David Menon

h-index6
2papers

2 Papers

IVJun 17, 2024Code
Feasibility of Federated Learning from Client Databases with Different Brain Diseases and MRI Modalities

Felix Wagner, Wentian Xu, Pramit Saha et al.

Segmentation models for brain lesions in MRI are typically developed for a specific disease and trained on data with a predefined set of MRI modalities. Such models cannot segment the disease using data with a different set of MRI modalities, nor can they segment other types of diseases. Moreover, this training paradigm prevents a model from using the advantages of learning from heterogeneous databases that may contain scans and segmentation labels for different brain pathologies and diverse sets of MRI modalities. Additionally, the confidentiality of patient data often prevents central data aggregation, necessitating a decentralized approach. Is it feasible to use Federated Learning (FL) to train a single model on client databases that contain scans and labels of different brain pathologies and diverse sets of MRI modalities? We demonstrate promising results by combining appropriate, simple, and practical modifications to the model and training strategy: Designing a model with input channels that cover the whole set of modalities available across clients, training with random modality drop, and exploring the effects of feature normalization methods. Evaluation on 7 brain MRI databases with 5 different diseases shows that this FL framework can train a single model achieving very promising results in segmenting all disease types seen during training. Importantly, it can segment these diseases in new databases that contain sets of modalities different from those in training clients. These results demonstrate, for the first time, the feasibility and effectiveness of using FL to train a single 3D segmentation model on decentralised data with diverse brain diseases and MRI modalities, a necessary step towards leveraging heterogeneous real-world databases. Code: https://github.com/FelixWag/FedUniBrain

CVMar 9, 2025
Continuous Online Adaptation Driven by User Interaction for Medical Image Segmentation

Wentian Xu, Ziyun Liang, Harry Anthony et al.

Interactive segmentation models use real-time user interactions, such as mouse clicks, as extra inputs to dynamically refine the model predictions. After model deployment, user corrections of model predictions could be used to adapt the model to the post-deployment data distribution, countering distribution-shift and enhancing reliability. Motivated by this, we introduce an online adaptation framework that enables an interactive segmentation model to continuously learn from user interaction and improve its performance on new data distributions, as it processes a sequence of test images. We introduce the Gaussian Point Loss function to train the model how to leverage user clicks, along with a two-stage online optimization method that adapts the model using the corrected predictions generated via user interactions. We demonstrate that this simple and therefore practical approach is very effective. Experiments on 5 fundus and 4 brain MRI databases demonstrate that our method outperforms existing approaches under various data distribution shifts, including segmentation of image modalities and pathologies not seen during training.