Spatial sampling design to improve the efficiency of the estimation of the critical parameters of the SARS-CoV-2 epidemic
Giorgio Alleva, Giuseppe Arbia, Piero Demetrio Falorsi, Vincenzo, Nardelli, Alberto Zuliani

TL;DR
This paper introduces a spatial sampling design to enhance the efficiency of estimating critical COVID-19 epidemic parameters, reducing data collection costs while maintaining accuracy through theoretical analysis and simulation.
Contribution
It extends previous indirect sampling methods by incorporating spatial mechanisms, improving estimation efficiency in epidemic monitoring.
Findings
Spatial sampling reduces sample size needed for accurate estimates.
Theoretical properties of estimators are analytically validated.
Simulation demonstrates improved efficiency in epidemic data collection.
Abstract
The pandemic linked to COVID-19 infection represents an unprecedented clinical and healthcare challenge for many medical researchers attempting to prevent its worldwide spread. This pandemic also represents a major challenge for statisticians involved in quantifying the phenomenon and in offering timely tools for the monitoring and surveillance of critical pandemic parameters. In a recent paper, Alleva et al. (2020) proposed a two-stage sample design to build a continuous-time surveillance system designed to correctly quantify the number of infected people through an indirect sampling mechanism that could be repeated in several waves over time to capture different target variables in the different stages of epidemic development. The proposed method exploits the indirect sampling (Lavalle, 2007; Kiesl, 2016) method employed in the estimation of rare and elusive populations (Borchers,…
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Taxonomy
TopicsData-Driven Disease Surveillance · COVID-19 epidemiological studies · Census and Population Estimation
