Modular Clinical Decision Support Networks (MoDN) -- Updatable,
Interpretable, and Portable Predictions for Evolving Clinical Environments
- URL: http://arxiv.org/abs/2211.06637v1
- Date: Sat, 12 Nov 2022 11:10:46 GMT
- Title: Modular Clinical Decision Support Networks (MoDN) -- Updatable,
Interpretable, and Portable Predictions for Evolving Clinical Environments
- Authors: C\'ecile Trottet, Thijs Vogels, Martin Jaggi, Mary-Anne Hartley
- Abstract summary: We propose Modular Clinical Decision Support Networks (MoDN)
MoDN allows flexible, privacy-preserving learning across IIO datasets.
It creates dynamic personalised representations of patients, and can make multiple predictions of diagnoses.
- Score: 46.434488407226155
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Data-driven Clinical Decision Support Systems (CDSS) have the potential to
improve and standardise care with personalised probabilistic guidance. However,
the size of data required necessitates collaborative learning from analogous
CDSS's, which are often unsharable or imperfectly interoperable (IIO), meaning
their feature sets are not perfectly overlapping. We propose Modular Clinical
Decision Support Networks (MoDN) which allow flexible, privacy-preserving
learning across IIO datasets, while providing interpretable, continuous
predictive feedback to the clinician.
MoDN is a novel decision tree composed of feature-specific neural network
modules. It creates dynamic personalised representations of patients, and can
make multiple predictions of diagnoses, updatable at each step of a
consultation. The modular design allows it to compartmentalise training updates
to specific features and collaboratively learn between IIO datasets without
sharing any data.
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