CLOG-CD: Curriculum Learning based on Oscillating Granularity of Class Decomposed Medical Image Classification
Journal:
arXiv
Published Date:
May 3, 2025
Abstract
Curriculum learning strategies have been proven to be effective in various
applications and have gained significant interest in the field of machine
learning. It has the ability to improve the final model's performance and
accelerate the training process. However, in the medical imaging domain, data
irregularities can make the recognition task more challenging and usually
result in misclassification between the different classes in the dataset.
Class-decomposition approaches have shown promising results in solving such a
problem by learning the boundaries within the classes of the data set. In this
paper, we present a novel convolutional neural network (CNN) training method
based on the curriculum learning strategy and the class decomposition approach,
which we call CLOG-CD, to improve the performance of medical image
classification. We evaluated our method on four different imbalanced medical
image datasets, such as Chest X-ray (CXR), brain tumour, digital knee X-ray,
and histopathology colorectal cancer (CRC). CLOG-CD utilises the learnt weights
from the decomposition granularity of the classes, and the training is
accomplished from descending to ascending order (i.e., anti-curriculum
technique). We also investigated the classification performance of our proposed
method based on different acceleration factors and pace function curricula. We
used two pre-trained networks, ResNet-50 and DenseNet-121, as the backbone for
CLOG-CD. The results with ResNet-50 show that CLOG-CD has the ability to
improve classification performance with an accuracy of 96.08% for the CXR
dataset, 96.91% for the brain tumour dataset, 79.76% for the digital knee
X-ray, and 99.17% for the CRC dataset, compared to other training strategies.
In addition, with DenseNet-121, CLOG-CD has achieved 94.86%, 94.63%, 76.19%,
and 99.45% for CXR, brain tumour, digital knee X-ray, and CRC datasets,
respectively