| Literature DB >> 32836819 |
Maria Michela Dickson1, Giuseppe Espa1, Diego Giuliani1, Flavio Santi2, Lucia Savadori1.
Abstract
This paper aims at investigating empirically whether and to what extent the containment measures adopted in Italy had an impact in reducing the diffusion of the COVID-19 disease across provinces. For this purpose, we extend the multivariate time-series model for infection counts proposed in Paul and Held (Stat Med 30(10):118-1136, 2011) by augmenting the model specification with B-spline regressors in order to account for complex nonlinear spatio-temporal dynamics in the propagation of the disease. The results of the model estimated on the time series of the number of infections for the Italian provinces show that the containment measures, despite being globally effective in reducing both the spread of contagion and its self-sustaining dynamics, have had nonlinear impacts across provinces. The impact has been relatively stronger in the northern local areas, where the disease occurred earlier and with a greater incidence. This evidence may be explained by the shared popular belief that the contagion was not a close-to-home problem but rather restricted to a few distant northern areas, which, in turn, might have led individuals to adhere less strictly to containment measures and lockdown rules.Entities:
Keywords: COVID-19; Italy; Quarantine; Spatial dependence; Spatio-temporal model
Year: 2020 PMID: 32836819 PMCID: PMC7414636 DOI: 10.1007/s11071-020-05853-7
Source DB: PubMed Journal: Nonlinear Dyn ISSN: 0924-090X Impact factor: 5.741
Fig. 1The basis of five B-splines of the fourth degree over the interval [0, 56], which corresponds to the time frame considered in the paper (24 February–20 April 2020)
Fig. 2Correlograms of deviance residuals of the fitted model. 95% confidence bands, computed according to [6], are robust with respect to heteroskedasticity
Fig. 4Maps of Italian provinces colour-coded according to the number of days after 24 February, when the first COVID-19 contagion was detected (left), and the cumulative incidence of COVID-19 between 24 February 2020 and 20 April 2020 (right)
Fig. 3Time series of daily COVID-19 infections in Italy from 24 February 2020 to 20 April 2020, according to data released by the Italian Department of Civil Protection in natural (left) and logarithmic (right) scales. Note the exponential trend of the time series until about 20 March 2020, and the subsequent period when a decreasing trend emerged
Point estimates and standard errors of parameters of Model (1) based on observations between 24 February 2020 and 20 April 2020
| Parameter | Estimate | SE |
|---|---|---|
| 2.707 | 0.151 | |
| 1.121 | 0.161 | |
| 0.302 | ||
| 0.206 | ||
| 1.130 | 0.172 | |
| 0.429 | 0.170 | |
| 5.711 | ||
| 0.035 | 0.236 | |
| 9.130 | 18.111 | |
| 0.462 | 9.157 | |
| 5.864 | 4.288 | |
| 10.815 | ||
| 51.805 | ||
| 0.596 | 0.219 | |
| 72.228 | 51.779 | |
| 69.835 | 51.949 | |
| 75.259 | 51.364 | |
| 65.374 | 52.613 | |
| 0.575 | 0.015 |
Fig. 5Time evolution of the endemic component of Italian provinces (left) and national average with confidence band (right). Vertical dotted lines mark dates when: (i) the Italian Government issued the RCA; (ii) the Italian Government established the national quarantine. Vertical shaded band highlights the 95% confidence interval of the incubation period of COVID-19 as estimated in [15] for contagions that occurred the day that the DPCM of 11 March 2020 came into force
Fig. 6Time evolution of temporal autoregressive parameters () of the 107 Italian provinces (left) and national average with confidence band (right). Vertical dotted lines mark dates when: (i) the Italian Government issued the RCA; (ii) the Italian Government established the national quarantine. Vertical shaded band highlights the confidence interval of the incubation period of COVID-19 as estimated in [15] for contagions that occurred the day that the DPCM of 11 March 2020 came into force
Fig. 7Time evolution of spatial autoregressive parameters () of the 107 Italian provinces (left) and national average with 95% confidence band (right). Vertical dotted lines mark dates when: (i) the Italian Government issued the RCA; (ii) the Italian Government established the national quarantine. Vertical shaded band highlights the 95% confidence interval of the incubation period of COVID-19 as estimated in [15] for contagions that occurred the day that the DPCM of 11 March 2020 came into force
Mean predictive assessment scoring rules based on the last six one-day-ahead predictions for three alternative model specifications
| logs | rps | dss | ses | |
|---|---|---|---|---|
| M1 | 3.590041 | 9.750904 | 6.189101 | 641.9364 |
| M2 | 3.605362 | 10.055681 | 6.243500 | 687.5992 |
| M3 | 3.609414 | 9.938079 | 6.207128 | 697.0025 |
Lower values indicate better predictions. M1 is the most general model as it includes B-spline regressors in all three components. M2 does not contain B-spline regressors in the within-epidemic component, while M3 excludes them from the between-epidemic part
Fig. 8Observed and predicted number of contagions between 24 February 2020 and 20 April 2020 in nine provinces. Selected northern provinces are Alessandria (Piedmont region), Bergamo (Lombardy region), Venezia (Veneto region), Rimini (Emilia-Romagna region) and Pesaro-Urbino (Marche region). The centre and southern provinces are Rieti (Lazio region), Avellino (Campania region), Crotone (Calabria region) and Caltanissetta (Sicily region). The vertical axis represents the daily number of infections, and the horizontal axis represents the time in days after 24 February 2020. The dots represent the observed daily counts. The yellow area represents the endemic component. The light blue area represents the within-epidemic component. The orange area represents the between-epidemic component