PELGMLOct 10, 2020

Estimating COVID-19 cases and outbreaks on-stream through phone-calls

arXiv:2010.06468v16 citations
Originality Incremental advance
AI Analysis

This provides a tool for public health decision-makers to monitor epidemics and detect outbreaks earlier than lab results, though it is an incremental improvement built on existing data sources.

The authors tackled the problem of delayed COVID-19 case confirmation by developing an algorithm that estimates cases in real-time using phone call data to a COVID-line, achieving a coefficient of determination R^2 > 0.85 for the Province of Buenos Aires and enabling early outbreak detection.

One of the main problems in controlling COVID-19 epidemic spread is the delay in confirming cases. Having information on changes in the epidemic evolution or outbreaks rise before lab-confirmation is crucial in decision making for Public Health policies. We present an algorithm to estimate on-stream the number of COVID-19 cases using the data from telephone calls to a COVID-line. By modeling the calls as background (proportional to population) plus signal (proportional to infected), we fit the calls in Province of Buenos Aires (Argentina) with coefficient of determination $R^2 > 0.85$. This result allows us to estimate the number of cases given the number of calls from a specific district, days before the lab results are available. We validate the algorithm with real data. We show how to use the algorithm to track on-stream the epidemic, and present the Early Outbreak Alarm to detect outbreaks in advance to lab results. One key point in the developed algorithm is a detailed track of the uncertainties in the estimations, since the alarm uses the significance of the observables as a main indicator to detect an anomaly. We present the details of the explicit example in Villa Azul (Quilmes) where this tool resulted crucial to control an outbreak on time. The presented tools have been designed in urgency with the available data at the time of the development, and therefore have their limitations which we describe and discuss. We consider possible improvements on the tools, many of which are currently under development.

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