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Free-Breathing Three-Dimensional T1 Mapping of the Heart Using Subspace-Based Data Acquisition and Image Reconstruction

机译:使用基于子空间的数据采集和图像重建对心脏进行自由呼吸的三维T 1 映射

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Mapping the longitudinal relaxation time constant (T1) of the myocardium using Magnetic Resonance Imaging (MRI) is an emerging technique for quantitative assessment of the morphology and viability of the myocardium. However, three-dimensional (3D) T1 mapping of the heart is challenging due to the high dimensionality of the signal and the presence of cardiac and respiratory motions. We propose a subspace-based method for free-breathing 3D T1 mapping of the heart without respiratory gating. The image function is represented as a high-order partially separable (PS) function to explore the inherent spatiotemporal correlations of the underlying signal. A special data acquisition scheme enabled by the high-order PS model is used for sparse sampling of the (k,t)-space, where complementary sparse datasets are acquired, each covering only a small portion of the (k,t)-space to characterize a single subspace (spatial or temporal). High-resolution dynamic MR images are reconstructed from the highly undersampled (k,t)-space using low-rank tensor and sparsity constraints. We demonstrate the feasibility of our proposed method using in vivo data obtained from healthy subjects on a 3T MR scanner. The proposed method can enable new clinical applications of T1 mapping in cardiac MR.
机译:使用磁共振成像(MRI)绘制心肌的纵向松弛时间常数(T1)是一种定量评估心肌形态和生存能力的新兴技术。但是,由于信号的高维度以及心脏和呼吸运动的存在,心脏的三维(3D)T1映射具有挑战性。我们提出了一种基于子空间的方法,可在不进行呼吸门控的情况下自由呼吸心脏的3D T1映射。图像函数表示为高阶部分可分离(PS)函数,用于探索基础信号的固有时空相关性。由高阶PS模型启用的特殊数据采集方案用于(k,t)空间的稀疏采样,在其中获取互补的稀疏数据集,每个数据集仅覆盖(k,t)空间的一小部分表征单个子空间(空间或时间)。使用低秩张量和稀疏约束,从高度欠采样的(k,t)空间重构高分辨率动态MR图像。我们使用从3T MR扫描仪上的健康受试者获得的体内数据证明了我们提出的方法的可行性。所提出的方法可以在心脏MR中实现T1定位的新临床应用。

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