%A Wang,Jianfeng %A Garpebring,Anders %A Brynolfsson,Patrik %A Yu,Jun %D 2021 %J Frontiers in Signal Processing %C %F %G English %K contrast agent quantification,BHM,Besag,Leroux,InlA %Q %R 10.3389/frsip.2021.727387 %W %L %M %P %7 %8 2021-October-19 %9 Original Research %# %! Contrast agent quantification %* %< %T Contrast Agent Quantification by Using Spatial Information in Dynamic Contrast Enhanced MRI %U https://www.frontiersin.org/articles/10.3389/frsip.2021.727387 %V 1 %0 JOURNAL ARTICLE %@ 2673-8198 %X The purpose of this work is to investigate spatial statistical modelling approaches to improve contrast agent quantification in dynamic contrast enhanced MRI, by utilising the spatial dependence among image voxels. Bayesian hierarchical models (BHMs), such as Besag model and Leroux model, were studied using simulated MRI data. The models were built on smaller images where spatial dependence can be incorporated, and then extended to larger images using the maximum a posteriori (MAP) method. Notable improvements on contrast agent concentration estimation were obtained for both smaller and larger images. For smaller images: the BHMs provided substantial improved estimates in terms of the root mean squared error (rMSE), compared to the estimates from the existing method for a noise level equivalent of a 12-channel head coil at 3T. Moreover, Leroux model outperformed Besag models with two different dependence structures. Specifically, the Besag models increased the estimation precision by 27% around the peak of the dynamic curve, while the Leroux model improved the estimation by 40% at the peak, compared with the existing estimation method. For larger images: the proposed MAP estimators showed clear improvements on rMSE for vessels, tumor rim and white matter.