Paper ID: 2501.10770 • Published Jan 18, 2025
Enhancing Diagnostic in 3D COVID-19 Pneumonia CT-scans through Explainable Uncertainty Bayesian Quantification
Juan Manuel Liscano Fierro, Hector J. Hortua
TL;DR
Get AI-generated summaries with premium
Get AI-generated summaries with premium
Accurately classifying COVID-19 pneumonia in 3D CT scans remains a
significant challenge in the field of medical image analysis. Although
deterministic neural networks have shown promising results in this area, they
provide only point estimates outputs yielding poor diagnostic in clinical
decision-making. In this paper, we explore the use of Bayesian neural networks
for classifying COVID-19 pneumonia in 3D CT scans providing uncertainties in
their predictions. We compare deterministic networks and their Bayesian
counterpart, enhancing the decision-making accuracy under uncertainty
information. Remarkably, our findings reveal that lightweight architectures
achieve the highest accuracy of 96\% after developing extensive hyperparameter
tuning. Furthermore, the Bayesian counterpart of these architectures via
Multiplied Normalizing Flow technique kept a similar performance along with
calibrated uncertainty estimates. Finally, we have developed a 3D-visualization
approach to explain the neural network outcomes based on SHAP values. We
conclude that explainability along with uncertainty quantification will offer
better clinical decisions in medical image analysis, contributing to ongoing
efforts for improving the diagnosis and treatment of COVID-19 pneumonia.