应用人工智能减轻患者运动或其他复杂因素对图像质量的影响。

Q2 Medicine
Xuan V Nguyen, Murat Alp Oztek, Devi D Nelakurti, Christina L Brunnquell, Mahmud Mossa-Basha, David R Haynor, Luciano M Prevedello
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引用次数: 14

摘要

人工智能,特别是深度学习,为提高磁共振成像(MRI)图像采集的质量或速度提供了几种可能性。在本文中,我们简要回顾了基本的机器学习概念,并讨论了用于图像到图像翻译的常用神经网络架构。本文讨论了最近在文献中描述机器学习技术在临床磁共振图像采集或后处理中的应用的例子。机器学习可以通过提高空间分辨率、降低图像噪声和消除不希望的运动或其他伪影来提高图像质量。由于患者有时无法忍受冗长的获取时间或钆剂,机器学习可以通过促进更快的获取或减少外源性造影剂剂量来帮助MRI工作流程和患者舒适度。尽管人工智能方法通常存在局限性,例如在通用性或可解释性方面存在问题,但这些技术在临床MRI实践中具有提高诊断效用、吞吐量和患者体验的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Artificial Intelligence to Mitigate Effects of Patient Motion or Other Complicating Factors on Image Quality.
Artificial intelligence, particularly deep learning, offers several possibilities to improve the quality or speed of image acquisition in magnetic resonance imaging (MRI). In this article, we briefly review basic machine learning concepts and discuss commonly used neural network architectures for image-to-image translation. Recent examples in the literature describing application of machine learning techniques to clinical MR image acquisition or postprocessing are discussed. Machine learning can contribute to better image quality by improving spatial resolution, reducing image noise, and removing undesired motion or other artifacts. As patients occasionally are unable to tolerate lengthy acquisition times or gadolinium agents, machine learning can potentially assist MRI workflow and patient comfort by facilitating faster acquisitions or reducing exogenous contrast dosage. Although artificial intelligence approaches often have limitations, such as problems with generalizability or explainability, there is potential for these techniques to improve diagnostic utility, throughput, and patient experience in clinical MRI practice.
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来源期刊
Topics in Magnetic Resonance Imaging
Topics in Magnetic Resonance Imaging Medicine-Medicine (all)
CiteScore
5.50
自引率
0.00%
发文量
24
期刊介绍: Topics in Magnetic Resonance Imaging is a leading information resource for professionals in the MRI community. This publication supplies authoritative, up-to-the-minute coverage of technical advances in this evolving field as well as practical, hands-on guidance from leading experts. Six times a year, TMRI focuses on a single timely topic of interest to radiologists. These topical issues present a variety of perspectives from top radiological authorities to provide an in-depth understanding of how MRI is being used in each area.
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