IVCVJan 31, 2024

Is Registering Raw Tagged-MR Enough for Strain Estimation in the Era of Deep Learning?

arXiv:2401.17571v15 citationsh-index: 47Medical Imaging
Originality Incremental advance
AI Analysis

This work addresses challenges in medical imaging for researchers and clinicians by highlighting incremental improvements in handling tag fading in MRI strain estimation.

The study tackled the problem of tag fading in tagged MRI for strain estimation by modeling the phenomenon and evaluating deep learning registration methods on raw data, finding that common similarity losses have limitations compared to traditional Harmonic Phase approaches.

Magnetic Resonance Imaging with tagging (tMRI) has long been utilized for quantifying tissue motion and strain during deformation. However, a phenomenon known as tag fading, a gradual decrease in tag visibility over time, often complicates post-processing. The first contribution of this study is to model tag fading by considering the interplay between $T_1$ relaxation and the repeated application of radio frequency (RF) pulses during serial imaging sequences. This is a factor that has been overlooked in prior research on tMRI post-processing. Further, we have observed an emerging trend of utilizing raw tagged MRI within a deep learning-based (DL) registration framework for motion estimation. In this work, we evaluate and analyze the impact of commonly used image similarity objectives in training DL registrations on raw tMRI. This is then compared with the Harmonic Phase-based approach, a traditional approach which is claimed to be robust to tag fading. Our findings, derived from both simulated images and an actual phantom scan, reveal the limitations of various similarity losses in raw tMRI and emphasize caution in registration tasks where image intensity changes over time.

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