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Analyzing and Forecasting Pediatric Fever Clinic Visits in High Frequency Using Ensemble Time-Series Methods After the COVID-19 Pandemic in Hangzhou, China: Retrospective Study.

Wang ZhangZhu ZhuYonggen ZhaoZheming LiLingdong ChenJian HuangJing LiGang Yu
Published in: JMIR medical informatics (2023)
Although forecast accuracy tends to decline with an increasing forecast horizon, the hybrid NNAR-STLF model is applicable for short-, medium-, and long-term forecasts owing to its ability to fit multiseasonality (captured by the STLF component) and nonlinearity (captured by the NNAR component). The model identified in this study is also applicable to hospitals in other regions with similar epidemic outpatient configurations or forecasting tasks whose data conform to long-sequence time series in high frequency exhibiting multiseasonal and nonlinear patterns. However, as external variables and disruptive events were not accounted for, the model performance declined slightly following changes in the COVID-19 containment policy in China. Future work may seek to improve accuracy by incorporating external variables that characterize moving events or other factors as well as by adding data from different organizations to enhance algorithm generalization.
Keyphrases
  • high frequency
  • transcranial magnetic stimulation
  • healthcare
  • coronavirus disease
  • electronic health record
  • primary care
  • sars cov
  • big data
  • working memory
  • deep learning
  • young adults