Use of Telehealth Information for Early Detection: Insights From the COVID-19 Pandemic

Author:

Haenchen Steven1,McCabe Bridget1,Mack Wendy J.1,Doctor Jason N.1,Linder Jeffrey A.1,Persell Stephen D.1,Tibbels Jason1,Meeker Daniella1

Affiliation:

1. Steven Haenchen, Bridget McCabe, and Jason Tibbels are with Teladoc Health, Purchase, NY. Wendy J. Mack is with Keck School of Medicine, University of Southern California, Los Angeles. Jason N. Doctor is with Schaeffer Center for Health Policy and Economics, University of Southern California. Jeffrey A. Linder and Stephen D. Persell are with Division of General Internal Medicine, Northwestern University Feinberg School of Medicine, Chicago, IL. Daniella Meeker is with Yale School of Medicine, Yale...

Abstract

Objectives. To examine whether the addition of telehealth data to existing surveillance infrastructure can improve forecasts of cases and mortality. Methods. In this observational study, we compared accuracy of 14-day forecasts using real-time data available to the National Syndromic Surveillance Program (standard forecasts) to forecasts that also included telehealth information (telehealth forecasts). The study was performed in a national telehealth service provider in 2020 serving 50 US states and the District of Columbia. Results. Among 10.5 million telemedicine encounters, 169 672 probable COVID-19 cases were diagnosed by 5050 clinicians, with a rate between 0.79 and 47.8 probable cases per 100 000 encounters per day (mean = 8.37; SD = 10.75). Publicly reported case counts ranged from 0.5 to 237 916 (mean: 53 913; SD = 47 466) and 0 to 2328 deaths (mean = 1035; SD = 550) per day. Telehealth-based forecasts improved 14-day case forecasting accuracy by 1.8 percentage points to 30.9% ( P = .06) and mortality forecasting by 6.4 percentage points to 26.9% ( P < .048). Conclusions. Modest improvements in forecasting can be gained from adding telehealth data to syndromic surveillance infrastructure. ( Am J Public Health. 2024;114(2):218–225. https://doi.org/10.2105/AJPH.2023.307499 )

Publisher

American Public Health Association

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