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Semi-supervised Multi-task Learning with Chest X-Ray Images

机译:胸部X射线图像的半监督多任务学习

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摘要

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.
机译:当没有大的标记数据集时,需要完全监督的判别模型在医学成像领域是无效的。相比之下,生成模型(即学习数据的生成和分类)有助于使用有限的标记数据进行半监督训练。此外,生成建模在实现多个目标以更好地概括方面可能是有利的。我们提出了一种新颖的多任务学习模型,用于从胸部X射线图像到半监督学习共同学习分类器和分割器。此外,我们提出了一种新的损失函数,该函数将绝对KL发散与Tversky损失(KLTV)相结合,以产生更快的收敛和更好的分割性能。基于我们使用新颖的细分模型,对抗金字塔渐进式注意事项U-Net(APPAU-Net)的实验结果,我们假设KLTV可以更有效地推广多任务模型,同时在仅细分任务中具有竞争力。

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