MRI组织加热预测:一项可行性研究

S. Winkler, I. Saniour, Akshay Chaudhari, F. Robb, J. Vaughan
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引用次数: 2

摘要

迄今为止,超高场(UHF)磁共振成像(MRI)的一个未解决和高度限制的安全问题是射频(RF)功率在体内的沉积,通过特定吸收率(SAR)来量化,导致危险的组织加热/损伤,以局部SAR热点的形式,目前无法测量/监测,从而严重限制了该技术在临床实践和监管批准中的适用性。本研究的目的是证明一种基于人工智能(AI)的检查集成实时MRI安全预测软件(MRSaiFE)的概念,该软件通过精确的局部sar监测,在低于w /kg的水平下,促进3T和7T图像的安全生成。我们用一个小的图像数据库训练软件作为可行性研究,并成功地证明了两种场强的概念。对于场强(3T和7T), SAR模式预测的残差均方根误差(RSME) < 11{\%}$,结构相似性(SSIM)水平> 84{\%}$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRSaiFE: Tissue Heating Prediction for MRI: a Feasibility Study
A to-date unsolved and highly limiting safety concern for Ultra High-Field (UHF) magnetic resonance imaging (MRI) is the deposition of radiofrequency (RF) power in the body, quantified by the specific absorption rate (SAR), leading to dangerous tissue heating/damage in the form of local SAR hotspots that cannot currently be measured/monitored, thereby severely limiting the applicability of the technology for clinical practice and in regulatory approval. The goal of this study has been to show proof of concept of an artificial intelligence (AI) based exam-integrated real-time MRI safety prediction software (MRSaiFE) facilitating the safe generation of 3T and 7T images by means of accurate local SAR-monitoring at sub-W/kg levels. We trained the software with a small database of image as a feasibility study and achieved successful proof of concept for both field strengths. SAR patterns were predicted with a residual root mean squared error (RSME) of < 11{\%}$ along with a structural similarity (SSIM) level of > 84{\%}$ for both field strengths (3T and 7T).
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