| Literature DB >> 35052231 |
Noemi Scrivano1, Rosario Alfio Gulino1, Daniele Giansanti2.
Abstract
The technological innovation of digital contact tracing (DCT) has certainly characterized the COVID-19 pandemic, as compared to the previous ones. Based on the first studies, considerable support was expected from smartphone applications ("apps") for DCT. This commentary focuses on digital contact tracing. Its contributions are threefold: (a) Recall the initial expectations of these technologies and the state of diffusion. (b) Deal with the introduction of the app "Immuni" in Italy, while also highlighting the initiatives undertaken at the government level. (c) Report the state of diffusion and use of this App. The commentary ends by proposing some reflections on the continuation of this investigation in Italy.Entities:
Keywords: COVID-19; app; contact tracing; cyber-risk; digital health; eHealth; mHealth; medical devices; pandemic
Year: 2021 PMID: 35052231 PMCID: PMC8775620 DOI: 10.3390/healthcare10010067
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Summary table with the description of the data considered, the direct or indirect source, and the references (* accessed at the date of writing, 5 October 2021).
| Description | Sources (Direct or Indirect) | Reference and Year |
|---|---|---|
| Statistics on people owning smartphones in Italy. | CENSIS (Italian national body designated for social research) reports | N. 31 (2019), N. 32 (2021) |
| Statistics on the use of the app “Immuni” (downloading, uploading of diagnosed positive subjects, etc.) | GitHub and app “Immuni” Webs | N. 15–17, N. 24–26, N. 33–34 (*) |
| Statistics on | Eurostat (European body designed for European statistics) reports | N. 35–36(Updated 3 march 2021) |
| Statistics on Italian population | ISTAT (Italian national body designated for social research) reports | N. 27 (*) |
| Serological investigation on COVID-19In Italy | ISTAT (Italian national body designated for social research) reports | N. 28–29 (2021) |
| Statistics on COVID-19 in Italy | Data from Italian Ministry of health | N. 28 (*) |
Figure 1Ratio between the DPSU in the DCT system and the RPS (for different values of K): without the different impact of the digital divide (not considered, R1); considering the two different estimates of the digital divide at 73.8% (R2) and 83.3% (R3).
Tabular representation of percent of downloads for each region and GDP.
| Region | Percent of Downloads for Each Region | GDP |
|---|---|---|
| Abruzzo | 21.5 | GDP ≥ 80 |
| Basilicata | 16.9 | 65 ≤ GDP < 80 |
| Calabria | 12.2 | GDP < 65 |
| Campania | 13.3 | GDP < 65 |
| Emilia-Romagna | 22.3 | GDP ≥ 80 |
| Friuli Venezia Giulia | 15.8 | GDP ≥ 80 |
| Lazio | 21.7 | GDP ≥ 80 |
| Liguria | 18.3 | GDP ≥ 80 |
| Lombardia | 20.1 | GDP ≥ 80 |
| Marche | 19.2 | GDP ≥ 80 |
| Molise | 14.9 | 65 ≤ GDP < 80 |
| Piemonte | 17.5 | GDP ≥ 80 |
| Puglia | 14.6 | GDP < 65 |
| Sardegna | 19.8 | 6 ≤GDP < 80 |
| Sicilia | 12.5 | GDP < 65 |
| Toscana | 21.8 | GDP ≥ 80 |
| Provincia autonoma di Trento | 19.4 | GDP ≥ 80 |
| Provincia autonoma di Bolzano | 16.7 | GDP ≥ 80 |
| Umbria | 20.7 | GDP ≥ 80 |
| Valle d’Aosta | 20.0 | GDP ≥ 80 |
| Veneto | 16.4 | GDP ≥ 80 |
Figure 2Graphic representation of percent of downloads for each region and GDP.
Articles on DCT recalled with a brief description of their focus.
| Ref | Cited Article | Brief Description of the Focus |
|---|---|---|
| [ | Garousi V, Cutting D, Felderer M. Mining user reviews of COVID contact-tracing apps: An exploratory analysis of nine European apps. J Syst Softw. 2021 | Authors went to the field to review the referees relating to these apps to understand what the users were not satisfied with. |
| [ | Elkhodr M, Mubin O, Iftikhar Z, Masood M, Alsinglawi B, Shahid S, Alnajjar F. Technology, Privacy, and User Opin-ions of COVID-19 Mobile Apps for Contact Tracing: Systematic Search and Content Analysis. J Med Internet Res. 2021 Feb 9;23(2):e23467. doi: 10.2196/23467. PMID: 33493125; PMCID: PMC7879719 Nov 4:111136. doi: 10.1016/j.jss.2021.111136. Epub ahead of print. PMID:34751198; PMCID: PMC8566091 | Reviewed different apps for DCT, highlighted that |
| [ | Alanzi T. A Review of Mobile Applications Available in the App and Google Play Stores Used During the COVID-19 Outbreak. J Multidiscip Healthc. 2021 Jan 12;14:45–57. doi: 10.2147/JMDH.S285014. PMID: 33469298; PMCID: PMC7812813 | Highlighted that a large integration of functionalities are lacking in the apps developed for the COVID-19. |
| [ | Kahnbach L, Lehr D, Brandenburger J, Mallwitz T, Jent S, Hannibal S, Funk B, Janneck M. Quality and Adoption of COVID-19 Tracing Apps and Recommendations for Development: Systematic Interdisciplinary Review of European Apps. J Med Internet Res. 2021 Jun 2;23(6):e27989. doi: 10.2196/27989. PMID: 33890867; PMCID: PMC8174558 | The study faced the quality in the apps for DCT. It used the mobile app rating scale to assess the app quality. |
| [ | O’Connell J, Abbas M, Beecham S, Buckley J, Chochlov M, Fitzgerald B, Glynn L, Johnson K, Laffey J, McNicholas B, Nuseibeh B, O’Callaghan M, O’Keeffe I, Razzaq A, Rekanar K, Richardson I, Simpkin A, Storni C, Tsvyatkova D, Walsh J, Welsh T, O’Keeffe D. Best Practice Guidance for Digital Contact Tracing Apps: A Cross-disciplinary Review of the Literature. JMIR Mhealth Uhealth. 2021 Jun 7;9(6):e27753. doi: 10.2196/27753. PMID: 34003764; PMCID: PMC8189288 | Authors reviewed the desiderable requirements that a DCT app must have to be successful and have made them explicit. |
| [ | Maccari L, Cagno V. Do we need a contact tracing app? Comput Commun. 2021 Jan 15;166:9–18. doi: 10.1016/j.comcom.2020.11.007. Epub 2020 Nov 19. PMID:33235399; PMCID: PMC7676320 | It has been underlined that the proximity detection using BLTE gave a low contribute to the detection of cases. |
| [ | .Kolasa K, Mazzi F, Leszczuk-Czubkowska E, Zrubka Z, Péntek M. State of the Art in Adoption of Contact Tracing Apps and Recommendations Regarding Privacy Protection and Public Health: Systematic Review. JMIR Mhealth Uhealth. 2021 Jun 10;9(6):e23250. doi: 10.2196/23250. PMID: 34033581; PMCID: PMC8195202 | Showed that apps with high levels of compliance with standards of data privacy (and “Immuni” is one of them) tend to fulfill public health interests to a limited extent and DCT with a lower level of data privacy protection allow for the collection of more data. |
| [ | Oyibo K, Sahu KS, Oetomo A, Morita PP. Factors Influencing the Adoption of Contact Tracing Applications: Protocol for a Systematic Review. JMIR Res Protoc. 2021 Jun 1;10(6):e28961. doi: 10.2196/28961. PMID: 33974551; PMCID: PMC8171387 | The study proposed protocols for the correct identification of the factors influencing DCT. |
| [ | Anglemyer A, Moore TH, Parker L, Chambers T, Grady A, Chiu K, Parry M, Wilczynska M, Flemyng E, Bero L. Digital contact tracing technologies in epidemics: a rapid review. Cochrane Database Syst Rev. 2020 Aug 18;8(8):CD013699. doi: 10.1002/14651858.CD013699. PMID: 33502000; PMCID:PMC8241885 | The study on the Cochrane database system review traced both the reflections and the future directions and efforts in DCT. The outcome from randomized controlled trials (RCTs), cluster-RCTs, quasi-RCTs, cohort studies, cross-sectional studies, and modeling studies in general populations was considered. |