Resolving quantitative MRI model degeneracy with machine learning via
training data distribution design
- URL: http://arxiv.org/abs/2303.05464v1
- Date: Thu, 9 Mar 2023 18:10:45 GMT
- Title: Resolving quantitative MRI model degeneracy with machine learning via
training data distribution design
- Authors: Michele Guerreri, Sean Epstein, Hojjat Azadbakht, Hui Zhang
- Abstract summary: Quantitative MRI aims to map tissue properties non-invasively via models that relate unknown quantities to measured MRI signals.
Estimating these unknowns, which has traditionally required model fitting, can now be done with one-shot machine learning (ML) approaches.
Growing empirical evidence appears to suggest ML approaches remain susceptible to model degeneracy.
- Score: 2.2086005010186387
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantitative MRI (qMRI) aims to map tissue properties non-invasively via
models that relate these unknown quantities to measured MRI signals. Estimating
these unknowns, which has traditionally required model fitting - an often
iterative procedure, can now be done with one-shot machine learning (ML)
approaches. Such parameter estimation may be complicated by intrinsic qMRI
signal model degeneracy: different combinations of tissue properties produce
the same signal. Despite their many advantages, it remains unclear whether ML
approaches can resolve this issue. Growing empirical evidence appears to
suggest ML approaches remain susceptible to model degeneracy. Here we
demonstrate under the right circumstances ML can address this issue. Inspired
by recent works on the impact of training data distributions on ML-based
parameter estimation, we propose to resolve model degeneracy by designing
training data distributions. We put forward a classification of model
degeneracies and identify one particular kind of degeneracies amenable to the
proposed attack. The strategy is demonstrated successfully using the Revised
NODDI model with standard multi-shell diffusion MRI data as an exemplar. Our
results illustrate the importance of training set design which has the
potential to allow accurate estimation of tissue properties with ML.
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