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Dual-dictionary learning-based iterative image reconstruction for spectral computed tomography application

机译:基于双字典学习的迭代图像重建在光谱计算机断层摄影中的应用

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In this study, we investigated the effectiveness of a novel iterative reconstruction (IR) method coupled with dual-dictionary learning (DDL) for image reconstruction in a dedicated breast computed tomography (CT) system based on a cadmium-zinc-telluride (CZT) photon-counting detector and compared it to the filtered-back-projection (FBP) method with the ultimate goal of reducing the number of projections necessary for reconstruction without sacrificing the image quality. Postmortem breast samples were scanned in a fan-beam CT system and were reconstructed from 100 to 600 projections with both IR and FBP methods. The contrast-to-noise ratio (CNR) between the glandular and adipose tissues of the postmortem breast samples was calculated to compare the quality of images reconstructed from IR and FBP. The spatial resolution of the two reconstruction techniques was evaluated using aluminum (Al) wires with diameters of 643, 813, 1020, 1290 and 1630m in a plastic epoxy resin phantom with a diameter of 13cm. Both the spatial resolution and the CNR were improved with IR compared to FBP for the images reconstructed from the same number of projections. In comparison with FBP reconstruction, the CNR was improved from 3.4 to 7.5 by using the IR method with six-fold fewer projections while maintaining the same spatial resolution. The study demonstrated that the IR method coupled with DDL could significantly reduce the required number of projections for a CT reconstruction compared to the FBP method while achieving a much better CNR and maintaining the same spatial resolution. From this, the radiation dose and scanning time can potentially be reduced by a factor of approximately 6 by using this IR method for image reconstruction in a CZT-based breast CT system.
机译:在这项研究中,我们研究了基于镉锌碲化物(CZT)的新型迭代重建(IR)方法与双字典学习(DDL)结合用于专用胸部计算机断层扫描(CT)系统中的图像重建的有效性光子计数检测器,并将其与滤波后投影(FBP)方法进行比较,其最终目的是在不牺牲图像质量的情况下减少重建所需的投影数量。在扇形束CT系统中扫描死后乳房样本,并使用IR和FBP方法从100到600个投影重建。计算死后乳房样本的腺组织和脂肪组织之间的对比噪声比(CNR),以比较从IR和FBP重建的图像的质量。在直径为13cm的塑料环氧树脂模型中,使用直径为643、813、1020、1290和1630m的铝(Al)线评估了两种重建技术的空间分辨率。与FBP相比,对于从相同数量的投影重建的图像,IR改善了空间分辨率和CNR。与FBP重建相比,使用IR方法将CNR从3.4改进为7.5,投影减少了六倍,同时保持了相同的空间分辨率。研究表明,与FBP方法相比,IR方法与DDL结合可以显着减少CT重建所需的投影数量,同时获得更好的CNR并保持相同的空间分辨率。由此,通过在基于CZT的乳腺CT系统中使用此IR方法进行图像重建,可以将辐射剂量和扫描时间减少大约6倍。

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