动态对比增强(DCE) MRI的深度学习重建与量化相结合。

IF 2.1 4区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Magnetic resonance imaging Pub Date : 2024-12-20 DOI:10.1016/j.mri.2024.110310
Juntong Jing , Anthony Mekhanik , Melanie Schellenberg , Victor Murray , Ouri Cohen , Ricardo Otazo
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引用次数: 0

摘要

动态对比增强(DCE) MRI是评估肿瘤血管性的重要成像工具,可以改善肿瘤范围和异质性的表征,并用于早期评估治疗反应。然而,由于采集和量化性能方面的挑战以及缺乏自动化工具,定量DCE-MRI的临床应用仍然有限。本研究提出了一种端到端深度学习管道,该管道利用一种称为DCE-Movienet的新型深度重建网络和先前开发的称为DCE-Qnet的深度量化网络,用于快速定量的DCE-MRI。DCE-Movienet提供了高时空分辨率4D MRI数据的快速重建,将全采集的重建时间缩短至0.66 s,明显短于压缩感知的10次 min级重建,且不影响图像质量。然后,DCE-Qnet可以对灌注参数图(Ktrans, vp, ve)和其他影响定量的参数(T1, B1和BAT)进行全面定量。采用端到端深度学习管道处理黄金角星堆k空间轨迹获取的数据,并在健康志愿者和宫颈癌患者身上进行压缩感知重构验证。端到端深度学习DCE-MRI技术解决了DCE-MRI在速度和量化鲁棒性方面的关键限制,有望提高DCE-MRI在临床环境中的性能。
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Combination of deep learning reconstruction and quantification for dynamic contrast-enhanced (DCE) MRI
Dynamic contrast-enhanced (DCE) MRI is an important imaging tool for evaluating tumor vascularity that can lead to improved characterization of tumor extent and heterogeneity, and for early assessment of treatment response. However, clinical adoption of quantitative DCE-MRI remains limited due to challenges in acquisition and quantification performance, and lack of automated tools. This study presents an end-to-end deep learning pipeline that exploits a novel deep reconstruction network called DCE-Movienet with a previously developed deep quantification network called DCE-Qnet for fast and quantitative DCE-MRI. DCE-Movienet offers rapid reconstruction of high spatiotemporal resolution 4D MRI data, reducing reconstruction time of the full acquisition to only 0.66 s, which is significantly shorter than compressed sensing's order of 10 min-long reconstructions, without affecting image quality. DCE-Qnet can then perform comprehensive quantification of perfusion parameter maps (Ktrans, vp, ve), and other parameters affecting quantification (T1, B1, and BAT) from a single contrast-enhanced acquisition. The end-to-end deep learning pipeline was implemented to process data acquired with a golden-angle stack-of-stars k-space trajectory and validated on healthy volunteers and a cervical cancer patient against a compressed sensing reconstruction. The end-to-end deep learning DCE-MRI technique addresses key limitations in DCE-MRI in terms of speed and quantification robustness, which is expected to improve the performance of DCE-MRI in a clinical setting.
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来源期刊
Magnetic resonance imaging
Magnetic resonance imaging 医学-核医学
CiteScore
4.70
自引率
4.00%
发文量
194
审稿时长
83 days
期刊介绍: Magnetic Resonance Imaging (MRI) is the first international multidisciplinary journal encompassing physical, life, and clinical science investigations as they relate to the development and use of magnetic resonance imaging. MRI is dedicated to both basic research, technological innovation and applications, providing a single forum for communication among radiologists, physicists, chemists, biochemists, biologists, engineers, internists, pathologists, physiologists, computer scientists, and mathematicians.
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