Achille Mileto, Lifeng Yu, Jonathan W Revels, Serageldin Kamel, Mostafa A Shehata, Juan J Ibarra-Rovira, Vincenzo K Wong, Alicia M Roman-Colon, Jeong Min Lee, Khaled M Elsayes, Corey T Jensen
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Abstract
The implementation of deep neural networks has spurred the creation of deep learning reconstruction (DLR) CT algorithms. DLR CT techniques encompass a spectrum of deep learning-based methodologies that operate during the different steps of the image creation, prior to or after the traditional image formation process (eg, filtered backprojection [FBP] or iterative reconstruction [IR]), or alternatively by fully replacing FBP or IR techniques. DLR algorithms effectively facilitate the reduction of image noise associated with low photon counts from reduced radiation dose protocols. DLR methods have emerged as an effective solution to ameliorate limitations observed with prior CT image reconstruction algorithms, including FBP and IR algorithms, which are not able to preserve image texture and diagnostic performance at low radiation dose levels. An additional advantage of DLR algorithms is their high reconstruction speed, hence targeting the ideal triad of features for a CT image reconstruction (ie, the ability to consistently provide diagnostic-quality images and achieve radiation dose imaging levels as low as reasonably possible, with high reconstruction speed). An accumulated body of evidence supports the clinical use of DLR algorithms in abdominal imaging across multiple CT imaging tasks. The authors explore the technical aspects of DLR CT algorithms and examine various approaches to image synthesis in DLR creation. The clinical applications of DLR algorithms are highlighted across various abdominal CT imaging domains, with emphasis on the supporting evidence for diverse clinical tasks. An overview of the current limitations of and outlook for DLR algorithms for CT is provided. © RSNA, 2024.
最先进的腹部成像的深度学习CT重建算法。
深度神经网络的实现刺激了深度学习重建(DLR) CT算法的创建。DLR CT技术包含一系列基于深度学习的方法,这些方法在图像创建的不同步骤中运行,在传统图像形成过程之前或之后(例如,滤波反向投影[FBP]或迭代重建[IR]),或者完全取代FBP或IR技术。DLR算法有效地降低了与低辐射剂量方案的低光子计数相关的图像噪声。DLR方法已成为一种有效的解决方案,以改善现有CT图像重建算法(包括FBP和IR算法)所观察到的局限性,这些算法无法在低辐射剂量水平下保持图像纹理和诊断性能。DLR算法的另一个优点是其高重建速度,因此针对CT图像重建的理想三重特征(即能够始终如一地提供诊断质量的图像,并以高重建速度实现尽可能低的辐射剂量成像水平)。越来越多的证据支持DLR算法在临床应用于腹部多个CT成像任务。作者探讨了DLR CT算法的技术方面,并研究了DLR创建中图像合成的各种方法。重点介绍了DLR算法在不同腹部CT成像领域的临床应用,并强调了不同临床任务的支持证据。概述了目前CT DLR算法的局限性和前景。©RSNA, 2024年。
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