| Literature DB >> 35867842 |
Feiko Ritsema1, Jizzo R Bosdriesz1,2, Tjalling Leenstra1, Mariska W F Petrignani1, Liza Coyer1,2, Anja J M Schreijer1, Yvonne T H P van Duijnhoven1, Janneke H H M van de Wijgert3, Maarten F Schim van der Loeff1,2, Amy Matser1,2.
Abstract
BACKGROUND: Worldwide, efforts are being made to stop the COVID-19 pandemic caused by SARS-CoV-2. Contact tracing and quarantining are key in limiting SARS-CoV-2 transmission. Mathematical models have shown that the time between infection, isolation of cases, and quarantining of contacts are the most important components that determine whether the pandemic can be controlled. Mobile contact-tracing apps could accelerate the tracing and quarantining of contacts, including anonymous contacts. However, real-world observational data on the uptake and determinants of contact-tracing apps are limited.Entities:
Keywords: COVID-19; contact tracing; contact tracing app; digital health; health applications; mHealth; mobile applications; mobile contact tracing app; pandemic; public health; surveillance
Mesh:
Year: 2022 PMID: 35867842 PMCID: PMC9407157 DOI: 10.2196/31099
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.947
Figure 1The percentage of cases with available data on the use of the contact tracing app (a) and the percentage of cases who used the mobile contact tracing app (b) by week (w) among SARS-CoV-2 positive cases in the region of Amsterdam (October 28, 2020, to February 26, 2021).
Characteristics of individuals (≥18 years old) diagnosed with SARS-CoV-2 in the region of Amsterdam by reported mobile app use (October 28, 2020, to February 26, 2021).
| Characteristics | Totala (N=29,766) | App users (n=4824) | Nonusers (n=24,942) | ||
| Age (years), mean (IQR) | 41 (29-55) | 42 (29-54) | 41 (29-55) | .89 | |
|
| <.001 | ||||
|
| Female | 15,868 (53.3) | 2437 (15.4) | 13,431 (84.6) |
|
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| Male | 13,898 (46.7) | 2387 (17.2) | 11,511 (82.8) |
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| <.001 | ||||
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| Netherlands | 18,798 (63.2) | 3803 (20.2) | 14,995 (79.8) |
|
|
| Non-Western | 9116 (30.6) | 730 (8.0) | 8386 (92.0) |
|
|
| Other Western | 1852 (6.2) | 291 (15.7) | 1561 (84.3) |
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|
| <.001 | ||||
|
| Amsterdam | 24,970 (83.9) | 3832 (15.4) | 21,138 (84.7) |
|
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| Aalsmeer | 852 (2.9) | 197 (23.1) | 655 (76.9) |
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| Amstelveen | 1921 (6.5) | 408 (21.2) | 1513 (78.8) |
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| Diemen | 895 (3.0) | 145 (16.2) | 750 (83.8) |
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|
| Ouder-Amstel | 340 (1.1) | 99 (29.1) | 241 (70.9) |
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| Uithoorn | 788 (2.7) | 143 (18.2) | 645 (81.9) |
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| Median close contacts, mean (IQR) | 0 (0-1) | 0 (0-2) | 0 (0-1) | <.001 | |
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| <.001 | ||||
|
| 0 | 17,936 (60.3) | 2494 (13.9) | 15,442 (86.1) |
|
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| 1-3 | 9133 (30.7) | 1736 (19.0) | 7397 (81.0) |
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| 4-6 | 2024 (6.8) | 449 (22.2) | 1575 (77.8) |
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| >6 | 673 (2.3) | 145 (21.6) | 528 (78.5) |
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| <.001 | ||||
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| No | 26,539 (89.2) | 4318 (16.3) | 22,221 (83.7) |
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| Hospital | 845 (2.8) | 162 (19.2) | 683 (80.8) |
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| Nursing home for elderly | 664 (2.2) | 57 (8.6) | 607 (91.4) |
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| Other 24-hour care home | 331 (1.1) | 49 (14.8) | 282 (85.2) |
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| Home care | 261 (0.9) | 31 (11.9) | 230 (88.1) |
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| Other health care | 1126 (3.8) | 207 (18.4) | 919 (81.6) |
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| <.001 | ||||
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| No | 28,612 (96.1) | 4637 (16.2) | 23,975 (83.8) |
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| Yes, day care | 340 (1.1) | 26 (7.7) | 314 (92.4) |
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| Yes, elementary school | 637 (2.1) | 130 (20.4) | 507 (79.6) |
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| Yes, secondary or higher education | 177 (0.6) | 31 (17.5) | 146 (82.5) |
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aFrom the total sample, the following have been excluded: 3354 cases because of missing data on app use, 1310 cases because of missing values on an independent variable, and 161 cases because of outliers on continuous variables.
bP values for differences between app users and nonusers were assessed with Kruskal-Wallis tests for age and number of close contacts, and with chi-squared tests for all other variables.
cFor the categorization of country of birth into non-Western or other Western, the definition from Statistics Netherlands was used [24].
Figure 2Predicted probability of reporting CoronaMelder app use by (a) age in years and (b) the reported number of close contacts, resulting from multivariable logistic regression analysis using B-splines among 29,766 SARS-CoV-2 positive cases in the region of Amsterdam (October 28, 2020, to February 26, 2021).
Factors associated with mobile app use among 29,283 individuals (≥18 years old) diagnosed with SARS-CoV-2 in the region of Amsterdam (October 28, 2020, to February 26, 2021).
| Characteristics | ORa (95% CI)b | AORc (95% CI)b | |||
| Aged | —e | <.001 | — | <.001 | |
|
|
| <.001 |
| .002 | |
|
| Female | 1 |
| — |
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|
| Male |
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|
|
|
|
| <.001 |
| <.001 | |
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| Netherlands | 1 |
| — |
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| Other Western |
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|
|
| Non-Western |
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|
|
|
|
|
| <.001 |
| <.001 | |
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| Amsterdam | 1 |
| 1 |
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| Aalsmeer |
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| Amstelveen |
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| Diemen | 1.07 (0.89-1.28) |
| 1.02 (0.85-1.23) |
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| Ouder-Amstel |
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| Uithoorn |
|
| 1.03 (0.85-1.25) |
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| Number of close contactsf | — | <.001 | — | <.001 | |
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| <.001 |
| <.001 | |
|
| No | 1 |
| 1 |
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| Hospital |
|
| 1.02 (0.85-1.22) |
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| Nursing home for elderly |
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| Other 24-hour care home | 0.89 (0.66-1.21) |
| 0.78 (0.57-1.06) |
|
|
| Home care | 0.69 (0.48-1.01) |
|
|
|
|
| Other health care | 1.16 (0.99-1.35) |
| 0.95 (0.81-1.12) |
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|
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| <.001 |
| <.001 | |
|
| No | 1 |
| 1 |
|
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| Yes, day care |
|
|
|
|
|
| Yes, elementary school |
|
| 1.07 (0.88-1.31) |
|
|
| Yes, secondary or higher education | 1.1 (0.74-1.62) |
| 0.91 (0.61-1.35) |
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aOR: odds ratio.
bSignificant associations are italicized.
cAOR: adjusted odds ratio.
dFor the categorization of country of birth into non-Western or Other Western, the definition from Statistics Netherlands was used [24].
eNot applicable.
fVariables modelled as B-splines (Figure 2).