LMFLOSS: A Hybrid Loss For Imbalanced Medical Image Classification
With advances in digital technology, the classification of medical images has become a crucial step for image-based clinical decision support systems. Automatic medical image classification represents a pivotal domain where the use of AI holds the potential to create a significant social impact. How...
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Zusammenfassung: | With advances in digital technology, the classification of medical images has
become a crucial step for image-based clinical decision support systems.
Automatic medical image classification represents a pivotal domain where the
use of AI holds the potential to create a significant social impact. However,
several challenges act as obstacles to the development of practical and
effective solutions. One of these challenges is the prevalent class imbalance
problem in most medical imaging datasets. As a result, existing AI techniques,
particularly deep-learning-based methodologies, often underperform in such
scenarios. In this study, we propose a novel framework called Large Margin
aware Focal (LMF) loss to mitigate the class imbalance problem in medical
imaging. The LMF loss represents a linear combination of two loss functions
optimized by two hyperparameters. This framework harnesses the distinct
characteristics of both loss functions by enforcing wider margins for minority
classes while simultaneously emphasizing challenging samples found in the
datasets. We perform rigorous experiments on three neural network architectures
and with four medical imaging datasets. We provide empirical evidence that our
proposed framework consistently outperforms other baseline methods, showing an
improvement of 2%-9% in macro-f1 scores. Through class-wise analysis of f1
scores, we also demonstrate how the proposed framework can significantly
improve performance for minority classes. The results of our experiments show
that our proposed framework can perform consistently well across different
architectures and datasets. Overall, our study demonstrates a simple and
effective approach to addressing the class imbalance problem in medical imaging
datasets. We hope our work will inspire new research toward a more generalized
approach to medical image classification. |
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DOI: | 10.48550/arxiv.2212.12741 |