Multimodal Learning 相关度: 9/10

Causal Transfer in Medical Image Analysis

Mohammed M. Abdelsamea, Daniel Tweneboah Anyimadu, Tasneem Selim, Saif Alzubi, Lei Zhang, Ahmed Karam Eldaly, Xujiong Ye
arXiv: 2603.24388v1 发布: 2026-03-25 更新: 2026-03-25

AI 摘要

综述医学图像分析中因果迁移学习方法,提升模型跨域泛化性和鲁棒性。

主要贡献

  • 提出了医学图像分析中的因果迁移学习(CTL)范式
  • 构建了连接因果框架和迁移机制的统一分类体系
  • 总结了相关数据集、基准和实验结果,并分析了CTL的优势

方法论

结合因果推理与跨域表征学习,利用结构因果模型、不变风险最小化和反事实推理,增强模型的泛化能力。

原文摘要

Medical imaging models frequently fail when deployed across hospitals, scanners, populations, or imaging protocols due to domain shift, limiting their clinical reliability. While transfer learning and domain adaptation address such shifts statistically, they often rely on spurious correlations that break under changing conditions. On the other hand, causal inference provides a principled way to identify invariant mechanisms that remain stable across environments. This survey introduces and systematises Causal Transfer Learning (CTL) for medical image analysis. This paradigm integrates causal reasoning with cross-domain representation learning to enable robust and generalisable clinical AI. We frame domain shift as a causal problem and analyse how structural causal models, invariant risk minimisation, and counterfactual reasoning can be embedded within transfer learning pipelines. We studied spanning classification, segmentation, reconstruction, anomaly detection, and multimodal imaging, and organised them by task, shift type, and causal assumption. A unified taxonomy is proposed that connects causal frameworks and transfer mechanisms. We further summarise datasets, benchmarks, and empirical gains, highlighting when and why causal transfer outperforms correlation-based domain adaptation. Finally, we discuss how CTL supports fairness, robustness, and trustworthy deployment in multi-institutional and federated settings, and outline open challenges and research directions for clinically reliable medical imaging AI.

标签

因果推断 迁移学习 医学图像分析

arXiv 分类

cs.CV