Iterative methods for fast reconstruction of undersampled dynamic contrast-enhanced MRI data

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Abstract

This paper introduces new variational formulation for reconstruction from subsampled dynamic contrast-enhanced DCE-MRI data, that combines a data-driven approach using estimated temporal basis and total variation regularization (PCA TV). We also experimentally compares the performance of such model with two other state-of-the-art formulations. One models the shape of perfusion curves in time as a sum of a curve belonging to a low-dimensional space and a function sparse in a suitable domain (L + S model). The other possibility is to regularize both spatial and time domains (ICTGV). We are dealing with the specific situation of the DCE-MRI acquisition with a 9.4T small animal scanner, working with noisier signals than human scanners and with a smaller number of coil elements that can be used for parallel acquisition and small voxels. Evaluation of the selected methods is done through subsampled reconstruction of radially-sampled DCE-MRI data. Our analysis shows that compressed sensed MRI in the form of regularization can be used to increase the temporal resolution of acquisition while keeping a sufficient signal-to-noise ratio.

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Walner, H., Bartoš, M., Mangová, M., Keunen, O., Bjerkvig, R., Jiřík, R., & Šorel, M. (2019). Iterative methods for fast reconstruction of undersampled dynamic contrast-enhanced MRI data. In IFMBE Proceedings (Vol. 68, pp. 267–271). Springer Verlag. https://doi.org/10.1007/978-981-10-9035-6_48

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