医学影像基础模型:进展、挑战与临床转化

Medical Imaging Foundation Models:Advances, Challenges, and Clinical Translation

  • 摘要: 医学影像基础模型作为医学影像智能分析的重要发展方向,正推动该领域由面向单一任务的专用建模逐步转向以大规模预训练和通用表征学习为基础的新范式。此类模型在多模态信息整合、跨任务迁移、多场景适配和生成式交互等方面展现出较大潜力。然而,目前多数研究主要基于基准数据集、回顾性队列或受控实验条件,尚存在数据代表性不足、任务设置偏离真实工作流、泛化与稳健性验证不充分、伦理监管和责任边界不清等问题。本文梳理医学影像基础模型的研究背景、关键技术和应用进展,并进一步讨论数据治理、临床工作流嵌入和伦理监管等现实挑战,以期为相关研究与临床转化提供参考。

     

    Abstract: Medical imaging foundation models, as an important direction in the intelligent analysis of medical images, are driving a paradigm shift in this field-from task-specific modeling for individual tasks toward a new paradigm grounded in large-scale pre-training and general-purpose representation learning. These models have demonstrated considerable potential in multimodal information integration, cross-task transfer, multi-scenario adaptation, and generative interaction. However, most current studies remain based on benchmark datasets, retrospective cohorts, or controlled experimental conditions, and still face challenges such as insufficient data representativeness, task settings that deviate from real-world clinical workflows, inadequate validation of generalizability and robustness, and ambiguous boundaries of ethical oversight and accountability. This article reviews the research background, key technologies, and application progress of medical imaging foundation models, and further discusses practical challenges including data governance, workflow integration, and ethical regulation, with the aim of providing reference for related research and clinical translation.

     

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