CT图像重建与处理中的深度学习:技术、性能评价、辐射剂量和未来展望。

IF 3.4 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Lifeng Yu, Guang-Hong Chen, Joel G Fletcher, Lu Jiang, Marc Kachelrieß, Rongping Zeng, Zhongxing Zhou
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引用次数: 0

摘要

本文概述了基于深度学习的CT图像重建和处理技术(简称“DLR”),包括技术实现、性能评估、辐射剂量降低和未来展望。DLR方法可分为投影空间、投影到图像空间、图像空间和各种混合技术,具有降噪、伪影校正和空间分辨率增强等应用。性能评估包括基于幻影的研究、基于患者图像的研究和虚拟成像试验。这些评估研究表明,DLR可以有效地降低图像噪声,同时像传统的滤波后向投影(FBP)图像一样保留图像纹理,尽管辐射剂量降低的程度因研究和具体诊断任务而异。在低对比度病变检测和表征方面仍然存在挑战,与传统重建方法相比,剂量减少可能仍不到50%。此外,DLR方法有可能产生虚假结构或“幻觉”,特别是在低辐射剂量下,这强调了从技术和临床角度有效监测和缓解战略的必要性。可以探索定量、准确和高效的评估技术,如基于虚拟图像试验的方法,以帮助优化这些算法,以减少辐射剂量和提高诊断性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning in CT image reconstruction and processing: Techniques, performance evaluation, radiation dose, and future perspective.

This article provides an overview of Deep-Learning-based techniques in CT image Reconstruction and processing (referred to as "DLR"), covering technical implementations, performance evaluation, radiation dose reduction, and future perspectives. DLR methods can be categorized into projection-space, projection-to-image-space, image-space, and various hybrid techniques, with applications such as noise reduction, artifact correction, and spatial resolution enhancement. Performance evaluations include phantom-based studies, patient-image-based studies, and virtual imaging trials. These evaluation studies demonstrated that DLR can effectively reduce image noise while preserving an image texture like in traditional filtered-backprojection (FBP) images, although the extent of radiation dose reduction varies widely depending on the study and the specific diagnostic task. Challenges remain in low-contrast lesion detection and characterization, where dose reduction may still be less than 50% compared to traditional reconstruction methods. Additionally, the potential for DLR methods to generate false structures or "hallucinations," especially at low radiation doses, emphasizes the need for effective monitoring and mitigation strategies from both technical and clinical perspectives. Quantitative, accurate, and efficient evaluation techniques, such as virtual image trial-based methods, can be explored to help optimize these algorithms for reducing radiation dose and enhancing diagnostic performance.

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来源期刊
British Journal of Radiology
British Journal of Radiology 医学-核医学
CiteScore
5.30
自引率
3.80%
发文量
330
审稿时长
2-4 weeks
期刊介绍: BJR is the international research journal of the British Institute of Radiology and is the oldest scientific journal in the field of radiology and related sciences. Dating back to 1896, BJR’s history is radiology’s history, and the journal has featured some landmark papers such as the first description of Computed Tomography "Computerized transverse axial tomography" by Godfrey Hounsfield in 1973. A valuable historical resource, the complete BJR archive has been digitized from 1896. Quick Facts: - 2015 Impact Factor – 1.840 - Receipt to first decision – average of 6 weeks - Acceptance to online publication – average of 3 weeks - ISSN: 0007-1285 - eISSN: 1748-880X Open Access option
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