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Multi-voxel Algorithm for Quantitative Bi-exponential MRI T_1 Estimation

机译:定量双指数MRI T_1估计的多体素算法

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Quantification of the spin-lattice relaxation time, T_1, of tissues is important for characterization of tissues in clinical magnetic resonance imaging (MRI). In T_1 mapping, T_1 values are estimated from a set of T_1-weighted MRI images. Due to the limited spatial resolution of the T_1 -weighted images, one voxel might consist of two tissues, causing partial volume effects (PVE). In conventional mono-exponential T_1 estimation, these PVE result in systematic errors in the T_1 map. To account for PVE, single-voxel bi-exponential estimators have been suggested. Unfortunately, in general, they suffer from low accuracy and precision. In this work, we propose a joint multi-voxel bi-exponential T estimator (JMBE) and compare its performance to a single-voxel bi-exponential T_1 estimator (SBE). Results show that, in contrast to the SBE, and for clinically achievable single-voxel SNRs, the JMBE is accurate and efficient if four or more neighboring voxels are used in the joint estimation framework. This illustrates that, for clinically realistic SNRs, accurate results for quantitative bi-exponential T_1 estimation are only achievable if information of neighboring voxels is incorporated.
机译:组织的自旋晶格弛豫时间T_1的量化对于临床磁共振成像(MRI)中组织的表征很重要。在T_1映射中,从一组T_1加权的MRI图像中估计出T_1值。由于T_1加权图像的空间分辨率有限,一个体素可能由两个组织组成,从而导致部分体积效应(PVE)。在常规的单指数T_1估计中,这些PVE导致T_1映射中的系统误差。为了说明PVE,建议使用单体素双指数估计量。不幸的是,它们通常都具有较低的准确性和精度。在这项工作中,我们提出了一个联合多体素双指数T \估计器(JMBE),并将其性能与单体素双指数T_1估计器(SBE)进行比较。结果表明,与SBE相比,对于临床上可实现的单体素SNR,如果在联合估计框架中使用四个或更多相邻的体素,则JMBE是准确而有效的。这说明,对于临床现实的SNR,仅在合并了相邻体素的信息的情况下,才能获得定量双指数T_1估计的准确结果。

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