An Uncertainty Aided Framework for Learning based Liver $T_1\rho$ Mapping and Analysis
Chaoxing Huang, Vincent Wai Sun Wong, Queenie Chan, Winnie Chiu Wing, Chu, Weitian Chen

TL;DR
This paper introduces a probabilistic deep learning framework for liver $T_1 ho$ mapping that estimates uncertainty, improves accuracy, and enhances reliability in clinical assessments of liver fibrosis.
Contribution
It proposes a novel uncertainty-aware $T_1 ho$ mapping method that refines maps using uncertainty estimates to improve accuracy and reliability in liver imaging.
Findings
Achieved less than 3% relative mapping error.
Uncertainty estimates accurately reflect actual errors.
Reduced mapping error to 2.60% by utilizing uncertainty.
Abstract
Objective: Quantitative imaging has potential for assessment of biochemical alterations of liver pathologies. Deep learning methods have been employed to accelerate quantitative imaging. To employ artificial intelligence-based quantitative imaging methods in complicated clinical environment, it is valuable to estimate the uncertainty of the predicated values to provide the confidence level of the quantification results. The uncertainty should also be utilized to aid the post-hoc quantitative analysis and model learning tasks. Approach: To address this need, we propose a parametric map refinement approach for learning-based mapping and train the model in a probabilistic way to model the uncertainty. We also propose to utilize the uncertainty map to spatially weight the training of an improved mapping network to further improve the mapping…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Imaging Techniques and Applications · Liver Disease Diagnosis and Treatment
