PERSONALIZED FEDERATED LEARNING FOR IN-HOSPITAL
Keywords:
federated learning (FL), Nevertheless, non-identically distributed, multi-center intensive careAbstract
When dealing with privately dispersed data, such as in healthcare settings where
numerous independently owned institutions are present, federated learning (FL) offers
a potential answer. Nevertheless, institutions may be discouraged from engaging in
training and FL's performance may be negatively affected due to the data's intrinsic
imbalance and non-IID (non-identically distributed) characteristics. Keeping the
original non-IID and imbalanced distribution, this research examines these difficulties
using real-world multi-center intensive care unit electronic health record data. In order
to address these concerns, the research first investigates why baseline FL does not
perform well in these settings. Then, it introduces a personalised FL (PFL) method
named POLA. POLA is a two-step FL approach that is customised for each
participant and is aimed to generate high-performance personalised models. Testing
POLA in comparison to two other PFL approaches shows that it can improve
prediction accuracy and decrease communication rounds. It also shows promise for
use in comparable cross-silo FL settings. Due to its scalability and adaptability, it
might find use in many other fields outside healthcare.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.













