| Literature DB >> 32795998 |
Marcel Jonker1,2, Esther de Bekker-Grob1,2, Jorien Veldwijk1,2, Lucas Goossens1,2, Sterre Bour1, Maureen Rutten-Van Mölken1,2,3.
Abstract
BACKGROUND: Smartphone-based contact tracing apps can contribute to reducing COVID-19 transmission rates and thereby support countries emerging from lockdowns as restrictions are gradually eased.Entities:
Keywords: COVID-19; app; contact tracing; discrete choice experiment; mobile phone; participatory epidemiology; participatory surveillance; prediction; privacy; smartphone; transmission; uptake
Mesh:
Year: 2020 PMID: 32795998 PMCID: PMC7584977 DOI: 10.2196/20741
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Example discrete choice task. Note: translated; original in Dutch. *GGD = local health authorities.
Respondents’ sociodemographic characteristics for the total sample and stratified by respondents who always, sometimes, or never chose the COVID-19 app in the discrete choice experiment.a
| Demographics | Total (N=900), | Always (n=460), | Sometimes (n=214), | Never (n=226), | |
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| Male | 442 (49.1) | 215 (48.6) | 114 (25.8) | 113 (25.6) |
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| Female | 458 (50.9) | 245 (53.5) | 100 (21.8) | 113 (24.7) |
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| 15-34 | 268 (29.8) | 168 (62.7) | 76 (28.4) | 24 (9.0) |
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| 35-54 | 281 (31.2) | 131 (46.6) | 74 (26.3) | 76 (27.0) |
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| 55-74 | 265 (29.4) | 124 (46.8) | 59 (22.3) | 82 (30.9) |
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| ≥75 | 86 (9.6) | 37 (43.0) | 5 (5.8) | 44 (51.2) |
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| Low | 274 (30.4) | 134 (48.9) | 51 (18.6) | 89 (32.5) |
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| Medium | 342 (38.0) | 187 (54.7) | 79 (23.1) | 76 (22.2) |
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| High | 284 (31.5) | 139 (48.9) | 84 (29.6) | 61 (21.5) |
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| Heavily impactedb | 612 (68.0) | 304 (49.7) | 149 (24.3) | 159 (26.0) |
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| Mildly impacted | 288 (32.0) | 156 (54.2) | 65 (22.6) | 67 (23.3) |
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| Good or very good | 635 (70.6) | 322 (50.7) | 159 (25.0) | 154 (24.3) |
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| Fair | 232 (25.8) | 119 (51.3) | 49 (21.1) | 64 (27.6) |
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| Bad or very bad | 33 (3.7) | 19 (57.6) | 6 (18.2) | 8 (24.2) |
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| Lung disease | 112 (12.4) | 72 (64.3) | 19 (17.0) | 21 (18.8) |
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| Heart disease | 79 (8.8) | 40 (50.6) | 17 (21.5) | 22 (27.8) |
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| Diabetes | 87 (9.7) | 44 (50.6) | 13 (14.9) | 30 (34.5) |
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| Kidney disease | 11 (1.2) | 7 (63.6) | 2 (18.2) | 2 (18.2) |
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| Compromised immune system | 61 (6.8) | 38 (62.3) | 13 (21.3) | 10 (16.4) |
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| Yes | 218 (24.2) | 131 (60.1) | 53 (24.3) | 34 (15.6) |
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| No | 645 (71.7) | 312 (48.4) | 152 (23.6) | 181 (28.1) |
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| Yes, positive test | 14 (1.6) | 8 (57.1) | 6 (42.9) | 0 (0) |
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| Yes, negative test | 25 (2.8) | 15 (60.0) | 9 (36.0) | 1 (4.0) |
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| No | 855 (95.0) | 434 (50.8) | 197 (23.0) | 224 (26.2) |
| Owns and uses smartphone/smartwatch or tablet | 827 (91.9) | 446 (53.9) | 203 (24.5) | 178 (21.5) | |
| Uses health apps on smartphone/smartwatch or tablet | 428 (47.6) | 272 (63.6) | 100 (23.4) | 56 (13.1) | |
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| Groups of 3 people | 292 (32.4) | 108 (37.0) | 69 (23.6) | 115 (39.4) |
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| Groups of 10 people | 312 (34.7) | 196 (62.8) | 66 (21.2) | 50 (16.0) |
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| Groups of 30 people | 165 (18.3) | 107 (64.8) | 36 (21.8) | 22 (13.3) |
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| Groups of 100 people | 79 (8.8) | 34 (43.0) | 31 (39.2) | 14 (17.7) |
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| Groups of 1000 people | 52 (5.8) | 15 (28.8) | 12 (23.1) | 25 (48.1) |
aThe percentages in column 2 add up to 100% vertically, whereas the percentages in column 3-5 add up to 100% horizontally.
bHeavily impacted regions are Noord-Brabant, Limburg, Zuid-Holland, Noord-Holland, and Gelderland.
Respondents’ attitude toward COVID-19 and evaluation of the survey for the total sample and stratified by respondents who sometimes, always, or never preferred to use the COVID-19 app.a
| Attitudinal statementsb | Total (N=900), n (%) | Always (n=460), n (%) | Sometimes (n=214), n (%) | Never (n=226), n (%) | ||
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| Agree | 414 (46.0) | 309 (67.2) | 87 (40.7) | 18 (8.0) | |
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| Disagree | 191 (21.2) | 30 (6.5) | 33 (15.4) | 128 (56.6) | |
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| Agree | 447 (49.7) | 174 (37.8) | 125 (58.4) | 148 (65.5) | |
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| Disagree | 198 (22.0) | 140 (30.4) | 38 (17.8) | 20 (8.8) | |
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| Agree | 268 (29.8) | 51 (11.1) | 63 (29.4) | 154 (68.1) | |
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| Disagree | 356 (39.6) | 274 (59.6) | 68 (31.8) | 14 (6.2) | |
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| Agree | 581 (64.6) | 322 (70.0) | 134 (62.6) | 125 (55.3) | |
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| Disagree | 91 (10.1) | 38 (8.3) | 30 (14.0) | 23 (10.2) | |
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| Agree | 568 (63.1) | 311 (67.6) | 120 (56.1) | 137 (60.6) | |
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| Disagree | 119 (13.2) | 60 (13.0) | 38 (17.8) | 21 (9.3) | |
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| Agree | 198 (22.0) | 123 (26.7) | 46 (21.5) | 29 (12.8) | |
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| Disagree | 231 (25.7) | 115 (25.0) | 59 (27.6) | 57 (25.2) | |
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| Agree | 374 (41.6) | 214 (46.5) | 78 (36.4) | 82 (36.3) | |
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| Disagree | 196 (21.8) | 99 (21.5) | 59 (27.6) | 38 (16.8) | |
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| Agree | 416 (46.2) | 312 (67.8) | 84 (39.3) | 20 (8.8) | |
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| Disagree | 222 (24.7) | 41 (8.9) | 52 (24.3) | 129 (57.1) | |
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| Agree | 388 (43.1) | 307 (66.7) | 72 (33.6) | 9 (4.0) | |
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| Disagree | 250 (27.8) | 30 (6.5) | 56 (26.2) | 164 (72.6) | |
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| Agree | 738 (82.0) | 385 (83.7) | 172 (80.4) | 181 (80.1) |
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| Disagree | 48 (5.3) | 23 (5.0) | 16 (7.5) | 9 (4.0) |
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| Agree | 645 (71.7) | 373 (81.1) | 161 (75.2) | 111 (49.1) |
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| Disagree | 70 (7.8) | 23 (5.0) | 17 (7.9) | 30 (13.3) |
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| Agree | 667 (74.1) | 360 (78.3) | 158 (73.8) | 149 (65.9) |
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| Disagree | 76 (8.4) | 39 (8.5) | 21 (9.8) | 16 (7.1) |
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| Agree | 633 (70.3) | 332 (72.2) | 154 (72.0) | 147 (65.0) |
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| Disagree | 101 (11.2) | 59 (12.8) | 27 (12.6) | 15 (6.6) |
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| Agree | 617 (68.6) | 331 (72.0) | 152 (71.0) | 134 (59.3) |
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| Disagree | 50 (5.6) | 25 (5.4) | 13 (6.1) | 12 (5.3) |
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| Agree | 174 (19.3) | 90 (19.6) | 40 (18.7) | 44 (19.5) |
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| Disagree | 469 (52.1) | 259 (56.3) | 115 (53.7) | 95 (42.0) |
aThe percentages in columns 2-5 add up to 100% vertically, but in columns 3-5, 100% is the amount of people in that specific group.
bReported on respondents who completely agreed or agreed and who completely disagreed or disagreed; percentages do not count up to 100%, as respondents who answered neutral were not included in this table.
Mixed logit estimation results.
| Attributes | Population | 95% CI | Population | 95% CI | |
| No app | –3.44 (0.32) | –4.07 to –2.80 | 3.97 (0.28) | 3.43 to 4.51 | |
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| 3 people (reference) | 0 | N/Aa | 0 | N/A |
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| 10 people | 0.56 (0.09) | 0.39 to 0.74 | 1.27 (0.14) | 1.01 to 1.55 |
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| 30 people | 0.45 (0.10) | 0.25 to 0.65 | 1.77 (0.13) | 1.51 to 2.03 |
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| 100 people | 0.04 (0.12) | –0.20 to 0.28 | 2.50 (0.17) | 12.17 to 2.84 |
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| Limited information (reference) | 0 | N/A | 0 | N/A |
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| Detailed information | 0.23 (0.06) | 0.10 to 0.36 | 1.14 (0.09) | 0.97 to 1.31 |
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| Only you (reference) | 0 | N/A | 0 | N/A |
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| You and automatically the local health authorities | 0.01 (0.07) | –0.12 to 0.15 | 1.02 (0.09) | 0.83 to 1.20 |
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| You and local health authorities after your consent | 0.28 (0.07) | 0.14 to 0.42 | 0.94 (0.09) | 0.74 to 1.13 |
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| Only when someone has symptoms (reference) | 0 | N/A | 0 | N/A |
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| Everyone | 0.40 (0.09) | 0.23 to 0.57 | 1.96 (0.10) | 1.77 to 2.15 |
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| You (reference) | 0 | N/A | 0 | N/A |
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| Local health authorities | 0.05 (0.08) | –0.11 to 0.20 | 1.70 (0.08) | 1.53 to 1.87 |
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| 0 (reference) | 0 | N/A | 0 | N/A |
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| 5 | 0.85 (0.11) | 0.62 to 1.07 | 2.44 (0.13) | 2.18 to 2.70 |
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| 10 | 1.29 (0.16) | 0.97 to 1.60 | 3.70 (0.18) | 3.35 to 4.05 |
aN/A: not applicable.
Predicted COVID-19 contact tracing app adoption rates (%), stratified by age and education level.
| Apps | All (n=900), % | 15-34 years (n=268), % | 35-54 years (n=281), % | 55-74 years (n=265), % | ≥75 years (n=86), % | Low educa (n=274), % | Medium educ (n=342), % | High educ (n=284), % |
| Most preferred appb | 65.7 | 81.7 | 61.4 | 60.4 | 46.0 | 59.1 | 69.2 | 67.8 |
| Most realistic appc | 64.1 | 79.4 | 60.4 | 58.4 | 45.6 | 59.3 | 67.1 | 65.0 |
| Least preferred appd | 59.3 | 72.4 | 55.4 | 54.3 | 46.4 | 55.4 | 62.3 | 59.4 |
aeduc: education.
bSpecifications of the most preferred COVID-19 contact tracing app were the app user is allowed to meet with 10 individuals at the same time, warns the app user that they were close to a person who was infected in the last 2 weeks, warns the app user and the local health authorities (GGD) after permission, allows the app user to undergo a COVID-19 test, is updated by the app user that they tested positive for COVID-19, and does give the app user a financial incentive of €10 per month.
cSpecifications of the most realistic app were allows the app user to meet with 30 individuals at the same time, warns the app user that they were close to a person who was infected in the last 2 weeks, warns the app user, allows the app user to undergo a COVID-19 test only after they have COVID-19 symptoms, is updated by the app user that they tested positive for COVID-19, and does not give the app user a financial incentive.
dSpecifications of the least preferred app were allows the app user to meet with 3 individuals at the same time, warns the app user the date and time that they were close to a person who was infected, warns the local health authorities (GGD), allows the app user to undergo a COVID-19 test only after they have COVID-19 symptoms, is updated by the local health authorities (GGD) that the app user tested positive for COVID-19, and does not give the app user a financial incentive.
Figure 2Univariate marginal estimates for increase in predicted adoption rate; attributes level changes vs base case. Note: The base case is the most realistic COVID-19 contact tracing app that allows the user to meet with 30 individuals, warns the user that they were close to a person who was infected in the last 2 weeks, warns the user and the local health authorities (GGD), allows the user to undergo a COVID-19 test only after they have COVID-19 symptoms, is updated by the local health authorities (GGD) that the user tested positive for COVID-19, and does not give the user a financial incentive. This base case is indicated as zero change in the probability of the x-axis.