From the Department of Diagnostic Radiology, Graduate School of Medical Sciences (Y.N., S.O., T.N., M.K., H.U., T.H.), and Department of Medical Radiation Sciences, Faculty of Life Sciences (Y.F.), Kumamoto University, 1-1-1 Honjo, Chuo-ku, Kumamoto 860-8556, Japan; and Department of Central Radiology, Kumamoto University Hospital, Chuo-ku, Kumamoto, Japan (D.S., M.G., T.E.).
Radiographics. 2021 Nov-Dec;41(7):1936-1953. doi: 10.1148/rg.2021210105. Epub 2021 Oct 1.
Optimizing the CT acquisition parameters to obtain diagnostic image quality at the lowest possible radiation dose is crucial in the radiosensitive pediatric population. The image quality of low-dose CT can be severely degraded by increased image noise with filtered back projection (FBP) reconstruction. Iterative reconstruction (IR) techniques partially resolve the trade-off relationship between noise and radiation dose but still suffer from degraded noise texture and low-contrast detectability at considerably low-dose settings. Furthermore, sophisticated model-based IR usually requires a long reconstruction time, which restricts its clinical usability. With recent advances in artificial intelligence technology, deep learning-based reconstruction (DLR) has been introduced to overcome the limitations of the FBP and IR approaches and is currently available clinically. DLR incorporates convolutional neural networks-which comprise multiple layers of mathematical equations-into the image reconstruction process to reduce image noise, improve spatial resolution, and preserve preferable noise texture in the CT images. For DLR development, numerous network parameters are iteratively optimized through an extensive learning process to discriminate true attenuation from noise by using low-dose training and high-dose teaching image data. After rigorous validations of network generalizability, the DLR engine can be used to generate high-quality images from low-dose projection data in a short reconstruction time in a clinical environment. Application of the DLR technique allows substantial dose reduction in pediatric CT performed for various clinical indications while preserving the diagnostic image quality. The authors present an overview of the basic concept, technical principles, and image characteristics of DLR and its clinical feasibility for low-dose pediatric CT. RSNA, 2021.
在辐射敏感的儿科人群中,以尽可能低的辐射剂量获得诊断图像质量的 CT 采集参数至关重要。滤波反投影(filtered back projection,FBP)重建会使低剂量 CT 的图像质量严重恶化,图像噪声增加。迭代重建(iterative reconstruction,IR)技术部分解决了噪声与辐射剂量之间的权衡关系,但在相当低的剂量设置下,仍然存在噪声纹理恶化和低对比度检测能力降低的问题。此外,复杂的基于模型的 IR 通常需要较长的重建时间,这限制了其临床可用性。随着人工智能技术的最新进展,基于深度学习的重建(deep learning-based reconstruction,DLR)已被引入,以克服 FBP 和 IR 方法的局限性,并已在临床上应用。DLR 将卷积神经网络(包含多个数学方程层)纳入图像重建过程,以降低图像噪声、提高空间分辨率,并在 CT 图像中保留更好的噪声纹理。为了进行 DLR 开发,通过一个广泛的学习过程对大量网络参数进行迭代优化,使用低剂量训练和高剂量教学图像数据来区分真实衰减和噪声。在对网络通用性进行严格验证后,DLR 引擎可以在短的重建时间内,从低剂量投影数据中生成高质量的图像,适用于临床环境。在为各种临床适应证进行儿科 CT 检查时,应用 DLR 技术可显著降低剂量,同时保持诊断图像质量。作者介绍了 DLR 的基本概念、技术原理、图像特征及其在低剂量儿科 CT 中的临床可行性。RSNA,2021 年。