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arxiv: 1908.03693 · v2 · pith:7KXIB2IZnew · submitted 2019-08-10 · 📡 eess.IV · cs.CV

Semi-Supervised Multi-Task Learning With Chest X-Ray Images

classification 📡 eess.IV cs.CV
keywords learningsemi-supervisedbetterchestdatagenerativeimageskltv
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Discriminative models that require full supervision are inefficacious in the medical imaging domain when large labeled datasets are unavailable. By contrast, generative modeling---i.e., learning data generation and classification---facilitates semi-supervised training with limited labeled data. Moreover, generative modeling can be advantageous in accomplishing multiple objectives for better generalization. We propose a novel multi-task learning model for jointly learning a classifier and a segmentor, from chest X-ray images, through semi-supervised learning. In addition, we propose a new loss function that combines absolute KL divergence with Tversky loss (KLTV) to yield faster convergence and better segmentation performance. Based on our experimental results using a novel segmentation model, an Adversarial Pyramid Progressive Attention U-Net (APPAU-Net), we hypothesize that KLTV can be more effective for generalizing multi-tasking models while being competitive in segmentation-only tasks.

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