Prediction of the onset of cardiovascular diseases from electronic
health records using multi-task gated recurrent units
- URL: http://arxiv.org/abs/2007.08491v1
- Date: Thu, 16 Jul 2020 17:43:13 GMT
- Title: Prediction of the onset of cardiovascular diseases from electronic
health records using multi-task gated recurrent units
- Authors: Fernando Andreotti, Frank S. Heldt, Basel Abu-Jamous, Ming Li, Avelino
Javer, Oliver Carr, Stojan Jovanovic, Nadezda Lipunova, Benjamin Irving,
Rabia T. Khan, Robert D\"urichen
- Abstract summary: We propose a multi-task recurrent neural network with attention mechanism for predicting cardiovascular events from electronic health records.
The proposed approach is compared to a standard clinical risk predictor (QRISK) and machine learning alternatives using 5-year data from a NHS Foundation Trust.
- Score: 51.14334174570822
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this work, we propose a multi-task recurrent neural network with attention
mechanism for predicting cardiovascular events from electronic health records
(EHRs) at different time horizons. The proposed approach is compared to a
standard clinical risk predictor (QRISK) and machine learning alternatives
using 5-year data from a NHS Foundation Trust. The proposed model outperforms
standard clinical risk scores in predicting stroke (AUC=0.85) and myocardial
infarction (AUC=0.89), considering the largest time horizon. Benefit of using
an \gls{mt} setting becomes visible for very short time horizons, which results
in an AUC increase between 2-6%. Further, we explored the importance of
individual features and attention weights in predicting cardiovascular events.
Our results indicate that the recurrent neural network approach benefits from
the hospital longitudinal information and demonstrates how machine learning
techniques can be applied to secondary care.
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