IVCVLGJan 16, 2022

Self-Supervision and Multi-Task Learning: Challenges in Fine-Grained COVID-19 Multi-Class Classification from Chest X-rays

arXiv:2201.06052v29 citations
AI Analysis

This work addresses the need for accurate and clinically viable diagnostic tools for COVID-19, though it appears incremental in its approach to existing deep learning methods.

The study tackled the challenge of fine-grained COVID-19 classification from chest X-rays by investigating multi-task learning and self-supervised pre-training, achieving competitive performance with reduced reliance on expensive annotations.

Quick and accurate diagnosis is of paramount importance to mitigate the effects of COVID-19 infection, particularly for severe cases. Enormous effort has been put towards developing deep learning methods to classify and detect COVID-19 infections from chest radiography images. However, recently some questions have been raised surrounding the clinical viability and effectiveness of such methods. In this work, we investigate the impact of multi-task learning (classification and segmentation) on the ability of CNNs to differentiate between various appearances of COVID-19 infections in the lung. We also employ self-supervised pre-training approaches, namely MoCo and inpainting-CXR, to eliminate the dependence on expensive ground truth annotations for COVID-19 classification. Finally, we conduct a critical evaluation of the models to assess their deploy-readiness and provide insights into the difficulties of fine-grained COVID-19 multi-class classification from chest X-rays.

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