Literature DB >> 28918316

MR-guided joint reconstruction of activity and attenuation in brain PET-MR.

Abolfazl Mehranian1, Habib Zaidi2, Andrew J Reader3.   

Abstract

With the advent of time-of-flight (TOF) PET scanners, joint maximum-likelihood reconstruction of activity and attenuation (MLAA) maps has recently regained attention for the estimation of PET attenuation maps from emission data. However, the estimated attenuation and activity maps are scaled by unknown scaling factors. We recently demonstrated that in hybrid PET-MR, the scaling issue of this algorithm can be effectively addressed by imposing MR spatial constraints on the estimation of attenuation maps using a penalized MLAA (P-MLAA+) algorithm. With the advent of simultaneous PET-MR systems, MRI-guided PET image reconstruction has also gained attention for improving the quantitative accuracy of PET images, usually degraded by noise and partial volume effects. The aim of this study is therefore to increase the benefits of MRI information for improving the quantitative accuracy of PET images by exploiting MRI-based anatomical penalty functions to guide the reconstruction of both activity and attenuation maps during their joint estimation. We employed an anato-functional joint entropy penalty function for the reconstruction of activity and an anatomical quadratic penalty function for the reconstruction of attenuation. The resulting algorithm was referred to as P-MLAA++ since it exploits both activity and attenuation penalty functions. The performance of the P-MLAA algorithms were compared with MLAA and the widely used activity reconstruction algorithms such as maximum likelihood expectation maximization (MLEM) and penalized MLEM (P-MLEM) both corrected for attenuation using a conventional MRI segmentation-based attenuation correction (MRAC) method. The studied methods were evaluated using simulations and clinical studies taking the PET image reconstructed using reference CT-based attenuation maps as a reference. The simulation results showed that the proposed method can notably improve the visual quality of the PET images by reducing noise while preserving structural boundaries and at the same time improving the quantitative accuracy of the PET images. Our clinical reconstruction results showed that the MLEM-MRAC, P-MLEM-MRAC, MLAA, P-MLAA+ and P-MLAA++ algorithms result in, on average, quantification errors of -13.5 ± 3.1%, -13.4 ± 3.1%, -2.0 ± 6.5%, -3.0 ± 3.5% and -4.2 ± 3.6%, respectively, in different regions of the brain. In conclusion, whilst the P-MLAA+ algorithm showed the best overall quantification performance, the proposed P-MLAA++ algorithm provided simultaneous partial volume and attenuation corrections with only a minor compromise of PET quantification.
Copyright © 2017 The Author(s). Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Attenuation correction; Brain imaging; PET-MR; Quantification; Segmentation

Mesh:

Year:  2017        PMID: 28918316     DOI: 10.1016/j.neuroimage.2017.09.006

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  11 in total

1.  Attenuation correction for brain PET imaging using deep neural network based on Dixon and ZTE MR images.

Authors:  Kuang Gong; Jaewon Yang; Kyungsang Kim; Georges El Fakhri; Youngho Seo; Quanzheng Li
Journal:  Phys Med Biol       Date:  2018-06-13       Impact factor: 3.609

2.  Novel adversarial semantic structure deep learning for MRI-guided attenuation correction in brain PET/MRI.

Authors:  Hossein Arabi; Guodong Zeng; Guoyan Zheng; Habib Zaidi
Journal:  Eur J Nucl Med Mol Imaging       Date:  2019-07-01       Impact factor: 9.236

Review 3.  From simultaneous to synergistic MR-PET brain imaging: A review of hybrid MR-PET imaging methodologies.

Authors:  Zhaolin Chen; Sharna D Jamadar; Shenpeng Li; Francesco Sforazzini; Jakub Baran; Nicholas Ferris; Nadim Jon Shah; Gary F Egan
Journal:  Hum Brain Mapp       Date:  2018-08-04       Impact factor: 5.038

4.  Higher SNR PET image prediction using a deep learning model and MRI image.

Authors:  Chih-Chieh Liu; Jinyi Qi
Journal:  Phys Med Biol       Date:  2019-05-23       Impact factor: 3.609

5.  Quantitative evaluation of a deep learning-based framework to generate whole-body attenuation maps using LSO background radiation in long axial FOV PET scanners.

Authors:  Hasan Sari; Mohammadreza Teimoorisichani; Clemens Mingels; Ian Alberts; Vladimir Panin; Deepak Bharkhada; Song Xue; George Prenosil; Kuangyu Shi; Maurizio Conti; Axel Rominger
Journal:  Eur J Nucl Med Mol Imaging       Date:  2022-07-19       Impact factor: 10.057

6.  MRI-guided attenuation correction in torso PET/MRI: Assessment of segmentation-, atlas-, and deep learning-based approaches in the presence of outliers.

Authors:  Hossein Arabi; Habib Zaidi
Journal:  Magn Reson Med       Date:  2021-09-04       Impact factor: 3.737

7.  Zero-Extra-Dose PET Delayed Imaging with Data-Driven Attenuation Correction Estimation.

Authors:  Lifang Pang; Wentao Zhu; Yun Dong; Yang Lv; Hongcheng Shi
Journal:  Mol Imaging Biol       Date:  2019-02       Impact factor: 3.488

Review 8.  Applications of artificial intelligence and deep learning in molecular imaging and radiotherapy.

Authors:  Hossein Arabi; Habib Zaidi
Journal:  Eur J Hybrid Imaging       Date:  2020-09-23

9.  Deep learning-guided joint attenuation and scatter correction in multitracer neuroimaging studies.

Authors:  Hossein Arabi; Karin Bortolin; Nathalie Ginovart; Valentina Garibotto; Habib Zaidi
Journal:  Hum Brain Mapp       Date:  2020-05-21       Impact factor: 5.038

Review 10.  PET/MRI attenuation estimation in the lung: A review of past, present, and potential techniques.

Authors:  Joseph Lillington; Ludovica Brusaferri; Kerstin Kläser; Karin Shmueli; Radhouene Neji; Brian F Hutton; Francesco Fraioli; Simon Arridge; Manuel Jorge Cardoso; Sebastien Ourselin; Kris Thielemans; David Atkinson
Journal:  Med Phys       Date:  2020-01-01       Impact factor: 4.071

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