医学
图像质量
迭代重建
核医学
放射科
人工智能
图像(数学)
计算机科学
作者
Yongjun Jia,Bingying Zhai,Haifeng Duan,Chuangbo Yang,Jianying Li,Nan Yu
标识
DOI:10.1097/rct.0000000000001765
摘要
Objective: To evaluate the effectiveness of the new-generation snapshot freeze (SSF2) algorithm combined with Deep Learning Image Reconstruction (DLIR) in improving the image quality of coronary artery calcifications (CAC) and their quantification. Methods: Coronary artery calcification score (CACS) scans were performed on 69 patients using ECG-triggered noncontrast CT. Four groups of images were reconstructed with SSF2 or without (STD), combined with ASIR-V (Adaptive Statistical Iterative Reconstruction-V) and DLIR: STD ASIR-V , STD DLIR , SSF2 ASIR-V , and SSF2 DLIR . CAC image quality was compared, and inter-observer consistency was evaluated among reconstruction groups. CACS, including the Agatston score (AS), volume score (VS), mass score (MS), and the risk stratification based on AS among groups, were compared. Results: The consistencies of the inter-observer image quality scores were excellent or good (kappa=0.705 to 0.837). SSF2 ASIR-V and SSF2 DLIR had significantly higher scores than STD ASIR-V and STD DLIR in reducing motion artifacts of calcified plaques ( P <0.05), while no significant differences between SSF2 ASIR-V and SSF2 DLIR , or between STD ASIR-V and STD DLIR ( P >0.05). There was no significant difference in CT values of vessels, subcutaneous fat, and muscle in CAC images, but the noises of SSF2 ASIR-V and STD ASIR-V images were significantly higher than those of SSF2 DLIR and STD DLIR images ( P >0.05). STD ASIR-V had the highest CACS values, while SSF2 DLIR had the lowest. Using AS in STD ASIR-V as the reference, 9 patients (13.04%) in SSF2 DLIR and 7 patients (10.14%) in SSF2 ASIR-V had a risk stratification reduced, while no change in STD DLIR . Conclusions: SSF2 and DLIR significantly reduce motion artifacts and image noise in non-contrast CACS CT, respectively. SSF2 reduces CACS values and risk stratification.
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