» Articles » PMID: 30325053

Multi-modal Synergistic PET and MR Reconstruction Using Mutually Weighted Quadratic Priors

Overview
Journal Magn Reson Med
Publisher Wiley
Specialty Radiology
Date 2018 Oct 17
PMID 30325053
Citations 6
Authors
Affiliations
Soon will be listed here.
Abstract

Purpose: To propose a framework for synergistic reconstruction of PET-MR and multi-contrast MR data to improve the image quality obtained from noisy PET data and from undersampled MR data.

Theory And Methods: Weighted quadratic priors were devised to preserve common boundaries between PET-MR images while reducing noise, PET Gibbs ringing, and MR undersampling artifacts. These priors are iteratively reweighted using normalized multi-modal Gaussian similarity kernels. Synergistic PET-MR reconstructions were built on the PET maximum a posteriori expectation maximization algorithm and the MR regularized sensitivity encoding method. The proposed approach was compared to conventional methods, total variation, and prior-image weighted quadratic regularization methods. Comparisons were performed on a simulated [ F]fluorodeoxyglucose-PET and T /T -weighted MR brain phantom, 2 in vivo T /T -weighted MR brain datasets, and an in vivo [ F]fluorodeoxyglucose-PET and fluid-attenuated inversion recovery/T -weighted MR brain dataset.

Results: Simulations showed that synergistic reconstructions achieve the lowest quantification errors for all image modalities compared to conventional, total variation, and weighted quadratic methods. Whereas total variation regularization preserved modality-unique features, this method failed to recover PET details and was not able to reduce MR artifacts compared to our proposed method. For in vivo MR data, our method maintained similar image quality for 3× and 14× accelerated data. Reconstruction of the PET-MR dataset also demonstrated improved performance of our method compared to the conventional independent methods in terms of reduced Gibbs and undersampling artifacts.

Conclusion: The proposed methodology offers a robust multi-modal synergistic image reconstruction framework that can be readily built on existing established algorithms.

Citing Articles

A Review on the Use of Imaging Biomarkers in Oncology Clinical Trials: Quality Assurance Strategies for Technical Validation.

Chauvie S, Mazzoni L, ODoherty J Tomography. 2023; 9(5):1876-1902.

PMID: 37888741 PMC: 10610870. DOI: 10.3390/tomography9050149.


AI for PET image reconstruction.

Reader A, Pan B Br J Radiol. 2023; 96(1150):20230292.

PMID: 37486607 PMC: 10546435. DOI: 10.1259/bjr.20230292.


Approximating anatomically-guided PET reconstruction in image space using a convolutional neural network.

Schramm G, Rigie D, Vahle T, Rezaei A, Van Laere K, Shepherd T Neuroimage. 2020; 224:117399.

PMID: 32971267 PMC: 7812485. DOI: 10.1016/j.neuroimage.2020.117399.


Motion-corrected and high-resolution anatomically assisted (MOCHA) reconstruction of arterial spin labeling MRI.

Mehranian A, McGinnity C, Neji R, Prieto C, Hammers A, De Vita E Magn Reson Med. 2020; 84(3):1306-1320.

PMID: 32125015 PMC: 8614125. DOI: 10.1002/mrm.28205.


Hybrid PET/MR Kernelised Expectation Maximisation Reconstruction for Improved Image-Derived Estimation of the Input Function from the Aorta of Rabbits.

Deidda D, Karakatsanis N, Robson P, Calcagno C, Senders M, Mulder W Contrast Media Mol Imaging. 2019; 2019:3438093.

PMID: 30800014 PMC: 6360049. DOI: 10.1155/2019/3438093.


References
1.
Huang J, Chen C, Axel L . Fast multi-contrast MRI reconstruction. Magn Reson Imaging. 2014; 32(10):1344-52. DOI: 10.1016/j.mri.2014.08.025. View

2.
Chen C, Li Y, Huang J . Calibrationless parallel MRI with joint total variation regularization. Med Image Comput Comput Assist Interv. 2014; 16(Pt 3):106-14. DOI: 10.1007/978-3-642-40760-4_14. View

3.
Kreutz-Delgado K, Murray J, Rao B, Engan K, Lee T, Sejnowski T . Dictionary learning algorithms for sparse representation. Neural Comput. 2003; 15(2):349-96. PMC: 2944020. DOI: 10.1162/089976603762552951. View

4.
Pruessmann K, Weiger M, Scheidegger M, Boesiger P . SENSE: sensitivity encoding for fast MRI. Magn Reson Med. 1999; 42(5):952-62. View

5.
Wang G, Qi J . Penalized likelihood PET image reconstruction using patch-based edge-preserving regularization. IEEE Trans Med Imaging. 2012; 31(12):2194-204. PMC: 4080915. DOI: 10.1109/TMI.2012.2211378. View