학술논문

Evaluation of individual and ensemble probabilistic forecasts of COVID-19 mortality in the United States
Document Type
Report
Author
Cramer, Estee Y.Ray, Evan L.Lopez, Velma K.Bracher, JohannesBrennen, AndreaRivadeneira, Alvaro J. CastroGerding, AaronGneiting, TilmannHouse, Katie H.Huang, YuxinJayawardena, DasuniKanji, Abdul H.Khandelwal, AyushLe, KhoaMuhlemann, AnjaNiemi, JaradShah, ApurvStark, ArianeWang, YijinWattanachit, NutchaZorn, Martha W.Gu, YouyangJain, SansiddhBannur, NayanaDeva, AyushKulkarni, MihirMerugu, SrujanaRaval, AlpanShingi, SiddhantTiwari, AvtanshWhite, JeromeAbernethy, Neil F.Dahan, WoodyMaytal, SpencerFox, SpencerGaither, KellyLachmann, MichaelMeyers, Lauren AncelScottG. JamesTec, MauricioSrivastava, AjiteshGeorge, Glover E.Cegan, Jeffrey C.Dettwiller, Ian D.England, William P.Farthing, Matthew W.Hunter, Robert H.Lafferty, BrandonLinkov, IgorMayo, Michael L.Parno, Matthew D.Rowland, Michael A.Trump, Benjamin D.Zhang-James, YanliChen, SamuelFaraone, Stephen V.Hess, JonathanMorley, Christopher P.Salekin, AsifWang, DongliangCorsetti, Sabrina M.Baer, Thomas M.Eisenberg, Marisa C.Falb, KarlHuang, YitaoMartin, Emily T.McCauley, EllaMyers, Robert L.Schwarz, TomSheldon, DanielGibson, Graham CaseyYu, RoseGao, LiyaoYian, MaWu, DongxiaYan, XifengJin, XiaoyongWang, Yu-XiangChen, YangQuanGuo, LihongWang, LingxiaoXu, PanZhang, WeitongZou, DifanBiegel, HannahLega, JocelineMcConnell, SteveNagraj, V. P.Guertin, Stephanie L.Hulme-Lowe, ChristopherTurner, Stephen D.Shi, YunfengBan, XuegangWalraven, RobertHong, Qi-JunKong, StanleyWalle, Axel van deTurtle, James A.Ben-Nun, MichalRiley, PeteKoyluoglu, UgurDesRoches, DavidForli, PedroHamory, BruceKyriakides, ChristinaLeis, HelenMilliken, JohnMoloney, MichaelMorgan, JamesNirgudkar, NinadOzcanaaa, GokcePiwonka, NoahRavi, MattSchrader, ChrisShakhnovich, ElizabethSiegel, DanielSpatz, RyanStiefeling, ChrisWilkinson, BarrieWong, AlexanderCavany, SeanEspana, GuidoMoore, SeanOidtman, RachelPerkins, AlexKraus, DavidKraus, AndreaGao, ZhifengBian, JiangCao, WeiFerres, Juan LavistaLi, ChaozhuoLiu, Tie-YanXie, XingZhang, ShunZheng, ShunAlessandroooo, VespignaninnnChinazzi, MatteoDavis, Jessica T.Mu, KunpengPiontti, Ana Pastore y.Xiong, XinyueZheng, AndrewBaek, JackieFarias, VivekGeorgescu, AndreeaLevi, RetsefSinha, DeekshaWilde, JoshuaPerakis, GeorgiaBennouna, Mohammed AmineNze-Ndong, DavidSinghvi, DivyaSpantidakis, IoannisThayaparan, LeannTsiourvasrrr, AsteriosSarker, ArnabJadbabaie, AliShah, DevavratPenna, Nicolas DellaCeli, Leo A.Sundar, SakethWolfinger, RussOsthus, DaveCastro, LaurenFairchild, GeoffreyMichaud, IsaacKarlen, DeanKinsey, MattMullany, Luke C.Rainwater-Lovett, KaitlinShin, LaurenTallaksen, KatharineWilson, ShelbyLee, Elizabeth C.Dent, JuanHill, Alison L.Kaminsky, JoshuaKaminsky, KathrynKeegan, Lindsay T.Lauer, Stephen A.Lemaitre, Joseph C.Lessler, JustinMeredith, Hannah R.Perez-Saez, JavierShah, SamSmith, Claire P.Truelove, Shaun A.Wills, JoshMarshall, MaximilianGardner, LaurenNixon, KristenBurant, John C.Wang, LilyGao, LeiGu, ZhilingKim, MyungjinLi, XinyiWang, GuannanWang, YueyingYu, ShanReiner, Robert C.Barber, RyanGakidou, EmmanuelaHay, Simon I.Lim, SteveMurray, ChrisPigott, DavidGurung, Heidi L.Baccam, PrasithStage, Steven A.Suchoski, Bradley T.Prakash, B. AdityaAdhikari, BijayaCui, JiamingRodriguez, AlexanderTabassum, AnikaXie, JiajiaKeskinocak, PinarAsplund, JohnBaxter, ArdenOruc, Buse EylulSerban, NicoletaArik, Sercan O.Dusenberry, MikeEpshteyn, ArkadyKanal, ElliLe, Long T.Li, Chun-LiangPfister, TomasSava, DarioSinha, RajarishiTsai, ThomasYoder, NateYoon, JinsungZhang, LeyouAbbott, SamBosse, Nikos I.Funk, SebastianHellewell, JoelMeakin, Sophie R.Sherratt, KatharineZhou, MingyuanKalantari, RahiYamana, Teresa K.Pei, SenShaman, JeffreyLi, Michael L.Bertsimas, DimitrisLami, Omar SkaliSoni, SakshamBouardi, Hamza TaziAyer, TurgayAdee, MadelineChhatwal, JagpreetDalgic, Ozden O.Ladd, Mary A.Linas, Benjamin P.Mueller, PeterXiao, JadeWang, YuanjiaWang, QinxiaXie, ShanghongZeng, DonglinGreen, AldenBien, JacobBrooks, LoganHu, Addison J.Jahja, MariaMcDonald, DanielNarasimhan, BalasubramanianPolitsch, CollinRajanala, SamyakRumack, AaronSimon, NoahTibshirani, Ryan J.Tibshirani, RobVentura, ValerieWasserman, LarryB. O'Dea, EamonDrake, John M.Pagano, RobertTran, Quoc T.Ho, Lam Si TungHuynh, HuongWalker, Jo W.Slayton, Rachel B.Johansson, Michael A.Biggerstaff, MatthewReich, Nicholas G.
Source
Proceedings of the National Academy of Sciences of the United States. April 12, 2022, Vol. 119 Issue 15, p1f, 12 p.
Subject
United States
Language
English
ISSN
0027-8424
Abstract
Short-term probabilistic forecasts of the trajectory of the COVID-19 pandemic in the United States have served as a visible and important communication channel between the scientific modeling community and both the general public and decision-makers. Forecasting models provide specific, quantitative, and evaluable predictions that inform short-term decisions such as healthcare staffing needs, school closures, and allocation of medical supplies. Starting in April 2020, the US COVID-19 Forecast Hub (https://covid19forecasthub.org/) collected, disseminated, and synthesized tens of millions of specific predictions from more than 90 different academic, industry, and independent research groups. A multimodel ensemble forecast that combined predictions from dozens of groups every week provided the most consistently accurate probabilistic forecasts of incident deaths due to COVID-19 at the state and national level from April 2020 through October 2021. The performance of 27 individual models that submitted complete forecasts of COVID-19 deaths consistently throughout this year showed high variability in forecast skill across time, geospatial units, and forecast horizons. Two-thirds of the models evaluated showed better accuracy than a naive baseline model. Forecast accuracy degraded as models made predictions further into the future, with probabilistic error at a 20-wk horizon three to five times larger than when predicting at a 1-wk horizon. This project underscores the role that collaboration and active coordination between governmental public-health agencies, academic modeling teams, and industry partners can play in developing modern modeling capabilities to support local, state, and federal response to outbreaks. forecasting | COVID-19 | ensemble forecast | model evaluation