Forecasts of Flu Hospital Admissions December 13, 2023
Updated December 15, 2023
Reported and forecasted new influenza hospital admissions as of December 13, 2023.
Interpretation of Forecasts of New Hospital Admissions
- This week’s ensemble predicts that the number of new weekly laboratory confirmed influenza hospital admissions will likely increase nationally, with 5,600 to 18,000 laboratory confirmed influenza hospital admissions likely reported in the week ending December 30, 2023.
- This week, 25 modeling groups contributed 30 forecasts that were eligible for inclusion in the ensemble forecasts for at least one jurisdiction. Contributing teams are listed below.
- Ensemble forecasts combine forecasts from diverse models into one forecast. They have been among the most reliable forecasts in performance for previous influenza and COVID-19 forecasting efforts, but even the ensemble forecasts may not reliably predict rapid changes.
- The figure shows the number of new laboratory confirmed influenza hospital admissions reported in the United States each week from September 1 through December 9 and forecasted new influenza hospital admissions per week for this week and the next 2 weeks, through December 30. Hospitals are required to report daily laboratory-confirmed influenza hospitalizations to HHS Protect. See COVID-19 Guidance for Hospital Reporting and FAQs [680 KB, 52 pages] for additional details on this guidance.
State Forecasts
State-level forecasts show the predicted number of new laboratory confirmed influenza hospital admissions per week for this week and the next 2 weeks by state. Each state forecast figure uses a different scale due to differences in the number of new influenza hospital admissions per week between states and only forecasts included in the ensemble are shown. Plots of the state-level ensemble forecasts and the underlying data can be downloaded below.
Download state forecasts [811 KB, 14 pages]
Download all forecast data [XLS – 404 KB]
Additional forecast data and information about submitting forecasts are available at https://github.com/cdcepi/FluSight-forecast-hub.
Contributing Teams and Models
- California Department of Public Health (CADPH) (Model: FluCAT)
- Carnegie Mellon Delphi Group (Model: CMU-TimeSeries)
- Center for Forecasting and Outbreak Analytics (CFA/CDC); renewal model team (Model: cfa-flu-epidemia-light)
- Center for Forecasting and Outbreak Analytics (CFA/CDC); SEIR model team (Model: flu-mechanistic)
- CEPH Lab at Indiana University (Model: Rtrend_fluH)
- Columbia University (Model: CU-ensemble)
- Fogarty International Center, National Institutes of Health (NIH) (Model: Flu_ARIMA)
- Georgia Institute of Technology (Model: GT-FluFNP)
- Iowa State Niemi Research Lab (Model: Nonlinear ASG Hierarchical)
- Los Alamos National Lab and Northern Arizona University (Model: LosAlamos_NAU-CModel_Flu)
- LU Computational Uncertainty Lab (Model: Chimera)
- MIGHTE (Model: Nsemble)
- MOBS Lab at Northeastern (Model: MOBS-GLEAM_FLUH)
- Northeastern University & University of California San Diego (Model: GLEAM_AI_FLUH)
- Norwegian Institute of Public Health – Fjordhest (Model: fjordhest-ensemble)
- Predictive Science Inc (Model: PSI-PROF)
- Signature Science (Model: SigSci-CREG)
- Signature Science (Model: SigSci-TSENS)
- Srivastava Group (Model: SGroup-RandomForest)
- Stevens Institute of Technology (Model: Gradient Boosting Regressors)
- UNC Infectious Disease Dynamics (Model: InfluPaint)
- University of Georgia Center for the Ecology of Infectious Diseases Forecasting Working Group (Model: Copycat)
- University of Georgia Center for the Ecology of Infectious Diseases Forecasting Working Group (Model: INFLAenza)
- University of Guelph Dynamics Training Lab (Model: Composite Curve)
- University of Guelph Dynamics Training Lab (Model: GRYPHON)
- University of Massachusetts-Amherst (Model: UMass-trends_ensemble)
- University of Massachusetts-Amherst (Model: flusion)
- University of Michigan, Computer Science and Engineering (Model: DeepOutbreak)
- University of Virginia, Biocomplexity Institute (Model: UVAFluX-Ensemble)
- Virginia Tech, Sanghani Center for Artificial Intelligence and Data Analytics (Model: Ensemble Model)