How does a GPT perform in Forecasting Severe Respiratory Disease Hospitalizations?

Authors

  • Steffen Albrecht The University of Auckland
  • Alex Kim School of Computer Science, University of Auckland
  • João Afonso Madelino School of Computer Science, University of Auckland
  • Katharina Dost Knowledge Technologies, Jožef Stefan Institute
  • Johnny Zhu School of Computer Science, University of Auckland
  • David Broderick Department of Paediatrics Child and Youth Health, University of Auckland
  • Nooriyan Poonawala-Lohani School of Computer Science, University of Auckland
  • Sarah Jamison Starship Children’s Emergency Department, Health New Zealand Te Toka Tumai Auckland
  • Damayanthi Rasanathan Starship Children’s Emergency Department, Health New Zealand Te Toka Tumai Auckland
  • Alicia Stanley Department of Paediatrics Child and Youth Health, University of Auckland
  • Shirley Lawrence Kidz First Children’s Hospital, Health New Zealand Counties Manukau
  • Samantha Marsh General Practice and Primary Healthcare, University of Auckland
  • Lorraine Castelino Immunisation Advisory Centre, University of Auckland
  • Adrian Trenholme Kidz First Children’s Hospital, Health New Zealand Counties Manukau
  • Nikki Turner General Practice and Primary Healthcare, University of Auckland
  • Peter McIntyre Department of Women's and Children's Health, University of Otago
  • Janine Paynter General Practice and Primary Healthcare, University of Auckland
  • Patricia Riddle School of Computer Science, University of Auckland
  • Cameron Grant Department of Paediatrics Child and Youth Health, University of Auckland
  • Jörg Simon Wicker School of Computer Science, University of Auckland
  • Gillian Dobbie School of Computer Science, University of Auckland

Keywords:

Health technology, Time series analysis

Abstract

Forecasting surges in hospital admissions caused by severe respiratory infections is of crucial importance during the winter season to enable proactive hospital management and timely decision-making to prevent healthcare system overload. As time series derived from hospital surveillance systems for these severe cases are sparse and encode weak seasonality patterns, machine learning is key to computing accurate forecasts. The most recent algorithmic advance in time series forecasting is the adaptation of generative pre-trained transformers (GPTs). Those models, pre-trained on large datasets, have the potential to transfer knowledge to smaller datasets, such as hospital surveillance data, for very specific and well-defined case definitions. We demonstrate that despite this great potential for such practical applications, one of the largest first-generation GPTs is not able to provide accurate forecasts and is outperformed by simple linear models and even naïve forecasts.

DOI: https://doi.org/10.24135/ICONIP1

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Published

2025-03-17