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Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Overcrowding in emergency department (ED) causes lengthy waiting times, reduces adequate emergency care and increases rate of mortality. Accurate prediction of daily ED visits and allocating resources in advance is one of the solutions to ED overcrowding problem. In this paper, a deep stacked architecture is being proposed and applied to the daily ED visits prediction problem with deep components such as Long Short Term Memory (LSTM), Gated Recurrent Units (GRU) and simple Recurrent Neural Network (RNN). The proposed architecture achieves very high mean accuracy level (94.28–94.59%) in daily ED visits predictions. We have also compared the performance of this architecture with non-stacked deep models and traditional prediction models. The results indicate that deep stacked models outperform (4–7%) the traditional prediction models and other non-stacked deep learning models (1–2%) in our prediction tasks. The application of deep neural network in ED visits prediction is novel as this is one of the first studies to apply a deep stacked architecture in this field. Importantly, our models have achieved better prediction accuracy (in one case comparable) than the state-of-the-art in the literature.
Twórcy
autor
  • Science, Mathematics and Technology Cluster, Singapore University of Technology and Design, Singapore
  • Science, Mathematics and Technology Cluster, Singapore University of Technology and Design, Singapore
  • Pre-hospital & Emergency Research Centre, Duke-National University of Singapore Medical School, Singapore
  • Department of Emergency Medicine, Singapore General Hospital, Singapore
autor
  • Health Services and Systems Research, Duke-NUS Medical School, Singapore
  • Department of Emergency Medicine, Singapore General Hospital, Singapore
  • Health Services and Systems Research, Duke-NUS Medical School, Singapore
  • Science, Mathematics and Technology Cluster, Singapore University of Technology and Design, 8 Somapah Road, 487372, Singapore
Bibliografia
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Typ dokumentu
Bibliografia
Identyfikator YADDA
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