Institute of Myology, Neuromuscular Investigation Center, NMR Laboratory, Paris, France.
Magn Reson Med. 2024 Mar;91(3):1179-1189. doi: 10.1002/mrm.29901. Epub 2023 Oct 23.
To propose an efficient bi-component MR fingerprinting (MRF) fitting method using a Variable Projection (VARPRO) strategy, applied to the quantification of fat fraction (FF) and water T1 ( ) in skeletal muscle tissues.
The MRF signals were analyzed in a two-step process by comparing them to the elements of separate water and fat dictionaries (bi-component dictionary matching). First, each pair of water and fat dictionary elements was fitted to the acquired signal to determine an optimal FF that was used to merge the fingerprints in a combined water/fat dictionary. Second, standard dictionary matching was applied to the combined dictionary for determining the remaining parameters. A clustering method was implemented to further accelerate the fitting. Accuracy, precision, and matching time of this approach were evaluated on both numerical and in vivo datasets, and compared to the reference dictionary-matching approach that includes FF as a dictionary parameter.
In numerical phantoms, all MRF parameters showed high correlation with ground truth for the reference and the bi-component method (R > 0.98). In vivo, the estimated parameters from the proposed method were highly correlated with those from the reference approach (R > 0.997). The bi-component method achieved an acceleration factor of up to 360 compared to the reference dictionary matching.
The proposed bi-component fitting approach enables a significant acceleration of the reconstruction of MRF parameter maps for fat-water imaging, while maintaining comparable precision and accuracy to the reference on FF and estimation.
提出一种基于变量投影(VARPRO)策略的高效双组份磁共振指纹成像(MRF)拟合方法,应用于骨骼肌组织的脂肪分数(FF)和水 T1( )定量。
通过将 MRF 信号与单独的水和脂肪字典元素(双组份字典匹配)进行比较,分两步对 MRF 信号进行分析。首先,将水和脂肪字典中的每一对字典元素拟合到采集到的信号,以确定最佳 FF,用于合并水/脂肪字典中的指纹。其次,应用标准字典匹配来确定剩余参数。实施聚类方法进一步加速拟合过程。该方法的准确性、精度和匹配时间在数值和体内数据集上进行了评估,并与包括 FF 作为字典参数的参考字典匹配方法进行了比较。
在数值体模中,参考和双组份方法的所有 MRF 参数与真实值均具有高度相关性(R > 0.98)。在体内,该方法估计的参数与参考方法高度相关(R > 0.997)。与参考字典匹配相比,双组份方法的加速因子高达 360。
所提出的双组份拟合方法可显著加速 MRF 参数图的重建,用于脂肪水成像,同时在 FF 和 估计方面保持与参考方法相当的精度和准确性。