| Literature DB >> 27449080 |
Matthew Biggerstaff1, David Alper2, Mark Dredze3, Spencer Fox4, Isaac Chun-Hai Fung5, Kyle S Hickmann6,7, Bryan Lewis8, Roni Rosenfeld9, Jeffrey Shaman10, Ming-Hsiang Tsou11, Paola Velardi12, Alessandro Vespignani13, Lyn Finelli14.
Abstract
BACKGROUND: Early insights into the timing of the start, peak, and intensity of the influenza season could be useful in planning influenza prevention and control activities. To encourage development and innovation in influenza forecasting, the Centers for Disease Control and Prevention (CDC) organized a challenge to predict the 2013-14 Unites States influenza season.Entities:
Keywords: Forecasting; Influenza; Modeling; Prediction
Mesh:
Year: 2016 PMID: 27449080 PMCID: PMC4957319 DOI: 10.1186/s12879-016-1669-x
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Characteristics of nine teams that competed in the Predict the 2013–14 Influenza Season Challenge
| Team | Digital Data source | Model type | Regional forecasta | Brief descriptiond |
|---|---|---|---|---|
| A | Wikipedia | mechanisticb | Yes | Susceptible-Exposed-Infected-Recovered (SEIR) model using data assimilation to probabilistically fit models to ILINet data |
| B | mechanistic | Yes | SEIR model initialized with current Twitter and ILINet data | |
| C | Google Flu Trends; Twitter | statisticalc | Yes | Utilized method of analogues, Kalman filtering, Poisson regression, and an ensemble method averaging the results of the three models to forecast ILINet |
| D | Google Flu Trends | statistical | Yes | Utilized empirical Bayes model and a spatio-temporal likelihood function |
| E | Google Flu Trends; Twitter | statistical | Yes | Utilized multiplicative time series model |
| F | Google Flu Trends | mechanistic | Yes | Susceptible-infected-recovered-susceptible (SIRS) model initialized with Google Flu Trends data and data assimilation methods |
| G | statistical | No | Extrapolation of filtered Twitter data | |
| H | Google Flu Trends; HealthMap; Twitter | mechanistic | Yes | Statistical models used to make short term forecasts and agent based models combined with mean field models with non-linear optimization techniques used to output long term forecasts. |
| I | statistical | Yes | Utilized time series model and method of analogues |
aYes denotes forecast for ≥1 region (for all weeks)
bIncludes models that incorporate compartmental modeling like Susceptible-Exposed-Infected-Recovered [SEIR] models
cIncludes models like time series analysis and generalized linear models
dAdditional information on methodology and results for select teams available in references [34–38]
Forecasting targets for the 2013–2014 influenza season as calculated from the U.S. Outpatient Influenza-like Illness Surveillance Network (ILINet), United States
| Start weeka | Peak weeka | Peak percentage | Duration of influenza season | |
|---|---|---|---|---|
| United States | 48 | 52 | 4.6 | 14 |
Legend: The start of the season was defined as the first surveillance week in ILINet where the number of visits for ILI divided by the total number of patient visits (the ILINet percentage) was above the national baseline value of 2.0 % and remained there for at least two additional weeks. The peak week of the season was defined as the surveillance week that the ILINet percentage was the highest during the 2013–14 influenza season. The ILINet percent peak was defined as the highest numeric value that the ILINet percentage reached in the United States during the 2013–14 influenza season. The duration was defined as the number of weeks that the ILINet percentage remained above the national baseline.
aWeeks are given in Morbidity and Mortality Weekly Report surveillance weeks. For calendar start and end dates of each week, please see http://wwwn.cdc.gov/nndss/script/downloads.aspx
Median forecasted start week, peak week, peak percentage, and duration of the 2013–14 influenza season, by forecast date, United States (n = 13)
| Date of forecast (Week of ILINet data availabilitya,b) | Median forecasted start weekb | Median forecasted peak weekb | Median forecasted peak percentage | Median forecasted duration of influenza season |
|---|---|---|---|---|
| 12/2/2013 (WK. 46) | 50 | 5 | 3.5 | 13 |
| 12/19/2013 (WK. 49) | 49 | 3 | 4.5 | 14 |
| 1/2/2014 (WK. 51) | 48 | 3 | 4.5 | 15 |
| 1/16/2014 (WK.1) | 48 | 2 | 4.9 | 14 |
| 1/30/2014 (WK. 3) | 48 | 52 | 4.6 | 14 |
| 2/13/2014 (WK. 5) | 48 | 52 | 4.6 | 13 |
| 2/27/2014 (WK. 7) | 48 | 52 | 4.6 | 13 |
| 3/13/2014 (WK. 9) | 48 | 52 | 4.6 | 14 |
| 3/27/2014 (WK. 11) | 48 | 52 | 4.6 | 14 |
Legend: Forecasts presented here are from the 9 teams that successfully completed the CDC Predict the 2013–2014 Influenza Season Challenge
aILINet data are based on a reporting week that starts on Sunday and ends on Saturday of each week, and data are reported out through the FluView surveillance report the following Friday. Therefore, the most current ILINet data can lag the calendar date by 1–2 weeks
bWeeks are given in Morbidity and Mortality Weekly Report surveillance weeks. For calendar start and end dates of each week, please see http://wwwn.cdc.gov/nndss/script/downloads.aspx
Fig. 1Forecasted start week of the 2013–2014 influenza season, by forecast date, United States (n = 13). Forecasts presented here are from teams that successfully completed the CDC Predict the 2013–2014 Influenza Season Challenge. The start of the season was defined as the first surveillance week in ILINet where the number of visits for ILI divided by the total number of patient visits (the ILINet percentage) was above the national baseline value of 2.0 % and remained there for at least two additional weeks
Fig. 2Forecasted peak week of the 2013–2014 influenza season, by forecast date, United States (n = 13). Forecasts presented here are from teams that successfully completed the CDC Predict the 2013–2014 Influenza Season Challenge. The peak week of the season was defined as the surveillance week that the ILINet percentage was the highest during the 2013–14 influenza season
Fig. 3Forecasted peak ILINet percent of the 2013–2014 influenza season, by forecast date, United States (n = 13). Forecasts presented here are from teams that successfully completed the CDC Predict the 2013–2014 Influenza Season Challenge. The ILINet percent peak was defined as the highest numeric value that the ILINet percentage reached in the United States during the 2013–14 influenza season
Fig. 4Forecasted duration of the 2013–2014 influenza season, by forecast date, United States (n = 13). Forecasts presented here are from teams that successfully completed the CDC Predict the 2013–2014 Influenza Season Challenge. The duration was defined as the number of weeks that the ILINet percentage remained above the national baseline
Forecasts within 1 week or percent of the start week, peak week, peak percentage, and duration of the 2013–14 influenza season, by forecast date, United States (n = 13)
| Date of forecast (Week of ILINet data availabilitya,b) | Start week | Peak week | Peak percentage | Duration of influenza season |
|---|---|---|---|---|
| 12/2/2013 (WK. 46) | 3 (23 %) | 1 (8 %) | 3 (23 %) | 4 (31 %) |
| 12/19/2013 (WK. 49) | 6 (46 %) | 2 (15 %) | 6 (46 %) | 6 (46 %) |
| 1/2/2014 (WK. 51) | 12 (92 %)c | 2 (15 %) | 5 (38 %) | 7 (54 %) |
| 1/16/2014 (WK.1) | 12 (92 %) | 6 (46 %) | 10 (77 %) | 6 (46 %) |
| 1/30/2014 (WK. 3) | 11 (85 %) | 11 (85 %) | 11 (85 %) | 6 (46 %) |
| 2/13/2014 (WK. 5) | 11 (85 %) | 10 (77 %) | 12 (92 %) | 6 (46 %) |
| 2/27/2014 (WK. 7) | 11 (85 %) | 11 (85 %) | 13 (100 %) | 5 (38 %) |
| 3/13/2014 (WK. 9) | 11 (85 %) | 11 (85 %) | 13 (100 %) | 9 (69 %) |
| 3/27/2014 (WK. 11) | 10 (77 %) | 12 (92 %) | 13 (100 %) | 10 (77 %) |
Legend: Forecasts presented here are from the 9 teams that successfully completed the CDC Predict the 2013–2014 Influenza Season Challenge. The start of the season was defined as the first surveillance week in ILINet where the number of visits for ILI divided by the total number of patient visits (the ILINet percentage) was above the national baseline value of 2.0 % and remained there for at least two additional weeks. The peak week of the season was defined as the surveillance week that the ILINet percentage was the highest during the 2013–14 influenza season. The ILINet percent peak was defined as the highest numeric value that the ILINet percentage reached in the United States during the 2013–14 influenza season. The duration was defined as the number of weeks that the ILINet percentage remained above the national baseline
aILINet data are based on a reporting week that starts on Sunday and ends on Saturday of each week, and data are reported out through the FluView surveillance report the following Friday. Therefore, the most current ILINet data can lag the calendar date by 1–2 weeks
bWeeks are given in Morbidity and Mortality Weekly Report surveillance weeks. For calendar start and end dates of each week, please see http://wwwn.cdc.gov/nndss/script/downloads.aspx
cLast forecast received before milestone observed in ILINet