Spatial Sampling Design to Improve the Efficiency of the Estimation of the Critical Parameters of the SARS-CoV-2 Epidemic

Author:

Alleva Giorgio1,Arbia Giuseppe2,Falorsi Piero Demetrio3,Nardelli Vincenzo4,Zuliani Alberto1

Affiliation:

1. Università degli Studi di Roma La Sapienza , Memotef, Via del Castro Laurenziano 9 , Rome , Italy .

2. Università Cattolica del Sacro Cuore statistical sciences , Piazza Francesco Vito, 1, Rome, 00168 , Italy .

3. Via di Monserrato 111 , Roma , , Italy .

4. Università degli Studi di Milano-Bicocca Piazza dell’Ateneo Nuovo 1 , Milano , , Italy .

Abstract

Abstract Given the urgent informational needs connected with the diffusion of infection with regard to the COVID-19 pandemic, in this article, we propose a sampling design for building a continuous-time surveillance system. Compared with other observational strategies, the proposed method has three important elements of strength and originality: (1) it aims to provide a snapshot of the phenomenon at a single moment in time, and it is designed to be a continuous survey that is repeated in several waves over time, taking different target variables during different stages of the development of the epidemic into account; (2) the statistical optimality properties of the proposed estimators are formally derived and tested with a Monte Carlo experiment; and (3) it is rapidly operational as this property is required by the emergency connected with the diffusion of the virus. The sampling design is thought to be designed with the diffusion of SAR-CoV-2 in Italy during the spring of 2020 in mind. However, it is very general, and we are confident that it can be easily extended to other geographical areas and to possible future epidemic outbreaks. Formal proofs and a Monte Carlo exercise highlight that the estimators are unbiased and have higher efficiency than the simple random sampling scheme.

Publisher

Walter de Gruyter GmbH

Reference60 articles.

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3. Alleva, G. 2017. “The new role of sample surveys in official statistics”. ITACOSM 2017, The 5th Italian Conference on Survey Methodology, June 14, 2017. Bologna IT. Available at: https://www.istatit/it/files//2015/10/Alleva_ITAC0SM_14062017.pdf (accessed April 2020).

4. Alleva G. 2020. Contributo per la 12° Commissione permanente Igiene e sanità del Senato della Repubblica. May 27, 2020. Roma, IT. https://www.senato.it/application/xmanager/projects/leg18/attachments/documento_evento_procedura_commissione/files/000/135/501/GI0RGI0_ALLEVA.pdf (accessed May 2020).

5. Alleva, G., G. Arbia, P.D. Falorsi, G. Pellegrini, and A. Zuliani. 2020. A sampling design for reliable estimates of the SARS-CoV-2 epidemic’s parameters. Calling for a protocol using panel data. https://web.uniroma1.it/memotef/sites/default/files/Proposal.pdf (accessed April 2020).

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