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Abstract #2118

Fast Probabilistic Parameter Estimation for Quantitative MRI using Variational Autoencoders

Fan Yang1, Hui Zhang1, and Christopher Samuel Parker1
1Centre for Medical Image Computing & Department of Computer Science, University College London, London, United Kingdom

Synopsis

Keywords: Analysis/Processing, Quantitative Imaging

Motivation: Mapping MRI signal into tissue parameters aims to identify robust physiologic-phenotypic associations. However, conventional methods are computationally expensive, limiting their applicability in research or clinical practice.

Goal(s): To develop fast and robust techniques for estimating quantitative tissue parameters under a probabilistic framework using MRI signals.

Approach: Train and evaluate the performance of variational autoencoders and compare its capabilities with state-of-the-art deep learning methods on both synthesized and real MRI data.

Results: Compared to existing autoencoder-based methods, both synthetic and real data experiments show enhanced performance of VAEs on tissue parameter estimation. Parameter maps produced from real data show higher similarity to gold-standard maps.

Impact: We show that variational autoencoders can be trained for fast inference of quantitative parameter estimation MRI data quantification in qMRI.

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Keywords