医学
快速自旋回波
涡轮
核磁共振
Echo(通信协议)
人工智能
深度学习
神经影像学
图像(数学)
磁共振成像
核医学
模式识别(心理学)
放射科
计算机科学
物理
计算机网络
精神科
汽车工程
工程类
作者
Zeyu Liu,Xiangzhi Zhou,Shengzhen Tao,Jun Ma,Dominik Nickel,Patrick Liebig,Mahmoud Mostapha,Vishal Patel,Erin Westerhold,Hamed Mojahed,Vivek Gupta,Erik H. Middlebrooks
摘要
ABSTRACT
Prolonged imaging times and motion sensitivity at 7T necessitate advancements in image acceleration techniques. This study evaluates a 7T deep-learning (DL)-based image reconstruction using a deep neural network trained on 7T data, applied to T2-weighted turbo spin echo imaging. Raw k-space data from 30 consecutive clinical 7T brain MRI patients was reconstructed using both DL and standard methods. Qualitative assessments included overall image quality, artifacts, sharpness, structural conspicuity, and noise level, while quantitative metrics evaluated contrast-to-noise ratio (CNR) and image noise. DL-based reconstruction consistently outperformed standard methods across all qualitative metrics (p<0.001), with a mean CNR increase of 50.8% [95% CI: 43.0–58.6%] and a mean noise reduction of 35.1% [95% CI: 32.7–37.6%]. These findings demonstrate that DL-based reconstruction at 7T significantly enhances image quality without introducing adverse effects, offering a promising tool for addressing the challenges of ultra-high-field MRI. ABBREVIATIONS: CNR = contrast-to-noise ratio; DL = deep learning; GRAPPA = GeneRalized Autocalibrating Partially Parallel Acquisitions; IQR = interquartile range; MNI = Montreal Neurological Institute; SD = standard deviation
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