BrainTorrent: A Peer-to-Peer Environment for Decentralized Federated Learning

05/16/2019
by   Abhijit Guha Roy, et al.
0

Access to sufficient annotated data is a common challenge in training deep neural networks on medical images. As annotating data is expensive and time-consuming, it is difficult for an individual medical center to reach large enough sample sizes to build their own, personalized models. As an alternative, data from all centers could be pooled to train a centralized model that everyone can use. However, such a strategy is often infeasible due to the privacy-sensitive nature of medical data. Recently, federated learning (FL) has been introduced to collaboratively learn a shared prediction model across centers without the need for sharing data. In FL, clients are locally training models on site-specific datasets for a few epochs and then sharing their model weights with a central server, which orchestrates the overall training process. Importantly, the sharing of models does not compromise patient privacy. A disadvantage of FL is the dependence on a central server, which requires all clients to agree on one trusted central body, and whose failure would disrupt the training process of all clients. In this paper, we introduce BrainTorrent, a new FL framework without a central server, particularly targeted towards medical applications. BrainTorrent presents a highly dynamic peer-to-peer environment, where all centers directly interact with each other without depending on a central body. We demonstrate the overall effectiveness of FL for the challenging task of whole brain segmentation and observe that the proposed server-less BrainTorrent approach does not only outperform the traditional server-based one but reaches a similar performance to a model trained on pooled data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/26/2023

Correct orchestration of Federated Learning generic algorithms: formalisation and verification in CSP

Federated learning (FL) is a machine learning setting where clients keep...
research
05/22/2023

Federated Learning of Medical Concepts Embedding using BEHRT

Electronic Health Records (EHR) data contains medical records such as di...
research
04/08/2022

Communication-Efficient Cluster Federated Learning in Large-scale Peer-to-Peer Networks

A traditional federated learning (FL) allows clients to collaboratively ...
research
07/01/2022

Better Methods and Theory for Federated Learning: Compression, Client Selection and Heterogeneity

Federated learning (FL) is an emerging machine learning paradigm involvi...
research
01/12/2021

Personalized Federated Deep Learning for Pain Estimation From Face Images

Standard machine learning approaches require centralizing the users' dat...
research
09/01/2022

DecVi: Adaptive Video Conferencing on Open Peer-to-Peer Networks

Video conferencing has become the preferred way of interacting virtually...
research
04/14/2023

Peer-to-Peer Federated Continual Learning for Naturalistic Driving Action Recognition

Naturalistic driving action recognition (NDAR) has proven to be an effec...

Please sign up or login with your details

Forgot password? Click here to reset