SSL‐QALAS: Self‐Supervised Learning for rapid multiparameter estimation in quantitative MRI using 3D‐QALAS

Author:

Jun Yohan12ORCID,Cho Jaejin12ORCID,Wang Xiaoqing12ORCID,Gee Michael23ORCID,Grant P. Ellen24ORCID,Bilgic Berkin125ORCID,Gagoski Borjan24ORCID

Affiliation:

1. Athinoula A. Martinos Center for Biomedical Imaging, Massachusetts General Hospital Boston Massachusetts USA

2. Department of Radiology Harvard Medical School Boston Massachusetts USA

3. Department of Radiology Massachusetts General Hospital Boston Massachusetts USA

4. Fetal‐Neonatal Neuroimaging & Developmental Science Center Boston Children's Hospital Boston Massachusetts USA

5. Harvard/MIT Health Sciences and Technology Cambridge Massachusetts USA

Abstract

AbstractPurposeTo develop and evaluate a method for rapid estimation of multiparametric T1, T2, proton density, and inversion efficiency maps from 3D‐quantification using an interleaved Look‐Locker acquisition sequence with T2 preparation pulse (3D‐QALAS) measurements using self‐supervised learning (SSL) without the need for an external dictionary.MethodsAn SSL‐based QALAS mapping method (SSL‐QALAS) was developed for rapid and dictionary‐free estimation of multiparametric maps from 3D‐QALAS measurements. The accuracy of the reconstructed quantitative maps using dictionary matching and SSL‐QALAS was evaluated by comparing the estimated T1 and T2 values with those obtained from the reference methods on an International Society for Magnetic Resonance in Medicine/National Institute of Standards and Technology phantom. The SSL‐QALAS and the dictionary‐matching methods were also compared in vivo, and generalizability was evaluated by comparing the scan‐specific, pre‐trained, and transfer learning models.ResultsPhantom experiments showed that both the dictionary‐matching and SSL‐QALAS methods produced T1 and T2 estimates that had a strong linear agreement with the reference values in the International Society for Magnetic Resonance in Medicine/National Institute of Standards and Technology phantom. Further, SSL‐QALAS showed similar performance with dictionary matching in reconstructing the T1, T2, proton density, and inversion efficiency maps on in vivo data. Rapid reconstruction of multiparametric maps was enabled by inferring the data using a pre‐trained SSL‐QALAS model within 10 s. Fast scan‐specific tuning was also demonstrated by fine‐tuning the pre‐trained model with the target subject's data within 15 min.ConclusionThe proposed SSL‐QALAS method enabled rapid reconstruction of multiparametric maps from 3D‐QALAS measurements without an external dictionary or labeled ground‐truth training data.

Funder

National Institutes of Health

Nvidia

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging

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