Federated Learning in Multi-Center Critical Care Research: A Systematic
Case Study using the eICU Database
- URL: http://arxiv.org/abs/2204.09328v1
- Date: Wed, 20 Apr 2022 09:03:09 GMT
- Title: Federated Learning in Multi-Center Critical Care Research: A Systematic
Case Study using the eICU Database
- Authors: Arash Mehrjou, Ashkan Soleymani, Annika Buchholz, J\"urgen Hetzel,
Patrick Schwab, Stefan Bauer
- Abstract summary: Federated learning (FL) has been proposed as a method to train a model on different units without exchanging data.
We investigate the effectiveness of FL on the publicly available eICU dataset for predicting the survival of each ICU stay.
- Score: 24.31499341763427
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Federated learning (FL) has been proposed as a method to train a model on
different units without exchanging data. This offers great opportunities in the
healthcare sector, where large datasets are available but cannot be shared to
ensure patient privacy. We systematically investigate the effectiveness of FL
on the publicly available eICU dataset for predicting the survival of each ICU
stay. We employ Federated Averaging as the main practical algorithm for FL and
show how its performance changes by altering three key hyper-parameters, taking
into account that clients can significantly vary in size. We find that in many
settings, a large number of local training epochs improves the performance
while at the same time reducing communication costs. Furthermore, we outline in
which settings it is possible to have only a low number of hospitals
participating in each federated update round. When many hospitals with low
patient counts are involved, the effect of overfitting can be avoided by
decreasing the batchsize. This study thus contributes toward identifying
suitable settings for running distributed algorithms such as FL on clinical
datasets.
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