Rapid quantitative magnetization transfer imaging: Utilizing the hybrid state and the generalized Bloch model

link to paper

Rapid quantitative magnetization transfer imaging: Utilizing the hybrid state and the generalized Bloch model

Jakob Assländer, Cem Gultekin, Andrew Mao, Xiaoxia Zhang, Quentin Duchemin, Kangning Liu, Robert W. Charlson, Timothy M. Shepherd, Carlos Fernandez-Granda, Sebastian Flassbeck

Abstract

Purpose

To explore efficient encoding schemes for quantitative magnetization transfer (qMT) imaging with few constraints on model parameters.

Theory and Methods

We combine two recently proposed models in a Bloch-McConnell equation: the dynamics of the free spin pool are confined to the hybrid state, and the dynamics of the semi-solid spin pool are described by the generalized Bloch model. We numerically optimize the flip angles and durations of a train of radio frequency pulses to enhance the encoding of three qMT parameters while accounting for all eight parameters of the two-pool model. We sparsely sample each time frame along this spin dynamics with a three-dimensional radial koosh-ball trajectory, reconstruct the data with subspace modeling, and fit the qMT model with a neural network for computational efficiency.

Results

We extracted qMT parameter maps of the whole brain with an effective resolution of 1.24 mm from a 12.6-min scan. In lesions of multiple sclerosis subjects, we observe a decreased size of the semi-solid spin pool and longer relaxation times, consistent with previous reports.

Conclusion

The encoding power of the hybrid state, combined with regularized image reconstruction, and the accuracy of the generalized Bloch model provide an excellent basis for efficient quantitative magnetization transfer imaging with few constraints on model parameters.