Physics-Informed Neural ODEs for Temporal Dynamics Modeling in Cardiac T1 Mapping
Nuno Capit\~ao, Yi Zhang, Yidong Zhao, Qian Tao

TL;DR
This paper introduces a physics-informed neural ODE framework for rapid and accurate cardiac T1 mapping, reducing scan time and improving interpretability by incorporating physical constraints into the neural network model.
Contribution
We develop a continuous-time LSTM-ODE model that leverages physics-informed learning for efficient T1 mapping from sparse data, enhancing accuracy and robustness over existing methods.
Findings
High-accuracy T1 estimation from sparse data
Superior performance over purely data-driven models
Effective null index estimation at test time
Abstract
Spin-lattice relaxation time () is an important biomarker in cardiac parametric mapping for characterizing myocardial tissue and diagnosing cardiomyopathies. Conventional Modified Look-Locker Inversion Recovery (MOLLI) acquires 11 breath-hold baseline images with interleaved rest periods to ensure mapping accuracy. However, prolonged scanning can be challenging for patients with poor breathholds, often leading to motion artifacts that degrade image quality. In addition, mapping requires voxel-wise nonlinear fitting to a signal recovery model involving an iterative estimation process. Recent studies have proposed deep-learning approaches for rapid mapping using shortened sequences to reduce acquisition time for patient comfort. Nevertheless, existing methods overlook important physics constraints, limiting interpretability and generalization. In this work, we present an…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Cardiovascular Function and Risk Factors · Cardiac Imaging and Diagnostics
