modeling covid-19 latent prevalence to assess a public ......2020/04/14  · charlotte, nc 28203...

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1 Modeling COVID-19 latent prevalence to assess a public health intervention at a state and regional scale Philip J. Turk 1 , PhD, MS; Shih-Hsiung Chou, PhD; Marc A. Kowalkowski, PhD; Pooja P. Palmer, MS; Jennifer S. Priem, PhD; Melanie D. Spencer, PhD, MBA; Yhenneko J. Taylor, PhD; Andrew D. McWilliams, MD, MPH Corresponding Author: Philip Turk, PhD, MS Center for Outcomes Research and Evaluation (CORE) Atrium Health 1540 Garden Terrace, Suite 408 Charlotte, NC 28203 Abstract Background: Emergence of COVID-19 caught the world off-guard and unprepared, initiating a global pandemic. In the absence of evidence, individual communities had to take timely action to reduce the rate of disease spread and avoid overburdening their healthcare systems. Although a few predictive models have been published to guide these decisions, most have not taken into account spatial differences and have included assumptions that do not match the local realities. Access to reliable information that is adapted to local context is critical for policymakers to make informed decisions during a rapidly evolving pandemic. Objective: The goal of this study was to develop an adapted susceptible-infected-removed (SIR) model to predict the trajectory of the COVID-19 pandemic in North Carolina and the Charlotte metropolitan region and to incorporate the effect of a public health intervention to reduce disease spread, while accounting for unique regional features and imperfect detection. Methods: Three SIR models were fit to prevalence data from the state and the greater Charlotte region and then rigorously compared. One of these models (SIR-Int) accounted for a stay-at-home intervention and imperfect detection of COVID-19 cases. Results: Presently, the COVID-19 outbreak is rapidly decelerating in NC and the Charlotte region. Infection curves are flattening at both the state and regional level. Relatively speaking, the greater Charlotte region has responded more favorably to the stay-at-home intervention than NC as a whole. While an initial basic SIR model served the purpose of informing decision making in the early days of the pandemic, its forecast increasingly did not fit the data over time. However, as the pandemic and local conditions evolved, the SIR-Int model provided a good fit to the data. Conclusions: Using local data and continuous attention to model adaptation, our findings have enabled policymakers, public health officials and health systems to do capacity planning and evaluate the impact of a public health intervention. Our SIR-Int model for estimated latent prevalence was reasonably flexible, highly accurate, and demonstrated the efficacy of a stay- at-home order at both the state and regional level. Our results highlight the importance of incorporating local context into pandemic forecast modeling, as well as the need to remain vigilant and informed by the data as we enter into a critical period of the outbreak. Keywords: COVID-19, public health surveillance, novel coronavirus 2019, pandemic, forecasting, SIR model, detection probability . CC-BY-NC-ND 4.0 International license It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity. (which was not certified by peer review) The copyright holder for this preprint this version posted April 18, 2020. ; https://doi.org/10.1101/2020.04.14.20063420 doi: medRxiv preprint NOTE: This preprint reports new research that has not been certified by peer review and should not be used to guide clinical practice.

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Page 1: Modeling COVID-19 latent prevalence to assess a public ......2020/04/14  · Charlotte, NC 28203 Abstract Background: Emergence of COVID-19 caught the world off-guard and unprepared,

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Modeling COVID-19 latent prevalence to assess a public health intervention at a state and regional scale

PhilipJ.Turk1,PhD,MS;Shih-HsiungChou,PhD;MarcA.Kowalkowski,PhD;PoojaP.Palmer,MS;JenniferS.Priem,PhD;MelanieD.Spencer,PhD,MBA;YhennekoJ.Taylor,PhD;AndrewD.McWilliams,MD,MPH

CorrespondingAuthor:PhilipTurk,PhD,MSCenterforOutcomesResearchandEvaluation(CORE)AtriumHealth1540GardenTerrace,Suite408Charlotte,NC28203

AbstractBackground:EmergenceofCOVID-19caughttheworldoff-guardandunprepared,initiatinga global pandemic. In the absence of evidence, individual communities had to take timelyactiontoreducetherateofdiseasespreadandavoidoverburdeningtheirhealthcaresystems.Althoughafewpredictivemodelshavebeenpublishedtoguidethesedecisions,mosthavenottakenintoaccountspatialdifferencesandhaveincludedassumptionsthatdonotmatchthelocal realities. Access to reliable information that is adapted to local context is critical forpolicymakerstomakeinformeddecisionsduringarapidlyevolvingpandemic.Objective:Thegoalof thisstudywas todevelopanadaptedsusceptible-infected-removed(SIR)model topredict the trajectoryof theCOVID-19pandemic inNorthCarolinaand theCharlottemetropolitanregionandtoincorporatetheeffectofapublichealthinterventiontoreducediseasespread,whileaccountingforuniqueregionalfeaturesandimperfectdetection.Methods: Three SIR models were fit to prevalence data from the state and the greaterCharlotteregionandthenrigorouslycompared.Oneofthesemodels(SIR-Int)accountedforastay-at-homeinterventionandimperfectdetectionofCOVID-19cases.Results:Presently, theCOVID-19outbreak is rapidlydecelerating inNCand theCharlotteregion.Infectioncurvesareflatteningatboththestateandregionallevel.Relativelyspeaking,thegreaterCharlotteregionhasrespondedmorefavorablytothestay-at-homeinterventionthanNCasawhole.WhileaninitialbasicSIRmodelservedthepurposeofinformingdecisionmakingintheearlydaysofthepandemic, itsforecastincreasinglydidnotfitthedataovertime.However,asthepandemicandlocalconditionsevolved,theSIR-Intmodelprovidedagoodfittothedata.Conclusions: Using local data and continuous attention tomodel adaptation, our findingshaveenabledpolicymakers,publichealthofficialsandhealthsystemstodocapacityplanningandevaluatetheimpactofapublichealthintervention.OurSIR-Intmodelforestimatedlatentprevalencewasreasonablyflexible,highlyaccurate,anddemonstratedtheefficacyofastay-at-homeorderatboth thestateandregional level.Ourresultshighlight the importanceofincorporatinglocalcontextintopandemicforecastmodeling,aswellastheneedtoremainvigilantandinformedbythedataasweenterintoacriticalperiodoftheoutbreak.Keywords: COVID-19, public health surveillance, novel coronavirus 2019, pandemic,forecasting,SIRmodel,detectionprobability

. CC-BY-NC-ND 4.0 International licenseIt is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity. (which was not certified by peer review)

The copyright holder for this preprint this version posted April 18, 2020. ; https://doi.org/10.1101/2020.04.14.20063420doi: medRxiv preprint

NOTE: This preprint reports new research that has not been certified by peer review and should not be used to guide clinical practice.

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Introduction

InDecember2019,anovelcoronavirusemergedinWuhan,Hubeiprovince,China[1].Thepathogencausesarespiratoryillness,nowknownasthecoronavirusdisease2019(COVID-19)[2,3].FromitsoriginalepicenterinWuhan,thevirusspreadrapidlywithin30daystootherpartsofmainlandChinaandalsoexportedtoothercountries[4,5,6,7,8].AsofApril10,2020,210countriesandterritorieshavereported1,673,423confirmedcasesofCOVID-19and101,526deaths[9].Duetothespreadacrossmultiplecountriesandthelargenumberofpeople impacted,onMarch11 theWorldHealthOrganizationrecognized thenovel severeacuterespiratorysyndromecoronavirus2(SARS-CoV-2) asapandemic thatposesamajorglobalpublichealththreat[10,11].

While theeffectsof theCOVID-19pandemicareexperiencedglobally,manykeyhealth

policydecisionsdesigned toreduce transmissionsaredeterminedatnationalandregionallevels. These critical policy decisions must be implemented quickly and evaluatedcontinuously so they can be adapted to the local context, recognizing the clear effect thatgeography,communitycontext,densityandsocialdeterminantsofhealthhaveonCOVID-19outcomes.InNorthCarolina(NC),thefirstCOVID-19casewasreportedonMarch2,2020,andcases increased to 3,963 total confirmed cases as of April 10 [12]. To slow the rapidlyincreasing transmission rate,withina fewweeksafter the1st casewasdetected,NCstateofficials promoted social distancing strategies (i.e., deliberately increasing physical space),banned largesocialgatherings, andclosedpublic schoolsanduniversities. Subsequently, astay-at-homeorder,whichonlyallowsforessentialtraveloutsidethehome,wasissuedinthesouthwesternpartof the statebyMecklenburgCountyeffectiveat8amMarch26, lastingthrough April 16 (since extended to April 29), while a statewide stay-at-home orderwasissuedeffectiveat5pmMarch30,lastingtoApril29.

BecausetheCOVID-19landscapeevolvesrapidlyduetotheconfluenceoflocallyrelevantfactors, timelydatatodrivedecisionmakingaroundcontainment, treatment,andresourceplanningiscritical.Forecastingmodelsareusedtogenerateearlywarningstoidentifyhowapandemicmightevolve.DuringtheearlystagesoftheCOVID-19pandemic,forecastingwasfrequentlyappliedtopredictnationalandinternationalinfectiontransmissiontrends[13,14].Localcommunitiesandhealthsystemsturnedtothesenationalandinternationalmodelsfortheir own planning; however, the generalizability of suchmodels to the local situation islimitedandignoresimportantcommunity-levelpopulationcharacteristicsandtransmissiondynamics[3,15,16,17].Anobjectiveofthisstudywastounderstandhowspatialdifferencesimpactmodelresultsandtheirinterpretation.

Inresponsetotheneedforactionabledatainsightsinourcommunityandhealthsystem,

investigatorsfromtheAtriumHealthCenterforOutcomesResearchandEvaluation(CORE)developedaseriesofCOVID-19forecastingmodels,whichwereusedtoguideAtriumHealth’sinitialproactiveresponsetoensuresufficientcapacitytotreattheexpectedsurgeinpatientcare demands. In this study, we present an initial Susceptible-Infected-Removed (SIR)epidemic model and its evolution to the Susceptible-Infected-Removed-Social Distancing-Detection Rate (SIR-Int) model. Here we describe and compare thesemodels, the spatial

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differencesinapandemic,thesignificanceofobservedcasesversusactualprevalenceinthesetting of rapidly evolving testing strategies, the current epidemiological trends and thepotentialeffectsofnon-pharmaceuticalinterventionsappliedlocally(e.g.,socialdistancing).Wealsoofferrecommendationsforhowcommunityandhealthsystemleadersmayinterpretourmodels tobetterprepare and act todecrease thenegative consequencesof COVID-19spreadwithintheirowncommunities.

Methods

The observed cumulative case and death counts were obtained daily at noon startingMarch2,2020fromtheNorthCarolinaDepartmentofHealthandHumanServiceswebsiteforall 100 counties [12]. Data collection for this manuscript ended on April 7. In order toaccuratelyestimatetheactual latentprevalenceat timet, thecumulativecasecountswereadjusted for imperfect detection by dividing them by 0.14. While estimates of detectionprobabilityforcoronavirus,alsoknownastheascertainmentrate,varyintheliterature,oursis in linewiththosereported[18,19,20,21,22].Next,cumulativedeathsweresubtractedfromadjustedcumulativecases.Wealsoadjustedcumulativecasesforrecoveriesbyremovingcasesafter20days,theestimatedmediandurationofviralsheddingfromillnessonset[23].Dailyincrementalincidencewasobtainedbysubtractingtheestimatedlatentprevalenceattimet−1fromthatattimet.Crucially,inourresearch,wemodelestimatedlatentprevalenceasconstructedhere,notobservedprevalence.Forthesakeofbrevitymovingforward,weusetheterms‘latentprevalence’and‘prevalence’interchangeably.

TheUSCentersforDiseaseControlandPrevention’sCitiesReadinessInitiative(CRI)isa

federally funded program designed to enhance preparedness in the nation’s largestpopulationcentersinordertoeffectivelyrespondtolargepublichealthemergencies.WithinNC, 11 counties are grouped into a CRI region that includes Anson, Cabarrus, Catawba,Cleveland,Gaston,Iredell,Lincoln,Mecklenburg,Rowan,Stanly,andUnion.Collectively,wehenceforthrefertothesecountiesas‘theCRI’(Figure1).BecausetheCRIcloselymirrorsthelargeareaservedbyAtriumHealth’sgreaterCharlottemarket,weusedthispopulationbaseforour localmodelingefforts.TheCRI includesover2.5million residents (24%of theNCpopulation)andrangesfromruralsettingslikeAnsonCountytoMecklenburgCounty,whichcontainsNC’s largest city, Charlotte. Tounderstandhowspatial differences impactmodelresultsandtheirinterpretation,wecomparedtheCRItoNCthroughouttheearlyphasesofthispandemic.

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Figure1:MapofNorthCarolinashowingtheCRIregion.

WeintroducetheSIRdeterministiccompartmentalmodeloriginallydescribedbyKermackandMcKendrick[24]anddepictitinFigure2.

Figure2:SIRmodeldiagramshowingcompartmentsandflow.

Sisthenumberofindividualsthataresusceptibletoinfectioninthepopulation,Iisthenumberofindividualsthatareinfected,andRisthenumberofindividualsthatareremovedfrom the population via recovery and subsequent immunity or death from infection. ThismutuallyexclusiveandexhaustivepartitionissuchthatS+I+R=N,whereNistheclosedpopulationsize.Wefurtherassumealluninfectedindividualsaresusceptibletoinfection.Thetransitionflowisdescribedbythearrowsinthefigurelabeledwithtworates.Theparameterβ is the infection rateand canbe furtherdecomposedas theproductof theprobabilityoftransmissionpercontactandtherateofcontactperpersonperunittime.γistheremovalrate.

Moreformally,theSIRmodelisasystemofthreeordinarydifferentialequations(ODEs)involvingtwounknownparameters:

𝑑𝑆𝑑𝑡 = −

𝛽𝐼𝑆𝑁

𝑑𝐼𝑑𝑡 =

𝛽𝐼𝑆𝑁 − 𝛾𝐼

𝑑𝑅𝑑𝑡 = 𝛾𝐼

NotethatallofS,I,andRandtheirderivativesarefunctionsoftimet(e.g.,S=S(t)),althoughwedonotdenotethisnotationallyhere.Byhowthemodelisconstructed,thefirstequationin

S I Rβ γ

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thesystemreturnsanumberlessthanorequaltozero,thesecondequationreturnsanyrealnumber,andthethirdequationreturnsanumbergreaterthanorequaltozero.

All data analysis was done using R statistical software, version 3.6.2. As described in

Churches[25],weusedtheode() defaultsolverfromthedesolve packagetosolvethesystemofODEsdefiningtheSIRmodel. Next,weusedaquasi-Newtonmethodwithconstraintstofindtheoptimalvaluesforβandγon(0,1)byminimizingthesquarerootofthesumofthesquareddifferencesbetweenI,whichisourprevalence,anditsprediction𝐼, overalltimet[26].Inordertoestablishinitialconditionsformodelfitting,weestimatethepopulationsizeofNCandtheCRItobe10,488,084and2,544,041,respectively,usinginformationtakenfromcensusestimates.Afterobtainingtheestimates𝛽- and𝛾.,tohelpassessmodelgoodness-of-fit,wedefinethefollowingstatistic:

𝑅!"#% = 1 −∑ 1𝐼" − 𝐼, "2

%&"'(

∑ (𝐼" − 𝐼4 ")%&"'(

wheretimeisindexedfrom𝑖 = 1,… , 𝑛,andnisthenumberofprevalencesinthesample.Notethat𝐼4 istheaverageoftheIi’s.

Inordertocomparedifferentscenarios,forbothNCandtheCRI,wedefineaSIRmodel(SIR-Pre) fit to the data from the time of the outbreak until the time of the March 26Mecklenburg County stay-at-home order. Since Mecklenburg County is the state’s secondlargestcounty,thiscouldhaveastrongeffectonthepandemictrajectory,bothintheCRIandthestate;therefore,wehaveusedthisdatetodelineatethedateofthesignificantpublichealthintervention. WefurtherdefineaSIRmodel(SIR-Post) fit tothedatafromthetimeoftheoutbreakuntiltheendofdatacollection.

GiventhemajorpublichealthinterventionimplementedonMarch26,wemodifytheSIR

model for both the CRI and NC to accommodate this (denoted SIR-Int). SIR models withinterventionscanbesimulatedusingtheEpiModel package.WefirstfittheSIRmodelasbeforeto thedataupuntilMarch26, andextracted theestimatesofβandγ.AfterMarch26,weretainedtheremovalrate,butmodifiedtheinfectionrate.First,wesetthepre-interventionprobability of transmission equal to 0.015, which is consistentwith other viral infectiousdiseaseslikeSARSandAIDS[27,28].Wethensettherateofcontactsothattheprobabilityoftransmission multiplied by the rate of contact equaled 𝛽- . To simulate the observedintervention,usingthedefaultRK4ODEsolver,weaffectedtheprobabilityoftransmissionbyiterativelydecreasingthehazardratioofinfectiongivenexposuretotheintervention(stepsizeof0.0001)comparedtonoexposure,untilthefittedinfectioncurveyieldedamaximum𝑅!"#% .

Forexploratorydataanalysis,wegeneratedtimeplotsforprevalence,incidence,andboth

daily and cumulative deaths. The basic reproduction numberR0 is the average number ofsecondarycasesofdiseasecausedbyasingle infected individualoverhisorher infectiousperiodinapopulationwhereallindividualsaresusceptibletoinfection.ToestimateR0,wecompute:

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𝑅-) = 𝛽-/𝛾.

where 𝛽- and 𝛾. are estimates taken from the model fit. Since the SIR model is fullyparameterizedbyβandγ,wealsoobtainpredictions𝑆-and𝑅- overalltimet.Thepercentageofinfectedatpeakprevalencewascomputedbydividing𝐼, bythepopulationsizeN,whilethefinalpercentageofinfectedwascomputedasthelimitof1−𝑆-(∞)/N.Toestimatedoublingtime and compute a 95% confidence interval, we modeled incidence growth by fitting aloglinearmodelasafunctionoftimetusingtheincidence package.

Results

Figure3showstimeplotsofprevalence,cumulativedeaths,incidence,anddailydeathsforNCfromthestartoftheoutbreakonMarch2uptoandincludingApril7.ThefirstdeathwasrecordedinNConMarch24.

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Figure3:TimeplotsforNC.

Figure4showstimeplotsofprevalence,cumulativedeaths,incidence,anddailydeathsfortheCRIfromthestartoftheoutbreakonMarch11uptoandincludingApril7.ThefirstdeathwasrecordedintheCRIonMarch25.

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Figure4:TimeplotsfortheCRI.

Notably, theprevalenceandcumulativedeath curves forboth figures lookexponential.

Whileboth incidencecurvesare increasing, the incidencecurvesbecomevolatileafter thestay-at-homeorderwentintoeffect.PriortoMarch26,doublingtimewasestimatedtobe2.56daysintheCRI(95%CI:(2.11,3.25))and2.94daysinNC(95%CI:(2.33,4.00)).OncedataafterMarch26areincluded,thedoublingtimesincreasedandwereestimatedtobe4.70daysintheCRI(95%CI:(3.77,6.22))and4.01daysinNC(95%CI:(3.43,4.83)).

Tables1and2givesasynopsisof themodel fits foreach locationandmodel type.The

estimatedR0of2.36fortheCRIpriortoMarch26ismoretypicaloftherangeofR0valuesgivenintheliteratureforCOVID-19,whilethevalueof1.79forNCissubstantiallylower[29,30].After the intervention, the estimatedR0values for both locations drop to a similar value,although this result is affected by reduced model fit. A comparison of the efficacy ofintervention,definedas1-thehazardratioofinfection,gives0.25forNCand0.43fortheCRI.

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UsingthesehazardratiostocomputeestimatesofR0fromMarch26onward(𝑅-),+,!-),wederive1.34and1.33forNCandtheCRI,respectively.ThissuggeststheCOVID-19outbreakisrapidlydeceleratinginNCandtheCRIaftertheaggressivepublichealthintervention.

Table1:SummarytableofmodelfitforSIR-PreandSIR-PostmodelsinNCandtheCRI.

Location Model 𝛽- 𝛾. 𝑅-) 𝑅!"#% NC SIR-Pre 0.6415 0.3585 1.79 0.99NC SIR-Post 0.6165 0.3835 1.61 0.84CRI SIR-Pre 0.7020 0.2980 2.36 0.94CRI SIR-Post 0.6381 0.3619 1.76 0.65

Table2:SummarytableofmodelfitforSIR-IntmodelinNCandtheCRI.

Location HazardRatio 𝑅!"#% 𝑅-),+,!-NC 0.75 0.99 1.34CRI 0.57 0.99 1.33

Figures5and6showplotsofthethreefittedmodels’infectioncurvesforNCandtheCRI,

respectively,out toApril7.Thebehavior in the twoplots is thesame.TheSIR-Postmodelclearlydemonstratesalack-of-fittothedata.FortheSIR-Intmodel,wenotethehingepointinducesachangeofbehaviorfromMarch26onward.ThedottedorangelinerepresentsSIR-PreforecastprojectionsfromMarch26onward.Notetheyaremuchlargerthantheactualdata.

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Figure5:InfectionprevalencepredictioncurvesforNCuptoApril7,2020.

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Figure6:InfectionprevalencepredictioncurvesfortheCRIuptoApril7,2020.

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Figures7and8showplotsofthethreefittedmodels’infectioncurvesforNCandtheCRI,respectively,projectedouttothebeginningofAugust.Inbothplots,weseethedramaticeffectofthepublichealthintervention;thatis,theso-called“flatteningofthecurve”.Therearetwoimportantdifferences tonotebetweenNCand theCRI region.First, theCRIvisibly showsrelativelymoreflattening.ThiseffectcanbebestobservedinTable3inthePeak%InfectedandFinal%Infectedcolumns.MovingfromthePretoPosttoIntmodelswithinalocation,thedropinpercentageinfectedismorepronouncedintheCRI.Infact,fortheSIR-Intmodel,thepercentagesarevirtuallythesameforbothlocations;thatis,theCRIhas“sloweddown”tothestateasawhole.Second,thedateofpeakprevalencewasinitially8daysearlierfortheCRIcomparedtoNC.However,usingthecurrentSIR-Intmodel,althoughbothlocationsshowedtheirinfectioncurvesshiftingforwardintime,thedateofpeakprevalenceisnow3dayslaterintheCRI(Table3).Toputthisintocontext,forNC,thetimedurationfromthestartoftheoutbreaktothepeakprevalencehasgonefrom49daysto70days(43%increase).However,fortheCRI,thetimedurationfromthestartoftheoutbreaktothepeakprevalencehasgonefrom32daysto64days(100%increase).

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Figure7:InfectionprevalencepredictioncurvesforNCuptoAugust1,2020.

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Figure8:InfectionprevalencepredictioncurvesfortheCRIuptoAugust1,2020.

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Table3:SummarytabledescribinginfectionunderthreedifferentmodelsinNCandtheCRI.

PeakKinetics

Location Model2020Date 𝑆- 𝐼- 𝑅-

Peak%Infected

Final%Infected

NC SIR-Pre Apr20 5,673,270 1,213,190 3,601,625 12% 73%NC SIR-Post Apr28 6,614,437 866,404 3,007,244 8% 65%NC SIR-Int May11 7,913,011 366,037 2,209,037 3% 46%CRI SIR-Pre Apr12 1,142,320 537,031 864,690 21% 87%CRI SIR-Post Apr24 1,488,530 282,257 773,254 11% 72%CRI SIR-Int May14 1,911,343 89,324 543,374 4% 46%Figures9and10showplotsofthethreefittedmodels’removalcurvesforNCandtheCRI,

respectively, projected out to the beginning of August. These plots supportwhatwe haveobservedsofar.Withthecontinuedintervention,theremovalcurvesarebeginningtocollapse,whichisabehaviorwewouldexpect.FortheSIR-Intmodel,bothlocationsshowaremovalplateaubeingreachedroughlyaroundthebeginningofJuly.

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Figure9:RemovalprevalencepredictioncurvesforNCuptoAugust1,2020.

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Figure10:RemovalprevalencepredictioncurvesfortheCRIuptoAugust1,2020.

Discussion

PrincipalResultsIntermsofmodelfitting,westateseveralobservations.TheSIR-Premodelrepresentsa

“worst case” scenario, as if the disease were allowed to run its course. Hence, early in apandemiclikethis,itservesausefulpurposetohelpleadersunderstandtheconsequencesoftakingnoaction,ordelayedactiononimplementingpublichealthinterventions.Beyondthat,a basic SIRmodel, especially one that is used after being fit only to early pandemic data,impartsnofurthervalueforinformingpandemicresponseplanning,andindeedmayprovideerrant forecasts. This diminished value also holds true when a basic SIR model is fit tocontemporarydata,yetignorestheeffectofapublichealthintervention,asdemonstratedby

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theSIR-Postmodel.Eventually,bothsuchmodelswillprovideapoorfittothedata(Figure5,Figure 6, Table 1). Because the behavior of any epidemic is dynamic, anymodel requiresconstantmonitoring,assessmentoffittolocaldata,andevaluationofefficacyasnewdataarecollected. Our SIR-Int model provides an example where this attention to model fit andincorporation of regional influences allows for appropriate model adaption and carefulcalibration,thusgeneratingthemostaccuratepredictionsavailabletoguideregionaldecisionmakingatthetime.

Summarizing the effect of the intervention, the doubling time for both locations is

substantiallysloweraftertheintervention,withtheCRIdoublingtimeestimate(4.70days)nowbeinggreater than forNC(4.01days).Thestay-at-homeordersstronglyappear tobeworkingasintendedastheinfectioncurvesforbothlocationsarenowbecomingflatter(andshrinking),with peak infectionprevalence nowbeing pushed towardsmid-May (Figure 7,Figure8,Table3),bothlocation’srecoverycurvesstartingtofall(Figure9,Figure10),andmeasurableinterventioneffectsonthehazardratioandR0(Table2).Itisinterestingtonotethat our results match rigorous Monte Carlo simulation studies we conducted weeksbeforehand.

Ifwecomparethetwolocations,theestimatedR0of2.36fortheCRIpriortoMarch26is

moretypicaloftherangeofR0valuesintheliteratureforCOVID-19,whilethevalueof1.79forNCissubstantiallylower(Table1).ThiscouldbeattributedtothefactthattheCRIcontainsthelargestcityinNC,andoneoftheUS’sbusiestairports,settingthestageforthisregiontohavebecomeanotherCOVID-19hotspot. It is interestingtonotethattheNCSIR-IntmodelshowedabetterfitwhenthechangepointwasalsosettoMarch26,ratherthanMarch30whenthestatewidestay-at-homeorderwentintoplace.Onepossibleexplanationforthiscouldbethatasthepandemicbeganinearnest,thegeneralpopulation’sfearofthevirusalsoincreased,perhaps causing most NC citizens to shelter-in-place prior to the order going into effect.Another explanation is that Mecklenburg County accounts for almost 11% of the NCpopulationandsotheeffectofthecountyorderdirectlyimpactedadjoiningcountiesintheCRI, thus influencing the observed effect at the state level. Two additional interestingobservationshighlightthecriticalinfluenceofspatialvariation.First,theCRIinfectioncurveevidencesrelativelymoreflatteningandalaterpeakinfectiondate(Figure7,Figure8,Table3). Second, the intervention effect in the CRI also appears stronger (Table 2). The likelyexplanationsforthesedifferencesaretheMecklenburgCountystay-at-homepolicygoingintoeffectfivedaysbeforethestateorder,thedifferentreactionofthelocalpopulationtotheorderanditsrelatedmessaging,andinnumerableotherunknowncovariatessuchasearlycancelingof religious services, public gatheringpolicies, and canceling of electivemedical visits andprocedures.

Limitations

There are limitations to the SIR model. Some take issue with its deterministic form,

although one could fit a Bayesian SIR model to make it stochastic. Perhaps the biggestlimitation is that β and γ could be time-varying due to different forms of intervention(enhancedpersonalprotectivemeasuresandsocialdistancing).However,aswehaveshown

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here, we can easily leverage pre-existing R functions to incorporate a changepoint thatmodifies the probability of transmission to acknowledge an important public healthintervention.ItisalsopossibletocustomizetheSIRmodelwithinRtodefinemoreadvancedanddifferenttransitionprocesses,andthenparameterizeandsimulatethosemodels.TheSIRmodel is simple to understand and easier to fit, as opposed to other deterministiccompartmentalmodels (e.g., SEIR) or stochastic individual contactmodels [31]. However,these more advanced models will play an increasingly important role in forecasting andunderstandingthedynamicsofthisevolvingpandemic.

The lack of widespread COVID-19 testing, both for symptomatic and asymptomatic

individuals, presents amajor limitation of unknown scale and implications to forecastingmodels[32,33].Datasourcesareknowntoundercountcases,onlyincludingasymptomaticillness by chance, and to define cases inconsistently, based on variable testing criteria,betweenandwithingeographies.Collectively, thesecontributeto imperfectdetection.Asaresult, high-level models may not comprehend the full extent of the outbreak, creatingchallenges inproducingaccurate forecasts. Ourdecisiontobaseourmodelingstrategyonestimated latentprevalenceaddressesthis inconsistencybyadjustingobservedprevalencecounts.ModelingonlytheobservedprevalencehastheeffectofshiftingtheSIRcurvesaheadin timeby several days ormore.While our estimate of the detection probability (0.14) isheuristicallymotivated,athoroughsearchoftheliteraturesupportsouruseofthisestimateasreasonable.Futureworkwillfocusonrefiningthisestimateasnewresearchappearsandtoallowittovaryasafunctionoftime.

ComparisonwithPriorWork

WhilethereisaplethoraofmodelsthatestimatetheimpactofCOVID-19intheUS,thereare far fewer that give localized projections.We note that ourmid-May date for the peakinfectioncurveisroughly3-to-4weekslaterthantheprojectionfromtheoften-citedmodelfrom The Institute for Health Metrics and Evaluation [34]. The later uses a Bayesiangeneralizednonlinearmixedmodeltoexaminecumulativedeathratesandassumesastrictsocialdistancingpolicyisinplace.UsingdataupuntilMarch13,ColumbiaUniversityreportedamid-MaypeaktimeforNCundernocontrolmeasuresandastartofJulypeaktimeundersomecontrolmeasures [35].Theauthors caution that theirmetapopulationSEIRmodel isdesignedtocapturenationaltrends,andlocalprojectionsshouldbeviewedasbroadestimates.Othermodels,suchastheCHIMEmodelfromtheUniversityofPennsylvaniaHealthSystem,reliedondata from threePennsylvaniahospitals to estimatehospital capacity and clinicaldemandandwasnotdesignedtocapturechangingregionalmitigationstrategies[36].PolicyandPracticeImplications

In the context of limited national policy guidelines to reduce COVID-19 transmission,provide resources for healthcare system pandemic preparedness and mitigate healthconsequences, state and local authorities must have reliable and geographically specificmodelstomanagetheunfoldingcrisis.Ourmodelingframeworkprovidesaflexibletoolusingreal-time data to deliver forecasting capabilities that support capacity management and

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evaluationof the epidemiological response to changes inpolicy, treatmentplans and localconditions. Because we frequently refit the model based on a daily update of the data,policymakersandNCpublichealthofficialsareabletouseourresultstoworkwithhospitalsystems toplan forhealthcare capacity and respond to changes in local outbreakprofiles,whileweighingsocialdistancingpolicies.

Usingregionalandstatedata,wedemonstratehowepidemiologicalmodelingbasedon

localcontextiscriticallyimportanttoinformingpandemicpreparednessforhealthsystemsandpolicyleaders.Theresultshighlighttheimportanceforsuchmodelstobecreatedusinglocaldata,asopposedtorunningasimulationwhichmakesmanyassumptionsaboutthetruthof parameter values. Allmodels shouldbe continuously re-calibrated, and adapted to therapid,continuouslychangingsituationsinherenttoapandemic.Aonesizefitsallapproachtotheunderpinningforecastingmodelorrelianceondatathatdoesnotincorporatelocalcontext,setsthestageformisguidedforecasting.Additionally,ourstudyshowsthatwhileaclassicSIRmodelmayperformwellintheearlydaysofthepandemic,itbeginstoloserelevancewiththeemergenceofadditionalinfluenceslikesocialdistancingandenhancedawarenessofpersonalhygiene.

TheSIR-IntmodelhashighpredictiveaccuracybasedondatacollectedfromMarch2to

April7forbothNCandtheCRIandisabletodemonstrateclear,compellingevidenceoftheefficacyofastay-at-homeorder.Bymodelingestimatedlatentprevalenceaswehavedonehere,insteadofobservedprevalence,alagdelayinprojectingpeakinfectioncanbeavoided,reducingtheconsequencestoleaderswhorequireanaccuratetimelineforplanningpurposes(e.g.,surgeplanningofhospitalbeds,supplies,andpersonnel).

Conclusions

All other things being equal, if residents continue to observe the stay-at-home orders,maintainingattentiontosocialdistancingandincreasedpersonalhygiene,thenthiswaveoftheCOVID-19outbreakwouldessentiallybeoverbymid-July.Itispossiblethatwecouldseecontinuedflatteningandshrinkingoftheinfectioncurveinwhichcaseourforecastresultswouldadaptcommensurately.Itisalsopossiblethatinfectionprevalencecouldoscillateatalowlevelovertime,inwhichcasemoreadvancedmodelingandmethodswouldbeneeded.Our resultshighlight the importanceof incorporating local context intopandemic forecastmodeling,aswellastheneedtoremainvigilantandinformedbythedataasweenterintoacriticalperiodoftheoutbreak.WhiletherewillregrettablystillbetragiclossoflifeandmanyNCcitizensinfectedbycoronavirus,thisscenariopalesincomparisontowhatcouldhavebeenafarworseconclusion.AcknowledgementsPT takes full responsibility for the integrity and accuracy of the statistical analysis andassembling the manuscript; SHC generated the map and was involved in discussions onstatistical analysis; YT andMSdrafted the abstract anddiscussion;MKand JPdrafted theintroduction;PTdraftedthemethods,results,andpartofthediscussion;MK,MS,YTandPT

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assembledreferences;YT,SHC,MS,andAWperformedcriticalrevisionofthemanuscriptforimportant intellectualcontent;PPcollectedthedataanddraftedthebibliography;andAWsupervisedthestudy.ConflictsofInterestNonedeclared.References

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