Deep learning approaches achieve state-of-the-art performance for classifying radiology images, but rely on large labelled datasets that require resource-intensive annotation by specialists. Both semi-supervised learning and active learning can be utilised to mitigate this annotation burden. However, there is limited work on combining the advantages of semi-supervised and active learning approaches for multi-label medical image classification. Here, we introduce a novel Consistency-based Semi-supervised Evidential Active Learning framework (CSEAL). Specifically, we leverage predictive uncertainty based on theories of evidence and subjective logic to develop an end-to-end integrated approach that combines consistency-based semi-supervised learning with uncertainty-based active learning. We apply our approach to enhance four leading consistency-based semi-supervised learning methods: Pseudo-labelling, Virtual Adversarial Training, Mean Teacher and NoTeacher. Extensive evaluations on multi-label Chest X-Ray classification tasks demonstrate that CSEAL achieves substantive performance improvements over two leading semi-supervised active learning baselines. Further, a class-wise breakdown of results shows that our approach can substantially improve accuracy on rarer abnormalities with fewer labelled samples.
翻译:深层学习方法在放射图像分类方面达到最先进的业绩,但依赖需要专家大量资源密集型批注的大型标签数据集。半监督学习和积极学习都可以利用半监督学习和主动学习来减轻这一批注负担。然而,在将半监督学习和积极学习方法的优点结合起来,用于多标签医学图像分类方面,我们的工作有限。在这里,我们引入了一个新的基于一致性的半监督半监督半监督主动学习框架(CSEAL)。具体地说,我们利用基于证据理论和主观逻辑的预测不确定性来开发一个终端到终端综合方法,将基于一致性的半监督学习与基于不确定性的积极学习结合起来。我们运用了我们的方法来强化四个基于一致性的半监督学习方法:Pseudo标签、虚拟辅助培训、劣势教师和无教师。多标签X射线分类任务的广泛评价表明,CSEAAL在两个领先的半监督积极学习基线上取得了实质性的绩效改进。此外,一个异常的分类结果显示,我们以更低的精确性模型可以大大地改进我们的异常的精确性。