Privacy-Preserving in Medical Image Analysis: A Review of Methods and Applications
Journal:
arXiv
Published Date:
Dec 5, 2024
Abstract
With the rapid advancement of artificial intelligence and deep learning,
medical image analysis has become a critical tool in modern healthcare,
significantly improving diagnostic accuracy and efficiency. However, AI-based
methods also raise serious privacy concerns, as medical images often contain
highly sensitive patient information. This review offers a comprehensive
overview of privacy-preserving techniques in medical image analysis, including
encryption, differential privacy, homomorphic encryption, federated learning,
and generative adversarial networks. We explore the application of these
techniques across various medical image analysis tasks, such as diagnosis,
pathology, and telemedicine. Notably, we organizes the review based on specific
challenges and their corresponding solutions in different medical image
analysis applications, so that technical applications are directly aligned with
practical issues, addressing gaps in the current research landscape.
Additionally, we discuss emerging trends, such as zero-knowledge proofs and
secure multi-party computation, offering insights for future research. This
review serves as a valuable resource for researchers and practitioners and can
help advance privacy-preserving in medical image analysis.