English

Robust Autocalibrated Structured Low-Rank EPI Ghost Correction

Image and Video Processing 2020-10-05 v3 Computer Vision and Pattern Recognition

Abstract

Purpose: We propose and evaluate a new structured low-rank method for EPI ghost correction called Robust Autocalibrated LORAKS (RAC-LORAKS). The method can be used to suppress EPI ghosts arising from the differences between different readout gradient polarities and/or the differences between different shots. It does not require conventional EPI navigator signals, and is robust to imperfect autocalibration data. Methods: Autocalibrated LORAKS is a previous structured low-rank method for EPI ghost correction that uses GRAPPA-type autocalibration data to enable high-quality ghost correction. This method works well when the autocalibration data is pristine, but performance degrades substantially when the autocalibration information is imperfect. RAC-LORAKS generalizes Autocalibrated LORAKS in two ways. First, it does not completely trust the information from autocalibration data, and instead considers the autocalibration and EPI data simultaneously when estimating low-rank matrix structure. And second, it uses complementary information from the autocalibration data to improve EPI reconstruction in a multi-contrast joint reconstruction framework. RAC-LORAKS is evaluated using simulations and in vivo data, including comparisons to state-of-the-art methods. Results: RAC-LORAKS is demonstrated to have good ghost elimination performance compared to state-of-the-art methods in several complicated EPI acquisition scenarios (including gradient-echo brain imaging, diffusion-encoded brain imaging, and cardiac imaging). Conclusion: RAC-LORAKS provides effective suppression of EPI ghosts and is robust to imperfect autocalibration data.

Cite

@article{arxiv.1907.13261,
  title  = {Robust Autocalibrated Structured Low-Rank EPI Ghost Correction},
  author = {Rodrigo A. Lobos and W. Scott Hoge and Ahsan Javed and Congyu Liao and Kawin Setsompop and Krishna S. Nayak and Justin P. Haldar},
  journal= {arXiv preprint arXiv:1907.13261},
  year   = {2020}
}
R2 v1 2026-06-23T10:35:32.208Z