstructions. In conclusion, the DLR allows a high extraction rate of pulmonary blood vessels and a low misclassification rate of automatic extraction.
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