In this study, we proposed a framework to generate simulated training dataset to train a convolutional neural network, which can be applied to highly undersampled MR Fingerprinting images to extract quantitative tissue properties. This eliminates the necessity to acquire training dataset from multiple subjects and has the potential to enable wide applications of deep learning techniques in quantitative imaging using MR Fingerprinting.
This abstract and the presentation materials are available to members only; a login is required.