Litcius/Paper detail

Real-time pandemic surveillance using hospital admissions and mobility data

Spencer J. Fox, Michael Lachmann, Mauricio Tec, Remy Pasco, Spencer Woody, Zhanwei Du, Xutong Wang, Tanvi Ingle, Emily Javan, Maytal Dahan, Kelly Gaither, Mark E A Escott, Stephen I. Adler, S. Claiborne Johnston, James G. Scott, Lauren Ancel Meyers

2022Proceedings of the National Academy of Sciences69 citationsDOIOpen Access PDF

Abstract

Forecasting the burden of COVID-19 has been impeded by limitations in data, with case reporting biased by testing practices, death counts lagging far behind infections, and hospital census reflecting time-varying patient access, admission criteria, and demographics. Here, we show that hospital admissions coupled with mobility data can reliably predict severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) transmission rates and healthcare demand. Using a forecasting model that has guided mitigation policies in Austin, TX, we estimate that the local reproduction number had an initial 7-d average of 5.8 (95% credible interval [CrI]: 3.6 to 7.9) and reached a low of 0.65 (95% CrI: 0.52 to 0.77) after the summer 2020 surge. Estimated case detection rates ranged from 17.2% (95% CrI: 11.8 to 22.1%) at the outset to a high of 70% (95% CrI: 64 to 80%) in January 2021, and infection prevalence remained above 0.1% between April 2020 and March 1, 2021, peaking at 0.8% (0.7-0.9%) in early January 2021. As precautionary behaviors increased safety in public spaces, the relationship between mobility and transmission weakened. We estimate that mobility-associated transmission was 62% (95% CrI: 52 to 68%) lower in February 2021 compared to March 2020. In a retrospective comparison, the 95% CrIs of our 1, 2, and 3 wk ahead forecasts contained 93.6%, 89.9%, and 87.7% of reported data, respectively. Developed by a task force including scientists, public health officials, policy makers, and hospital executives, this model can reliably project COVID-19 healthcare needs in US cities.

Topics & Concepts

PandemicMedicineCoronavirus disease 2019 (COVID-19)LaggingDemographyPublic healthDemographicsConfidence intervalTransmission (telecommunications)CensusPublic health surveillanceSevere acute respiratory syndrome coronavirus 2 (SARS-CoV-2)Retrospective cohort studyEmergency medicinePediatricsEnvironmental healthInternal medicineDiseasePopulationComputer scienceInfectious disease (medical specialty)TelecommunicationsPathologySociologyNursingCOVID-19 epidemiological studiesData-Driven Disease SurveillanceCOVID-19 Digital Contact Tracing