Privacy-Preserving Collaborative Medical Image Segmentation Using Latent Transform Networks
Saheed Ademola Bello, Muhammad Shahid Jabbar, Muhammad Sohail Ibrahim, Shujaat Khan

TL;DR
This paper presents PPCMI-SF, a novel privacy-preserving framework for collaborative medical image segmentation that maintains high accuracy and robustness against attacks, enabling multi-institutional cooperation without data sharing.
Contribution
It introduces a new latent transform-based approach combining autoencoders and multi-scale translation for secure, accurate segmentation across heterogeneous datasets.
Findings
Achieves high Dice scores across four diverse datasets.
Demonstrates strong resistance to inversion and membership inference attacks.
Maintains real-time inference with low communication overhead.
Abstract
Collaborative training across multiple institutions is becoming essential for building reliable medical image segmentation models. However, privacy regulations, data silos, and uneven data availability prevent hospitals from sharing raw scans or annotations, limiting the ability to train generalizable models. Latent-space collaboration frameworks such as privacy-segmentation framework (SF) offer a promising alternative, but such methods still face challenges in segmentation accuracy and vulnerability to latent inversion and membership-inference attacks. This work introduces a privacy-preserving collaborative medical image segmentation framework (PPCMI-SF) designed for heterogeneous medical datasets. The approach combines skip-connected autoencoders for images and masks with a keyed latent transform that applies client-specific orthogonal mixing and permutation to protect latent features…
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Taxonomy
TopicsAdvanced Neural Network Applications · Adversarial Robustness in Machine Learning · Privacy-Preserving Technologies in Data
