Super-resolution deep-learning reconstruction for cardiac CT: impact of radiation dose and focal spot size on task-based image quality.

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-09-01 Epub Date: 2024-06-17 DOI:10.1007/s13246-024-01423-y
Takafumi Emoto, Yasunori Nagayama, Sentaro Takada, Daisuke Sakabe, Shinsuke Shigematsu, Makoto Goto, Kengo Nakato, Ryuya Yoshida, Ryota Harai, Masafumi Kidoh, Seitaro Oda, Takeshi Nakaura, Toshinori Hirai
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Abstract

This study aimed to evaluate the impact of radiation dose and focal spot size on the image quality of super-resolution deep-learning reconstruction (SR-DLR) in comparison with iterative reconstruction (IR) and normal-resolution DLR (NR-DLR) algorithms for cardiac CT. Catphan-700 phantom was scanned on a 320-row scanner at six radiation doses (small and large focal spots at 1.4-4.3 and 5.8-8.8 mGy, respectively). Images were reconstructed using hybrid-IR, model-based-IR, NR-DLR, and SR-DLR algorithms. Noise properties were evaluated through plotting noise power spectrum (NPS). Spatial resolution was quantified with task-based transfer function (TTF); Polystyrene, Delrin, and Bone-50% inserts were used for low-, intermediate, and high-contrast spatial resolution. The detectability index (d') was calculated. Image noise, noise texture, edge sharpness of low- and intermediate-contrast objects, delineation of fine high-contrast objects, and overall quality of four reconstructions were visually ranked. Results indicated that among four reconstructions, SR-DLR yielded the lowest noise magnitude and NPS peak, as well as the highest average NPS frequency, TTF50%, d' values, and visual rank at each radiation dose. For all reconstructions, the intermediate- to high-contrast spatial resolution was maximized at 4.3 mGy, while the lowest noise magnitude and highest d' were attained at 8.8 mGy. SR-DLR at 4.3 mGy exhibited superior noise performance, intermediate- to high-contrast spatial resolution, d' values, and visual rank compared to the other reconstructions at 8.8 mGy. Therefore, SR-DLR may yield superior diagnostic image quality and facilitate radiation dose reduction compared to the other reconstructions, particularly when combined with small focal spot scanning.

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心脏 CT 的超分辨率深度学习重建:辐射剂量和焦斑大小对基于任务的图像质量的影响。
本研究旨在评估辐射剂量和焦斑大小对超分辨率深度学习重建(SR-DLR)图像质量的影响,并与迭代重建(IR)和正常分辨率 DLR(NR-DLR)算法进行比较。在 320 排扫描仪上以六种辐射剂量(小焦点和大焦点分别为 1.4-4.3 和 5.8-8.8 mGy)对 Catphan-700 模型进行扫描。使用混合红外、基于模型的红外、NR-DLR 和 SR-DLR 算法重建图像。通过绘制噪声功率谱(NPS)评估噪声特性。空间分辨率通过基于任务的传递函数(TTF)进行量化;低、中、高对比度空间分辨率分别使用了聚苯乙烯、Delrin 和 Bone-50% 嵌体。计算了可探测性指数(d')。对图像噪声、噪声纹理、低对比度和中等对比度物体的边缘锐利度、精细的高对比度物体的划分以及四种重建的整体质量进行了目测排名。结果表明,在四种重建中,SR-DLR 的噪声幅度和 NPS 峰值最低,平均 NPS 频率、TTF50%、d'值和各辐射剂量下的视觉等级也最高。在所有重建中,4.3 mGy 时的中高对比度空间分辨率最高,而 8.8 mGy 时的噪声幅度最低,d'值最高。与 8.8 mGy 时的其他重建相比,4.3 mGy 时的 SR-DLR 在噪声性能、中高对比度空间分辨率、d'值和视觉等级方面都更胜一筹。因此,与其他重建相比,SR-DLR 可能会产生更好的诊断图像质量,并有助于减少辐射剂量,尤其是在与小焦点扫描相结合时。
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CiteScore
8.40
自引率
4.50%
发文量
110
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