Auto-Calibration Approach for k-t SENSE

作者:Ponce Irene P*; Blaimer Martin; Breuer Felix A; Griswold Mark A; Jakob Peter M; Kellman Peter
来源:Magnetic Resonance in Medicine, 2014, 71(3): 1123-1129.
DOI:10.1002/mrm.24738

摘要

PurposeThe goal of this work is to increase the spatial resolution of training data, used by reconstruction methods such as k-t SENSE in order to calculate the missing data in a series of dynamic images, without compromising their temporal resolution or acquisition time. TheoryThe k-t SENSE method allows dynamic imaging at high acceleration factors with high reconstruction quality. However, the low resolution training data required by k-t SENSE may cause undesired temporal filtering effects in the reconstructed images. MethodsIn this work, a feedback regularization approach is applied to realize auto-calibration of the k-t SENSE algorithm. To that end, a full resolution training data set is calculated from the accelerated data itself using a TSENSE reconstruction. The reconstructed training data are then fed back for the actual k-t SENSE reconstruction. For evaluation of our approach, temporal filtering effects are quantified by calculating the modulation transfer function and noise measurements are done by Monte-Carlo simulations. ResultsComputer simulations and cardiac imaging experiments demonstrate an improved temporal fidelity of auto-calibrated k-t SENSE compared to standard k-t SENSE. ConclusionAuto-calibrated k-t SENSE provides high quality reconstructions for dynamic imaging applications. Magn Reson Med 71:1123-1129, 2014.

  • 出版日期2014-3