深度学习和人工智能在缩短磁共振成像扫描时间方面的应用:临床实践中的优势与陷阱。

Polish journal of radiology Pub Date : 2024-09-13 eCollection Date: 2024-01-01 DOI:10.5114/pjr/192822
Giovanni Foti, Chiara Longo
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引用次数: 0

摘要

磁共振成像(MRI)是一种功能强大的成像模式,但其缺点之一是获取高分辨率图像的扫描时间相对较长。缩短扫描时间已成为核磁共振成像的一个关键重点领域,其目的是提高患者的舒适度、减少运动伪影并提高核磁共振成像的吞吐量。在过去的 5 年中,基于人工智能(AI)的算法,尤其是深度学习模型,已被开发出来,可从更少的数据点重建高分辨率图像。这些新技术大大提高了核磁共振成像的效率,改善了患者的舒适度,降低了患者的运动伪影。通过缩短扫描时间来提高核磁共振成像的吞吐量,从而增加了可及性,并有可能减少对额外核磁共振成像设备的需求和相关成本。有几个领域可以从缩短的方案中受益,尤其是常规检查。在肿瘤成像领域,更快的核磁共振成像扫描可促进对癌症患者进行更定期的监测。对于神经系统疾病患者,快速脑成像有助于快速评估中风、多发性硬化和癫痫等疾病,从而改善患者的预后。对于慢性炎症性疾病患者,快速成像有助于缩短成像间隔时间,从而更好地检查治疗效果。此外,缩短扫描时间可有效帮助磁共振成像在急诊医学和创伤或急性缺血性中风等急性病中发挥作用。本文旨在描述和讨论在临床实践中引入深度学习重建技术以缩短核磁共振成像扫描时间的优缺点。
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 and AI in reducing magnetic resonance imaging scanning time: advantages and pitfalls in clinical practice.

Magnetic resonance imaging (MRI) is a powerful imaging modality, but one of its drawbacks is its relatively long scanning time to acquire high-resolution images. Reducing the scanning time has become a critical area of focus in MRI, aiming to enhance patient comfort, reduce motion artifacts, and increase MRI throughput. In the past 5 years, artificial intelligence (AI)-based algorithms, particularly deep learning models, have been developed to reconstruct high-resolution images from significantly fewer data points. These new techniques significantly enhance MRI efficiency, improve patient comfort and lower patient motion artifacts. Improving MRI throughput with lower scanning duration increases accessibility, potentially reducing the need for additional MRI machines and associated costs. Several fields can benefit from shortened protocols, especially for routine exams. In oncologic imaging, faster MRI scans can facilitate more regular monitoring of cancer patients. In patients suffering from neurological disorders, rapid brain imaging can aid in the quick assessment of conditions like stroke, multiple sclerosis, and epilepsy, improving patient outcomes. In chronic inflammatory disease, faster imaging may help in reducing the interval between imaging to better check therapy outcomes. Additionally, reducing scanning time could effectively help MRI to play a role in emergency medicine and acute conditions such as trauma or acute ischaemic stroke. The purpose of this paper is to describe and discuss the advantages and disadvantages of introducing deep learning reconstruction techniques to reduce MRI scanning times in clinical practice.

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