Kumari Pratibha, Chauhan Joohi, Bozorgpour Afshin, Huang Boqiang, Azad Reza, Merhof Dorit
Faculty of Informatics and Data Science, University of Regensburg, Regensburg 93053, Germany.
University of California, Davis, CA 95616, USA; Motilal Nehru National Institute of Technology Allahabad, Prayagraj, 211004, India.
Med Image Anal. 2025 Dec;106:103730. doi: 10.1016/j.media.2025.103730. Epub 2025 Jul 28.
Medical image analysis has witnessed remarkable advancements, even surpassing human-level performance in recent years, driven by the rapid development of advanced deep-learning algorithms. However, when the inference dataset slightly differs from what the model has seen during one-time training, the model performance is greatly compromised. The situation requires restarting the training process using both the old and the new data, which is computationally costly, does not align with the human learning process, and imposes storage constraints and privacy concerns. Alternatively, continual learning has emerged as a crucial approach for developing unified and sustainable deep models to deal with new classes, tasks, and the drifting nature of data in non-stationary environments for various application areas. Continual learning techniques enable models to adapt and accumulate knowledge over time, which is essential for maintaining performance on evolving datasets and novel tasks. Owing to its popularity and promising performance, it is an active and emerging research topic in the medical field and hence demands a survey and taxonomy to clarify the current research landscape of continual learning in medical image analysis. This systematic review paper provides a comprehensive overview of the state-of-the-art in continual learning techniques applied to medical image analysis. We present an extensive survey of existing research, covering topics including catastrophic forgetting, data drifts, stability, and plasticity requirements. Further, an in-depth discussion of key components of a continual learning framework, such as continual learning scenarios, techniques, evaluation schemes, and metrics, is provided. Continual learning techniques encompass various categories, including rehearsal, regularization, architectural, and hybrid strategies. We assess the popularity and applicability of continual learning categories in various medical sub-fields like radiology and histopathology. Our exploration considers unique challenges in the medical domain, including costly data annotation, temporal drift, and the crucial need for benchmarking datasets to ensure consistent model evaluation. The paper also addresses current challenges and looks ahead to potential future research directions.
医学图像分析取得了显著进展,近年来,在先进的深度学习算法快速发展的推动下,甚至超越了人类水平的表现。然而,当推理数据集与模型在一次性训练期间所见过的数据略有不同时,模型性能会受到极大影响。这种情况需要使用旧数据和新数据重新启动训练过程,这在计算上成本高昂,不符合人类学习过程,并且带来存储限制和隐私问题。另外,持续学习已成为开发统一且可持续的深度模型的关键方法,以处理新类别、任务以及非平稳环境中数据的漂移特性,适用于各种应用领域。持续学习技术使模型能够随着时间的推移进行适应和积累知识,这对于在不断演变的数据集和新任务上保持性能至关重要。由于其受欢迎程度和有前景的性能,它是医学领域一个活跃且新兴的研究课题,因此需要一项综述和分类法来阐明医学图像分析中持续学习的当前研究状况。这篇系统综述论文全面概述了应用于医学图像分析的持续学习技术的最新进展。我们对现有研究进行了广泛调查,涵盖了诸如灾难性遗忘、数据漂移、稳定性和可塑性要求等主题。此外,还对持续学习框架的关键组件进行了深入讨论,如持续学习场景、技术、评估方案和指标。持续学习技术包括各种类别,包括排练、正则化、架构和混合策略。我们评估了持续学习类别在放射学和组织病理学等各种医学子领域中的受欢迎程度和适用性。我们的探索考虑了医学领域中的独特挑战,包括昂贵的数据标注、时间漂移以及对基准数据集的迫切需求,以确保一致的模型评估。本文还讨论了当前的挑战,并展望了潜在的未来研究方向。