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使用快速千伏切换双能CT扫描仪比较两种深度学习光谱重建水平用于腹部评估。

Comparing two deep learning spectral reconstruction levels for abdominal evaluation using a rapid-kVp-switching dual-energy CT scanner.

作者信息

Sagdic Hakki Serdar, Hosseini-Siyanaki Mohammadreza, Raviprasad Abheek, Munjerin Sefat, Fabri Daniella, Grajo Joseph, Tonso Victor Martins, Magnelli Laura, Hochhegger Daniela, Anthony Evelyn, Hochhegger Bruno, Forghani Reza

机构信息

Radiomics and Augmented Intelligence Laboratory (RAIL), Department of Radiology and the Norman Fixel Institute for Neurological Diseases, University of Florida College of Medicine, Gainesville, FL, USA.

Department of Radiology, University of Florida College of Medicine, Gainesville, FL, USA.

出版信息

Abdom Radiol (NY). 2025 Mar 17. doi: 10.1007/s00261-025-04868-1.

Abstract

PURPOSE

Deep Learning Spectral Reconstruction (DLSR) potentially improves dual-energy CT (DECT) image quality, but there is a paucity of research involving human abdominal DECT scans. The purpose of this study was to comprehensively evaluate image quality by quantitatively and qualitatively comparing strong and standard levels of a DLSR algorithm. Optimal virtual monochromatic image (VMI) energy levels were also evaluated.

METHODS

DECT scans of the abdomen/pelvis from 51 patients were retrospectively evaluated. VMIs were reconstructed at energy levels ranging from 35 to 200 keV using both standard and strong DLSR levels. For quantitative analysis, various abdominal structures were assessed using regions of interest, and mean signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR) values were calculated. This was supplemented with a qualitative evaluation of VMIs reconstructed at 35, 45, 55, and 65 keV.

RESULTS

The strong-level DLSR demonstrated significantly better SNR and CNR values (p < 0.0001) compared to standard-level DLSR across all structures. The optimal SNR was observed at 70 keV (p < 0.0001), while the optimal CNR was found at 65 keV (p < 0.0001). The average qualitative scores between standard and strong DLSR were significantly different at 45, 55, and 65 keV (p < 0.0001). There was a moderate level of agreement between observers (ICC = 0.427, p < 0.0001).

CONCLUSION

A DLSR set to a strong level significantly improves image quality compared to standard-level DLSR, potentially enhancing the diagnostic evaluation of abdominal DECT scans. In addition to achieving a very high SNR, 65 keV VMIs had the highest CNR, which differs from what is typically observed with traditional DECT using non-deep learning reconstruction approaches.

摘要

目的

深度学习光谱重建(DLSR)可能会改善双能CT(DECT)图像质量,但涉及人体腹部DECT扫描的研究较少。本研究的目的是通过定量和定性比较DLSR算法的强级别和标准级别来全面评估图像质量。还评估了最佳虚拟单色图像(VMI)能量水平。

方法

回顾性评估了51例患者的腹部/骨盆DECT扫描。使用标准和强DLSR级别在35至200 keV的能量水平上重建VMI。对于定量分析,使用感兴趣区域评估各种腹部结构,并计算平均信噪比(SNR)和对比噪声比(CNR)值。这通过对在35、45、55和65 keV重建的VMI进行定性评估来补充。

结果

与所有结构的标准级别DLSR相比,强级别DLSR显示出明显更好的SNR和CNR值(p < 0.0001)。在70 keV时观察到最佳SNR(p < 0.0001),而在65 keV时发现最佳CNR(p < 0.0001)。标准和强DLSR之间的平均定性评分在45、55和65 keV时存在显著差异(p < 0.0001)。观察者之间存在中等程度的一致性(ICC = 0.427,p < 0.0001)。

结论

与标准级别DLSR相比,设置为强级别的DLSR可显著提高图像质量,可能增强腹部DECT扫描的诊断评估。除了实现非常高的SNR外,65 keV的VMI具有最高的CNR,这与使用非深度学习重建方法的传统DECT通常观察到的情况不同。

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