Improving the Precision of CNNs for Magnetic Resonance Spectral Modeling
Magnetic resonance spectroscopic imaging is a widely available imaging modality that can non-invasively provide a metabolic profile of the tissue of interest, yet is challenging to integrate clinically. One major reason is the expensive, expert data processing and analysis that is required. Using ma...
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Main Authors | , , , , , , |
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Format | Journal Article |
Language | English |
Published |
10.09.2024
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Subjects | |
Online Access | Get full text |
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Summary: | Magnetic resonance spectroscopic imaging is a widely available imaging
modality that can non-invasively provide a metabolic profile of the tissue of
interest, yet is challenging to integrate clinically. One major reason is the
expensive, expert data processing and analysis that is required. Using machine
learning to predict MRS-related quantities offers avenues around this problem,
but deep learning models bring their own challenges, especially model trust.
Current research trends focus primarily on mean error metrics, but
comprehensive precision metrics are also needed, e.g. standard deviations,
confidence intervals, etc.. This work highlights why more comprehensive error
characterization is important and how to improve the precision of CNNs for
spectral modeling, a quantitative task. The results highlight advantages and
trade-offs of these techniques that should be considered when addressing such
regression tasks with CNNs. Detailed insights into the underlying mechanisms of
each technique, and how they interact with other techniques, are discussed in
depth. |
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DOI: | 10.48550/arxiv.2409.06609 |