Federated Self-Supervised Learning for One-Shot Cross-Modal and Cross-Imaging Technique Segmentation
- URL: http://arxiv.org/abs/2503.23507v1
- Date: Sun, 30 Mar 2025 16:40:12 GMT
- Title: Federated Self-Supervised Learning for One-Shot Cross-Modal and Cross-Imaging Technique Segmentation
- Authors: Siladittya Manna, Suresh Das, Sayantari Ghosh, Saumik Bhattacharya,
- Abstract summary: We explore a federated self-supervised one-shot segmentation task representing a more data-scarce scenario.<n>To the best of our knowledge, this work is the first to attempt a self-supervised few-shot segmentation task in the federated learning domain.
- Score: 3.624865764637671
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Decentralized federated learning enables learning of data representations from multiple sources without compromising the privacy of the clients. In applications like medical image segmentation, where obtaining a large annotated dataset from a single source is a distressing problem, federated self-supervised learning can provide some solace. In this work, we push the limits further by exploring a federated self-supervised one-shot segmentation task representing a more data-scarce scenario. We adopt a pre-existing self-supervised few-shot segmentation framework CoWPro and adapt it to the federated learning scenario. To the best of our knowledge, this work is the first to attempt a self-supervised few-shot segmentation task in the federated learning domain. Moreover, we consider the clients to be constituted of data from different modalities and imaging techniques like MR or CT, which makes the problem even harder. Additionally, we reinforce and improve the baseline CoWPro method using a fused dice loss which shows considerable improvement in performance over the baseline CoWPro. Finally, we evaluate this novel framework on a completely unseen held-out part of the local client dataset. We observe that the proposed framework can achieve performance at par or better than the FedAvg version of the CoWPro framework on the held-out validation dataset.
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