Curriculum learning for improved femur fracture classification: scheduling data with prior knowledge and uncertainty
Amelia Jim\'enez-S\'anchez, Diana Mateus, Sonja Kirchhoff, Chlodwig, Kirchhoff, Peter Biberthaler, Nassir Navab, Miguel A. Gonz\'alez Ballester,, Gemma Piella

TL;DR
This paper introduces a curriculum learning approach that leverages prior knowledge and uncertainty to enhance CNN-based classification of proximal femur fractures from X-ray images, achieving performance comparable to experienced surgeons.
Contribution
It proposes a novel curriculum learning framework combining sample weighting, reordering, and sampling, with new scoring functions based on domain knowledge and uncertainty.
Findings
Curriculum learning improved fracture classification accuracy by up to 15%.
The approach achieved performance comparable to experienced trauma surgeons.
The method demonstrated benefits in digit recognition tasks with limited data, class imbalance, and label noise.
Abstract
An adequate classification of proximal femur fractures from X-ray images is crucial for the treatment choice and the patients' clinical outcome. We rely on the commonly used AO system, which describes a hierarchical knowledge tree classifying the images into types and subtypes according to the fracture's location and complexity. In this paper, we propose a method for the automatic classification of proximal femur fractures into 3 and 7 AO classes based on a Convolutional Neural Network (CNN). As it is known, CNNs need large and representative datasets with reliable labels, which are hard to collect for the application at hand. In this paper, we design a curriculum learning (CL) approach that improves over the basic CNNs performance under such conditions. Our novel formulation reunites three curriculum strategies: individually weighting training samples, reordering the training set, and…
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Taxonomy
MethodsArtemisinin Optimization based on Malaria Therapy: Algorithm and Applications to Medical Image Segmentation
