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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Accelerating MRI fat quantification using a signal model-based dictionary to assess gastric fat volume and distribution of fat fraction
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Accelerating MRI fat quantification using a signal model-based dictionary to assess gastric fat volume and distribution of fat fraction

机译:使用基于信号模型的字典加速MRI脂肪量化以评估胃脂体积和脂肪分数的分布

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To quantify intragastric fat volume and distribution with accelerated magnetic resonance (MR) imaging using signal model-based dictionaries (DICT) in comparison to conventional parallel imaging (CG-SENSE). This study was approved by the local ethics committee and written informed consent was obtained. Seven healthy subjects were imaged after intake of a lipid emulsion and data at three different time points during the gastric emptying process was acquired in order to cover a range of fat fractions. Fully sampled and prospectively undersampled image data at a reduction factor of 4 were acquired using a multi gradient echo sequence at 1.5T. Retrospectively and prospectively undersampled data were reconstructed with DICT and CG-SENSE. Image quality of the retrospectively undersampled data was assessed relative to the fully sampled reference using the root mean square error (RMSE). In order to assess the agreement of fat volumes and intragastric fat distribution, Bland-Altman analysis and linear regression were performed on the data. The RMSE in intragastric content (Delta RMSE = 0.10 +/- 0.01, P < 0.001) decreased significantly with DICT relative to CG-SENSE. CG-SENSE overestimated fat volumes (bias 2.1 +/- 1.3 mL; confidence limits 5.4 and -1.1 mL) in comparison to the prospective DICT reconstruction (bias -0.1 +/- 0.7 confidence limits 1.8 and -2.0 mL). There was a good agreement in fat distribution between the images reconstructed by retrospective DICT and the reference images (regression slope: 1.01, R-2 = 0.961). Accelerating gastric MRI by integrating a dictionary-based signal model allows for improved image quality and increases accuracy of fat quantification during breathholds. (C) 2016 Elsevier Inc. All rights reserved.
机译:与传统的并行成像(CG型)相比,使用基于信号模型的词典(DICT)来量化肠内脂肪量和分布与加速磁共振(MR)成像(DICT)相比。本研究由当地伦理委员会批准并获得书面知情同意书。在胃排空过程中摄入脂质乳液和三种不同时间点的脂质乳液和数据后成像七个健康受试者,以覆盖一系列脂肪级分。使用多梯度回波序列在1.5T时获得完全采样和潜在的未采样的图像数据。用DICT和CG型重建回顾性和前瞻性的数据。通过使用根均方误差(RMSE)相对于完全采样的参考,评估回顾性下采样数据的图像质量。为了评估脂肪量和胃内脂肪分布的协议,对数据进行了平淡的分析和线性回归。胃内含量的RMSE(Delta RMSE = 0.10 +/- 0.01,P <0.001)随着CG型的话语显着下降。与前瞻性区域重建(偏置-0.1 +/- 0.7置信限制1.8和-2.0mL)相比,CG义偏差脂肪量(偏置2.1 +/- 1.3 ml;置信限制5.4和-1.1ml)。通过回顾性DICT和参考图像重建的图像与参考图像(回归斜率:1.01,R-2 = 0.961)之间存在良好的脂肪分布。通过整合基于字典的信号模型来加速胃部MRI允许改善的图像质量并提高呼吸期间脂肪量化的准确性。 (c)2016年Elsevier Inc.保留所有权利。

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