PLoS ONE (Jan 2014)

Automatic high-bandwidth calibration and reconstruction of arbitrarily sampled parallel MRI.

  • Jan Aelterman,
  • Maarten Naeyaert,
  • Shandra Gutierrez,
  • Hiep Luong,
  • Bart Goossens,
  • Aleksandra Pižurica,
  • Wilfried Philips

DOI
https://doi.org/10.1371/journal.pone.0098937
Journal volume & issue
Vol. 9, no. 6
p. e98937

Abstract

Read online

Today, many MRI reconstruction techniques exist for undersampled MRI data. Regularization-based techniques inspired by compressed sensing allow for the reconstruction of undersampled data that would lead to an ill-posed reconstruction problem. Parallel imaging enables the reconstruction of MRI images from undersampled multi-coil data that leads to a well-posed reconstruction problem. Autocalibrating pMRI techniques encompass pMRI techniques where no explicit knowledge of the coil sensivities is required. A first purpose of this paper is to derive a novel autocalibration approach for pMRI that allows for the estimation and use of smooth, but high-bandwidth coil profiles instead of a compactly supported kernel. These high-bandwidth models adhere more accurately to the physics of an antenna system. The second purpose of this paper is to demonstrate the feasibility of a parameter-free reconstruction algorithm that combines autocalibrating pMRI and compressed sensing. Therefore, we present several techniques for automatic parameter estimation in MRI reconstruction. Experiments show that a higher reconstruction accuracy can be had using high-bandwidth coil models and that the automatic parameter choices yield an acceptable result.