身体和胸部的深度学习加速MRI。

IF 1 4区 医学 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Naveen Rajamohan, Barun Bagga, Bhavik Bansal, Luke Ginocchio, Amit Gupta, Hersh Chandarana
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引用次数: 0

摘要

深度学习重建(DLR)为磁共振加速提供了一种优雅的解决方案,同时保持了图像质量。这一进步对身体成像至关重要,因为身体成像经常受到运动相关伪影可能性增加的影响。针对腹部、骨盆和胸部,已经开发了多种针对T2、T1和弥散加权成像的供应商特定模型,其中肝脏和前列腺是研究得最充分的器官系统。带有监督深度学习模型的变分网络,包括数据一致性层和正则化器,是最常见的DLR方法。所有关于该主题的单中心研究的共同主题是,尽管显著减少了采集时间,但图像质量指标和病变显著性优于常规序列。DLR还提供了去噪、减少伪影、提高分辨率、提高信噪比(SNR)和噪声对比比(CNR)的潜力,可以根据成像器官系统来平衡加速效益。DLR面临的一些具体挑战包括病变检测略有降低、心脏运动相关信号丢失、区域信噪比变化以及不同器官系统中ADC测量的差异。目前需要对DLR进行大规模多中心前瞻性临床验证的持续研究,以证明其普遍性,并证明具有组织病理学相关性的诊断准确性。建立供应商中立的解决方案、开放的数据共享和多样化的训练数据集对于增强模型的鲁棒性也至关重要。
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-accelerated MRI in Body and Chest.

Deep learning reconstruction (DLR) provides an elegant solution for MR acceleration while preserving image quality. This advancement is crucial for body imaging, which is frequently marred by the increased likelihood of motion-related artifacts. Multiple vendor-specific models focusing on T2, T1, and diffusion-weighted imaging have been developed for the abdomen, pelvis, and chest, with the liver and prostate being the most well-studied organ systems. Variational networks with supervised DL models, including data consistency layers and regularizers, are the most common DLR methods. The common theme for all single-center studies on this subject has been noninferior or superior image quality metrics and lesion conspicuity to conventional sequences despite significant acquisition time reduction. DLR also provides a potential for denoising, artifact reduction, increased resolution, and increased signal-noise ratio (SNR) and contrast-to-noise ratio (CNR) that can be balanced with acceleration benefits depending on the imaged organ system. Some specific challenges faced by DLR include slightly reduced lesion detection, cardiac motion-related signal loss, regional SNR variations, and variabilities in ADC measurements as reported in different organ systems. Continued investigations with large-scale multicenter prospective clinical validation of DLR to document generalizability and demonstrate noninferior diagnostic accuracy with histopathologic correlation are the need of the hour. The creation of vendor-neutral solutions, open data sharing, and diversifying training data sets are also critical to strengthening model robustness.

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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
230
审稿时长
4-8 weeks
期刊介绍: The mission of Journal of Computer Assisted Tomography is to showcase the latest clinical and research developments in CT, MR, and closely related diagnostic techniques. We encourage submission of both original research and review articles that have immediate or promissory clinical applications. Topics of special interest include: 1) functional MR and CT of the brain and body; 2) advanced/innovative MRI techniques (diffusion, perfusion, rapid scanning); and 3) advanced/innovative CT techniques (perfusion, multi-energy, dose-reduction, and processing).
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