How Schools Affected the COVID-19 Pandemic in Italy: Data Analysis for Lombardy Region, Campania Region, and Emilia Region
Abstract
:1. Introduction
- In France schools and universities have been indicated as the first factor in active outbreaks [source: Sante Publique France];
- In the UK, primary and secondary school, after careful tracing, was in third place as number of reports [source: NHS Test and Trace UK];
- In Germany, the school was recently declared to be at high risk in some statements made by A. Merkel herself in early February 2021;
- Further preliminary analyses have been carried out on the Piedmonts Region and national territory by researcher A. Ferretti and a clear relation on the increase of cases and the school opening is reported [15];
- The Lazio Region was driven to an emergency state due to school contagion impact [16];
- During the 19 March 2021 Press Conference, the Belgium Prime Minister said: “From contact analyses, we can also see that schools are key places where many infections happen,” De Croo said. “Children are infected there, take the virus home, possibly infect their parents, who may infect their colleagues if they are still going to work, and so the chain continues” [17];
- We also remind you that 75% of the positives in the youth age group under 19 are asymptomatic, therefore, are unaware carriers of the virus within family walls [source ISS];
- In the week of mid-February 2021 alone, we collected more than 50 newspaper articles (headings national and local) that highlight outbreaks in Italian schools [18];
- Recent statements by the ISS (Higher Institute of Health) Director G. Rezza, dated 26 February 2021, highlight the problem of numerous outbreaks in Italian schools.
2. Materials and Methods
- RL reopened all primary and secondary schools in presence at 14 September 2020 (high level secondary school with 50% attendance and 50% online) [25];
- RC reopened all primary and secondary schools in presence at 24 September 2020 (high level secondary school with 50% attendance and 50% online) and then all levels were closed in advance starting from the October 16 and until 13 November [26];
- REm reopened all primary and secondary schools in presence at 14 September 2020 (high level secondary school with 50% attendance and 50% online).
- between school contagion index (both total and separate for primary and secondary school, respectively) and an index of global contagion at the provincial level (both for RL and RC). The correlation study was done with a global contagion index on the reference period from 14 September 2020 to 30 October 2020 and also considering the first two weeks after the reopening of schools (from 14 September to 28 September, where the contagion theoretically should not be detectable, given the latency time between positivity and the onset of symptoms and related diagnostic screening) then in the following two weeks (from 28 September to 12 October, when it is likely that contagion was triggered in schools and then it potentially spreads in the intrafamily context), and after four weeks of spreading;
- between contagion index and mobility indexes derived from the COVID-19 Google Community Mobility Report [27], where mobility data at regional and national level in different sectors (e.g., mobility near parks and public gardens, pharmacies, at work level, train stations, residential, etc.) were analyzed.
3. Results
3.1. Comparing Lombardy, Campania and Emilia Romagna Contagion Indexes
3.2. Reproduction Number (Rt) and Contagion Curves Evaluation
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Age | Number of Cases 12/29/2020 | Number of Cases 3/10/2021 | Percentage Growth |
---|---|---|---|
0–9 | 78,664 | 144,301 | 83.44 |
10–19 | 170,048 | 277,785 | 63.36 |
20–29 | 245,458 | 367,308 | 49.64 |
30–39 | 251,226 | 382,754 | 52.35 |
40–49 | 326,571 | 494,423 | 51.40 |
50–59 | 368,635 | 545,225 | 47.90 |
60–69 | 229,200 | 344,498 | 50.30 |
70–79 | 172,071 | 255,511 | 48.49 |
80–89 | 149,953 | 209,503 | 39.71 |
14 September 2020 | 24 September 2020 | ||||
---|---|---|---|---|---|
Rt Peak Date | Rt Peak Value | Rt Peak Date | Rt Peak Value | ||
Emilia | 10/10/2020 | 1.4 | Abruzzo | 10/10/2020 | 1.3 |
Lazio | 10/20/2020 | 1.4 | Basilicata | 10/20/2020 | 1.4 |
Liguria | 10/10/2020 | 1.4 | Calabria | 10/20/2020 | 1.4 |
Lombardia | 10/10/2020 | 1.5 | Campania | 10/20/2020 | 1.1 |
Marche | 10/20/2020 | 1.4 | Friuli * | 10/20/2020 | 1.3 |
Molise | 10/10/2020 | 1.8 | Puglia | 10/20/2020 | 1.2 |
Piemonte | 10/20/2020 | 1.5 | Sardegna * | 10/20/2020 | 1.2 |
Sicilia | 10/10/2020 | 1.3 | |||
Toscana | 10/10/2020 | 1.4 | |||
Trento | 10/20/2020 | 1.5 | |||
Umbria | 10/10/2020 | 1.4 | |||
Valle d’Aosta | 10/10/2020 | 1.6 | |||
Veneto | 10/20/2020 | 1.4 | |||
Avg. | 1.46 | Avg. | 1.27 |
School Index | Contagion Index | Rt | |
---|---|---|---|
(Max-Min-Avg) | (Max-Min-Avg) | (Peak) | |
Lombardy Region | 2.7 | 13.1 | 1.5 |
0.4 | 2.5 | ||
1.3 | 7.4 | ||
Campania Region | 1.0 | 9.2 | 1.1 |
0.2 | 2.6 | ||
0.7 | 5.9 | ||
Emilia Region | 1.1 | 6.7 | 1.4 |
0.4 | 3.2 | ||
0.7 | 4.5 |
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Tosi, D.; Campi, A.S. How Schools Affected the COVID-19 Pandemic in Italy: Data Analysis for Lombardy Region, Campania Region, and Emilia Region. Future Internet 2021, 13, 109. https://doi.org/10.3390/fi13050109
Tosi D, Campi AS. How Schools Affected the COVID-19 Pandemic in Italy: Data Analysis for Lombardy Region, Campania Region, and Emilia Region. Future Internet. 2021; 13(5):109. https://doi.org/10.3390/fi13050109
Chicago/Turabian StyleTosi, Davide, and Alessandro Siro Campi. 2021. "How Schools Affected the COVID-19 Pandemic in Italy: Data Analysis for Lombardy Region, Campania Region, and Emilia Region" Future Internet 13, no. 5: 109. https://doi.org/10.3390/fi13050109
APA StyleTosi, D., & Campi, A. S. (2021). How Schools Affected the COVID-19 Pandemic in Italy: Data Analysis for Lombardy Region, Campania Region, and Emilia Region. Future Internet, 13(5), 109. https://doi.org/10.3390/fi13050109