Quantifying and Leveraging Predictive Uncertainty for Medical Image Assessment
Florin C. Ghesu, Bogdan Georgescu, Awais Mansoor, Youngjin Yoo, Eli, Gibson, R.S. Vishwanath, Abishek Balachandran, James M. Balter, Yue Cao,, Ramandeep Singh, Subba R. Digumarthy, Mannudeep K. Kalra, Sasa Grbic, Dorin, Comaniciu

TL;DR
This paper introduces a method to quantify and leverage predictive uncertainty in medical image assessment, improving classification accuracy and robustness by rejecting uncertain samples and filtering training data.
Contribution
It presents a novel system that learns explicit uncertainty measures alongside probabilistic predictions, enhancing medical image classification reliability.
Findings
Sample rejection based on uncertainty improves ROC-AUC by up to 8%.
Uncertainty-driven bootstrapping increases robustness and accuracy.
Method applies across various medical imaging modalities.
Abstract
The interpretation of medical images is a challenging task, often complicated by the presence of artifacts, occlusions, limited contrast and more. Most notable is the case of chest radiography, where there is a high inter-rater variability in the detection and classification of abnormalities. This is largely due to inconclusive evidence in the data or subjective definitions of disease appearance. An additional example is the classification of anatomical views based on 2D Ultrasound images. Often, the anatomical context captured in a frame is not sufficient to recognize the underlying anatomy. Current machine learning solutions for these problems are typically limited to providing probabilistic predictions, relying on the capacity of underlying models to adapt to limited information and the high degree of label noise. In practice, however, this leads to overconfident systems with poor…
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