FeTTL: Federated Template and Task Learning for Multi-Institutional Medical Imaging
- URL: http://arxiv.org/abs/2601.16302v1
- Date: Thu, 22 Jan 2026 20:14:45 GMT
- Title: FeTTL: Federated Template and Task Learning for Multi-Institutional Medical Imaging
- Authors: Abhijeet Parida, Antonia Alomar, Zhifan Jiang, Pooneh Roshanitabrizi, Austin Tapp, Ziyue Xu, Syed Muhammad Anwar, Maria J. Ledesma-Carbayo, Holger R. Roth, Marius George Linguraru,
- Abstract summary: Federated Template and Task Learning (FeTTL) is a novel framework designed to harmonize medical imaging data in federated environments.<n>FeTTL learns a global template together with a task model to align data distributions among clients.<n> Experimental results show that FeTTL significantly outperforms the state-of-the-art federated learning baselines.
- Score: 6.7271593695799625
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Federated learning enables collaborative model training across geographically distributed medical centers while preserving data privacy. However, domain shifts and heterogeneity in data often lead to a degradation in model performance. Medical imaging applications are particularly affected by variations in acquisition protocols, scanner types, and patient populations. To address these issues, we introduce Federated Template and Task Learning (FeTTL), a novel framework designed to harmonize multi-institutional medical imaging data in federated environments. FeTTL learns a global template together with a task model to align data distributions among clients. We evaluated FeTTL on two challenging and diverse multi-institutional medical imaging tasks: retinal fundus optical disc segmentation and histopathological metastasis classification. Experimental results show that FeTTL significantly outperforms the state-of-the-art federated learning baselines (p-values <0.002) for optical disc segmentation and classification of metastases from multi-institutional data. Our experiments further highlight the importance of jointly learning the template and the task. These findings suggest that FeTTL offers a principled and extensible solution for mitigating distribution shifts in federated learning, supporting robust model deployment in real-world, multi-institutional environments.
Related papers
- A Federated and Parameter-Efficient Framework for Large Language Model Training in Medicine [59.78991974851707]
Large language models (LLMs) have demonstrated strong performance on medical benchmarks, including question answering and diagnosis.<n>Most medical LLMs are trained on data from a single institution, which faces limitations in generalizability and safety in heterogeneous systems.<n>We introduce the model-agnostic and parameter-efficient federated learning framework for adapting LLMs to medical applications.
arXiv Detail & Related papers (2026-01-29T18:48:21Z) - Multi-Modal One-Shot Federated Ensemble Learning for Medical Data with Vision Large Language Model [27.299068494473016]
We introduce FedMME, an innovative one-shot multi-modal federated ensemble learning framework.<n>FedMME capitalizes on vision large language models to produce textual reports from medical images.<n>It surpasses existing one-shot federated learning approaches by more than 17.5% in accuracy on the RSNA dataset.
arXiv Detail & Related papers (2025-01-06T08:36:28Z) - FACMIC: Federated Adaptative CLIP Model for Medical Image Classification [12.166024140377337]
We introduce a federated adaptive Contrastive Language Image Pretraining CLIP model for classification tasks.
We employ a light-weight and efficient feature attention module for CLIP that selects suitable features for each client's data.
We propose a domain adaptation technique to reduce differences in data distribution between clients.
arXiv Detail & Related papers (2024-10-08T13:24:10Z) - UNICORN: A Deep Learning Model for Integrating Multi-Stain Data in Histopathology [2.9389205138207277]
UNICORN is a multi-modal transformer capable of processing multi-stain histopathology for atherosclerosis severity class prediction.
The architecture comprises a two-stage, end-to-end trainable model with specialized modules utilizing transformer self-attention blocks.
UNICORN achieved a classification accuracy of 0.67, outperforming other state-of-the-art models.
arXiv Detail & Related papers (2024-09-26T12:13:52Z) - PMT: Progressive Mean Teacher via Exploring Temporal Consistency for Semi-Supervised Medical Image Segmentation [51.509573838103854]
We propose a semi-supervised learning framework, termed Progressive Mean Teachers (PMT), for medical image segmentation.
Our PMT generates high-fidelity pseudo labels by learning robust and diverse features in the training process.
Experimental results on two datasets with different modalities, i.e., CT and MRI, demonstrate that our method outperforms the state-of-the-art medical image segmentation approaches.
arXiv Detail & Related papers (2024-09-08T15:02:25Z) - Multi-Modal Federated Learning for Cancer Staging over Non-IID Datasets with Unbalanced Modalities [9.476402318365446]
In this work, we introduce a novel FL architecture designed to accommodate not only the heterogeneity of data samples, but also the inherent heterogeneity/non-uniformity of data modalities across institutions.
We propose a solution by devising a distributed gradient blending and proximity-aware client weighting strategy tailored for multi-modal FL.
arXiv Detail & Related papers (2024-01-07T23:45:01Z) - Improving Multiple Sclerosis Lesion Segmentation Across Clinical Sites:
A Federated Learning Approach with Noise-Resilient Training [75.40980802817349]
Deep learning models have shown promise for automatically segmenting MS lesions, but the scarcity of accurately annotated data hinders progress in this area.
We introduce a Decoupled Hard Label Correction (DHLC) strategy that considers the imbalanced distribution and fuzzy boundaries of MS lesions.
We also introduce a Centrally Enhanced Label Correction (CELC) strategy, which leverages the aggregated central model as a correction teacher for all sites.
arXiv Detail & Related papers (2023-08-31T00:36:10Z) - Understanding the Tricks of Deep Learning in Medical Image Segmentation:
Challenges and Future Directions [66.40971096248946]
In this paper, we collect a series of MedISeg tricks for different model implementation phases.
We experimentally explore the effectiveness of these tricks on consistent baselines.
We also open-sourced a strong MedISeg repository, where each component has the advantage of plug-and-play.
arXiv Detail & Related papers (2022-09-21T12:30:05Z) - FedDG: Federated Domain Generalization on Medical Image Segmentation via
Episodic Learning in Continuous Frequency Space [63.43592895652803]
Federated learning allows distributed medical institutions to collaboratively learn a shared prediction model with privacy protection.
While at clinical deployment, the models trained in federated learning can still suffer from performance drop when applied to completely unseen hospitals outside the federation.
We present a novel approach, named as Episodic Learning in Continuous Frequency Space (ELCFS), for this problem.
The effectiveness of our method is demonstrated with superior performance over state-of-the-arts and in-depth ablation experiments on two medical image segmentation tasks.
arXiv Detail & Related papers (2021-03-10T13:05:23Z) - MS-Net: Multi-Site Network for Improving Prostate Segmentation with
Heterogeneous MRI Data [75.73881040581767]
We propose a novel multi-site network (MS-Net) for improving prostate segmentation by learning robust representations.
Our MS-Net improves the performance across all datasets consistently, and outperforms state-of-the-art methods for multi-site learning.
arXiv Detail & Related papers (2020-02-09T14:11:50Z) - Multi-site fMRI Analysis Using Privacy-preserving Federated Learning and
Domain Adaptation: ABIDE Results [13.615292855384729]
To train a high-quality deep learning model, the aggregation of a significant amount of patient information is required.
Due to the need to protect the privacy of patient data, it is hard to assemble a central database from multiple institutions.
Federated learning allows for population-level models to be trained without centralizing entities' data.
arXiv Detail & Related papers (2020-01-16T04:49:33Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.