A Temporal Fusion Transformer for Long-term Explainable Prediction of
Emergency Department Overcrowding
- URL: http://arxiv.org/abs/2207.00610v3
- Date: Tue, 22 Nov 2022 16:34:52 GMT
- Title: A Temporal Fusion Transformer for Long-term Explainable Prediction of
Emergency Department Overcrowding
- Authors: Francisco M. Caldas and Cl\'audia Soares
- Abstract summary: Emergency Departments (EDs) are a fundamental element of the Portuguese National Health Service.
Forecasting the number of patients using the services is particularly challenging.
This paper describes a novel deep learning architecture, the Temporal Fusion Transformer.
We have concluded that patient volume can be forecasted with a Mean Absolute Percentage Error (MAPE) of 5.90% for Portugal's Health Regional Areas (HRA) and a Root Mean Squared Error (RMSE) of 84.4102 people/day.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Emergency Departments (EDs) are a fundamental element of the Portuguese
National Health Service, serving as an entry point for users with diverse and
very serious medical problems. Due to the inherent characteristics of the ED;
forecasting the number of patients using the services is particularly
challenging. And a mismatch between the affluence and the number of medical
professionals can lead to a decrease in the quality of the services provided
and create problems that have repercussions for the entire hospital, with the
requisition of health care workers from other departments and the postponement
of surgeries. ED overcrowding is driven, in part, by non-urgent patients, that
resort to emergency services despite not having a medical emergency and which
represent almost half of the total number of daily patients. This paper
describes a novel deep learning architecture, the Temporal Fusion Transformer,
that uses calendar and time-series covariates to forecast prediction intervals
and point predictions for a 4 week period. We have concluded that patient
volume can be forecasted with a Mean Absolute Percentage Error (MAPE) of 5.90%
for Portugal's Health Regional Areas (HRA) and a Root Mean Squared Error (RMSE)
of 84.4102 people/day. The paper shows empirical evidence supporting the use of
a multivariate approach with static and time-series covariates while surpassing
other models commonly found in the literature.
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