Deep Learning MR Relaxometry with Joint Spatial-Temporal Under-Sampling

Hongyu Li, Mingrui Yang, Jeehun Kim, Ruiying Liu, Chaoyi Zhang, Peizhou Huang, Sunil Gaire

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

This abstract presents a deep learning method to generate MR parameter maps from very few subsampled echo images. The method uses deep convolutional neural networks to learn the nonlinear relationship between the subsampled T1rho/T2-weighted images and the T1rho/T2 maps, bypassing the conventional exponential decay models. Experimental results show that the proposed method is able to generate T1rho/T2 maps from only 2 subsampled echo images with quantitative values comparable to those of the T1rho/T2 maps generated from fully-sampled 8 echo images using the conventional exponential decay curve fitting.
Original languageEnglish
Title of host publicationUnknown book
Volume253
StatePublished - 2020

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