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Physics-guided self-supervised learning for retrospective T 1 and T 2 mapping from conventional weighted brain MRI: Technical developments and initial validation in glioblastoma.
- Source :
-
Magnetic resonance in medicine [Magn Reson Med] 2024 Dec; Vol. 92 (6), pp. 2683-2695. Date of Electronic Publication: 2024 Jul 16. - Publication Year :
- 2024
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Abstract
- Purpose: To develop a self-supervised learning method to retrospectively estimate T <subscript>1</subscript> and T <subscript>2</subscript> values from clinical weighted MRI.<br />Methods: A self-supervised learning approach was constructed to estimate T <subscript>1</subscript> , T <subscript>2</subscript> , and proton density maps from conventional T <subscript>1</subscript> - and T <subscript>2</subscript> -weighted images. MR physics models were employed to regenerate the weighted images from the network outputs, and the network was optimized based on loss calculated between the synthesized and input weighted images, alongside additional constraints based on prior information. The method was evaluated on healthy volunteer data, with conventional mapping as references. The reproducibility was examined on two 3.0T scanners. Performance in tumor characterization was inspected by applying the method to a public glioblastoma dataset.<br />Results: For T <subscript>1</subscript> and T <subscript>2</subscript> estimation from three weighted images (T <subscript>1</subscript> MPRAGE, T <subscript>1</subscript> gradient echo sequences, and T <subscript>2</subscript> turbo spin echo), the deep learning method achieved global voxel-wise error ≤9% in brain parenchyma and regional error ≤12.2% in six types of brain tissues. The regional measurements obtained from two scanners showed mean differences ≤2.4% and correlation coefficients >0.98, demonstrating excellent reproducibility. In the 50 glioblastoma patients, the retrospective quantification results were in line with literature reports from prospective methods, and the T <subscript>2</subscript> values were found to be higher in tumor regions, with sensitivity of 0.90 and specificity of 0.92 in a voxel-wise classification task between normal and abnormal regions.<br />Conclusion: The self-supervised learning method is promising for retrospective T <subscript>1</subscript> and T <subscript>2</subscript> quantification from clinical MR images, with the potential to improve the availability of quantitative MRI and facilitate brain tumor characterization.<br /> (© 2024 International Society for Magnetic Resonance in Medicine.)
- Subjects :
- Humans
Retrospective Studies
Reproducibility of Results
Image Processing, Computer-Assisted methods
Male
Female
Adult
Middle Aged
Algorithms
Supervised Machine Learning
Deep Learning
Image Interpretation, Computer-Assisted methods
Aged
Glioblastoma diagnostic imaging
Magnetic Resonance Imaging methods
Brain Neoplasms diagnostic imaging
Brain diagnostic imaging
Subjects
Details
- Language :
- English
- ISSN :
- 1522-2594
- Volume :
- 92
- Issue :
- 6
- Database :
- MEDLINE
- Journal :
- Magnetic resonance in medicine
- Publication Type :
- Academic Journal
- Accession number :
- 39014982
- Full Text :
- https://doi.org/10.1002/mrm.30226