Deep learning has seen rapid growth in recent years and achieved state-of-the-art performance in a wide range of applications. However, training models typically requires expensive and time-consuming collection of large quantities of labeled data. This is particularly true within the scope of medical imaging analysis (MIA), where data are limited and labels are expensive to be acquired. Thus, label-efficient deep learning methods are developed to make comprehensive use of the labeled data as well as the abundance of unlabeled and weak-labeled data. In this survey, we extensively investigated over 300 recent papers to provide a comprehensive overview of recent progress on label-efficient learning strategies in MIA. We first present the background of label-efficient learning and categorize the approaches into different schemes. Next, we examine the current state-of-the-art methods in detail through each scheme. Specifically, we provide an in-depth investigation, covering not only canonical semi-supervised, self-supervised, and multi-instance learning schemes, but also recently emerged active and annotation-efficient learning strategies. Moreover, as a comprehensive contribution to the field, this survey not only elucidates the commonalities and unique features of the surveyed methods but also presents a detailed analysis of the current challenges in the field and suggests potential avenues for future research.
翻译:医学影像分析中的标签化高效深度学习:挑战与未来方向
深度学习在最近几年中快速发展,并在广泛应用中取得了最先进的性能。然而,训练模型通常需要昂贵而耗时的收集大量标记数据。在医学影像分析(MIA)范围内,这一点尤为明显,因为数据有限且标记成本高昂。因此,为了充分利用标记数据以及大量的未标记和弱标记数据,开发了标签化高效深度学习方法。在本次调查中,我们广泛调查了300多篇最新论文,以提供标签化学习战略在MIA中最新进展的全面概述。首先,我们介绍了标签化学习的背景,并将方法分类到不同的方案中。接下来,我们通过每个方案详细研究了目前最先进的方法。具体而言,我们进行了深入调查,不仅覆盖了经典的半监督、自监督和多实例学习方案,还介绍了最近出现的主动和标注高效学习策略。此外,作为对该领域的全面贡献,本次调查不仅阐明了调查方法的共性和独特特征,而且对该领域当前的挑战进行了详细分析,并提出了未来研究的潜在方向。