| Literature DB >> 35969977 |
Carl Bonander1, Mats Ekman2, Niklas Jakobsson3.
Abstract
A nudge changes people's actions without removing their options or altering their incentives. During the COVID-19 vaccine rollout, the Swedish Region of Uppsala sent letters with pre-booked appointments to inhabitants aged 16-17 instead of opening up manual appointment booking. Using regional and municipal vaccination data, we document a higher vaccine uptake among 16- to 17-year-olds in Uppsala compared to untreated control regions (constructed using the synthetic control method as well as neighboring municipalities). The results highlight pre-booked appointments as a strategy for increasing vaccination rates in populations with low perceived risk.Entities:
Keywords: COVID-19; Health policy; Nudge; Pre-booked; Vaccination
Mesh:
Substances:
Year: 2022 PMID: 35969977 PMCID: PMC9354447 DOI: 10.1016/j.socscimed.2022.115248
Source DB: PubMed Journal: Soc Sci Med ISSN: 0277-9536 Impact factor: 5.379
Fig. 1First-dose vaccinations in Uppsala (treated) and average of all other 20 Swedish regions.
Vaccination share predictor means.
| Uppsala | Synthetic | Average of 20 | V | |
|---|---|---|---|---|
| Share foreign-born | .189 | .182 | .160 | .361 |
| Share high education | .180 | .157 | .138 | .033 |
| Share of COVID-19 deaths | .001 | .001 | .001 | .010 |
| Share with financial aid | .041 | .042 | .040 | .090 |
| Alcohol addiction per 100k | 54.0 | 69.6 | 89.1 | .044 |
| Share with fast internet | .862 | .868 | .836 | .265 |
| Share with high trust | .752 | .750 | .737 | .076 |
| Share NEETs | .062 | .070 | .078 | .085 |
| Share vaccinated (18–29 y) | .077 | .075 | .074 | .035 |
Notes: The period for each predictor is 2020, except for Share vaccinated (18–29 y), which refers to the mean share for all pre-intervention weeks. Variable importance weights (V) were determined via the standard synthetic control procedure.
Region weights in synthetic Uppsala.
| Region | Weight | Region | Weight |
|---|---|---|---|
| Stockholm | .133 | Västra Götaland | 0 |
| Södermanland | 0 | Värmland | 0 |
| Östergötland | .539 | Örebro | 0 |
| Jönköping | 0 | Västmanland | 0 |
| Kronoberg | .224 | Dalarna | 0 |
| Kalmar | 0 | Gävleborg | 0 |
| Gotland | 0 | Västernorrland | 0 |
| Blekinge | 0 | Jämtland | 0 |
| Skåne | 0 | Västerbotten | .104 |
| Halland | 0 | Norrbotten | 0 |
Fig. 2Effect (left), placebo (middle), and post-intervention effect size (right) plots. The left panel shows the share of first-dose vaccination by week in Uppsala (black) and synthetic Uppsala (dashed) among 16–17-year-olds. The middle panel shows effects estimated by assessing the vaccination share gaps between Uppsala and its synthetic counterpart (black) and equivalently-defined placebo gaps in all 20 control regions (gray). The right panel shows the post-intervention root mean squared error (RMSE) in vaccination uptake from the synthetic control analysis in Uppsala and all other regions.
Fig. 3Share of vaccinated 16-17-year-olds in the treated and neighboring municipalities.
Fig. 4First-dose vaccinations in treated municipalities (located in Uppsala) and in their neighboring municipalities (outside Uppsala).
Determinants of share of vaccinated 16-17-year-olds in treated and neighboring municipalities.
| (1) | (2) | (3) | (4) | |
|---|---|---|---|---|
| Treatment | 0.129*** (0.018) | 0.094*** (0.014) | 0.109*** (0.026) | 0.073 (0.028) |
| Neighbor indicators | No | No | Yes | Yes |
| Share foreign-born | No | −0.531*** (0.114) | No | −0.418 (0.273) |
| Share high education | No | 0.215** (0.084) | No | 0.150 (0.181) |
| COVID-19 deaths | No | 6.375 (5.195) | No | −4.999 (17.053) |
| Constant | 0.722*** (0.013) | 0.774*** (0.027) | 0.761*** (0.034) | 0.843*** (0.087) |
| R2 | 0.782 | 0.900 | 0.934 | 0.976 |
| Moran's I (residuals) | 0.093 | −0.191 | −0.198 | −0.409** |
| Conley SE (treatment) | 0.019*** | 0.010*** | 0.013*** | 0.013*** |
Notes: The dependent variable is the share of 16–17-year-olds vaccinated in week 49 in the 16 included municipalities. Ordinary least squares regressions controlling for Treatment (pre-booked appointments), Neighbor indicators (one dummy variable for each treated municipality, indicating its neighbors), as well as the control variables Share foreign-born, Share high education, and COVID-19 deaths. Moran's I for spatial residual autocorrelation and Conley standard errors accounting for spatial autocorrelation were computed assuming a maximum distance for spatial autocorrelation of 65 km (the minimum distance from which all area centroids shared at least one neighbor) and a Bartlett kernel using the acreg package for Stata. Other distance choices and a uniform kernel led to similar results, but standard errors could not be computed in Model 4 using a uniform kernel. *p < 0.1, **p < 0.05, ***p < 0.01.
Fig. 5Time-specific coefficients and 95% wild cluster bootstrap confidence intervals from the difference-in-differences estimation.
Vaccination share predictor means
| Uppsala | Synthetic | Average of 20 | V | |
|---|---|---|---|---|
| Share foreign-born | .189 | .170 | .160 | .028 |
| Share high education | .180 | .162 | .138 | .031 |
| Share of COVID-19 deaths | .001 | .001 | .001 | .037 |
| Share with financial aid | .041 | .040 | .040 | .097 |
| Alcohol addiction per 100k | 54.0 | 65.1 | 89.1 | .077 |
| Share with fast internet | .862 | .883 | .836 | .024 |
| Share with high trust | .752 | .765 | .737 | .076 |
| Share NEETs | .062 | .069 | .078 | .137 |
| Share vaccinated (18–29 y) | .077 | .077 | .074 | .514 |
Notes: The period for each predictor is 2020, except for Share vaccinated (18–29 y), which refers to the mean share for all pre-intervention weeks. Variable importance weights (V) were determined via the standard synthetic control procedure.
Region weights in synthetic Uppsala
| Region | Weight | Region | Weight |
|---|---|---|---|
| Stockholm | .136 | Västra Götaland | 0 |
| Södermanland | 0 | Värmland | 0 |
| Östergötland | .697 | Örebro | 0 |
| Jönköping | 0 | Västmanland | 0 |
| Kronoberg | .224 | Dalarna | 0 |
| Kalmar | 0 | Gävleborg | 0 |
| Gotland | 0 | Västernorrland | 0 |
| Blekinge | 0 | Jämtland | 0 |
| Skåne | 0 | Västerbotten | .167 |
| Halland | 0 | Norrbotten | 0 |
Vaccination share predictor means
| Uppsala | Synthetic | Average of 20 | V | |
|---|---|---|---|---|
| Share foreign-born | .189 | .177 | .160 | .339 |
| Share high education | .180 | .162 | .138 | .065 |
| Share of COVID-19 deaths | .001 | .001 | .001 | .013 |
| Share with financial aid | .041 | .037 | .040 | .097 |
| Alcohol addiction per 100k | 54.0 | 86.4 | 89.1 | .031 |
| Share with fast internet | .862 | .873 | .836 | .024 |
| Share with high trust | .752 | .756 | .737 | .001 |
| Share NEETs | .062 | .069 | .078 | .237 |
| Share vaccinated (18–29 y), dose two | .029 | .030 | .030 | .026 |
Notes: The period for each predictor is 2020, except for Share vaccinated (18–29 y), which refers to the mean share for all pre-intervention weeks. Variable importance weights (V) were determined via the standard synthetic control procedure.
Region weights in synthetic Uppsala
| Region | Weight | Region | Weight |
|---|---|---|---|
| Stockholm | .179 | Västra Götaland | 0 |
| Södermanland | 0 | Värmland | 0 |
| Östergötland | .374 | Örebro | 0 |
| Jönköping | 0 | Västmanland | 0 |
| Kronoberg | .193 | Dalarna | 0 |
| Kalmar | 0 | Gävleborg | 0 |
| Gotland | 0 | Västernorrland | 0 |
| Blekinge | 0 | Jämtland | 0 |
| Skåne | 0 | Västerbotten | .254 |
| Halland | 0 | Norrbotten | 0 |
Vaccination share predictor means
| Uppsala | Synthetic | Average of 20 | V | |
|---|---|---|---|---|
| Share foreign-born | .189 | .179 | .160 | .111 |
| Share high education | .180 | .164 | .138 | .111 |
| Share of COVID-19 deaths | .001 | .001 | .001 | .111 |
| Share with financial aid | .041 | .040 | .040 | .111 |
| Alcohol addiction per 100k | 54.0 | 62.7 | 89.1 | .111 |
| Share with fast internet | .862 | .887 | .836 | .111 |
| Share with high trust | .752 | .757 | .737 | .111 |
| Share NEETs | .062 | .070 | .078 | .111 |
| Share vaccinated (18–29 y) | .077 | .075 | .074 | .111 |
Notes: The period for each predictor is 2020, except for Share vaccinated (18–29 y), which refers to the mean share for all pre-intervention weeks. Variable importance weights (V) were determined via the standard synthetic control procedure.
Region weights in synthetic Uppsala
| Region | Weight | Region | Weight |
|---|---|---|---|
| Stockholm | .177 | Västra Götaland | 0 |
| Södermanland | 0 | Värmland | 0 |
| Östergötland | .74 | Örebro | 0 |
| Jönköping | 0 | Västmanland | 0 |
| Kronoberg | 0 | Dalarna | 0 |
| Kalmar | 0 | Gävleborg | 0 |
| Gotland | 0 | Västernorrland | 0 |
| Blekinge | 0 | Jämtland | 0 |
| Skåne | 0 | Västerbotten | .083 |
| Halland | 0 | Norrbotten | 0 |
Specifications searching
| Specification | (1a) | (1b) | (2a) | (2b) | (3a) | (3b) | (4a) |
|---|---|---|---|---|---|---|---|
| p-value | 0.048 | 0.048 | 0.048 | 0.048 | 0.048 | 0.048 | 0.048 |
| Specification | (4b) | (5a) | (5b) | (6a) | (6b) | (7a) | (7b) |
| p-value | 0.048 | 0.048 | 0.048 | 0.048 | 0.048 | 0.048 | 0.048 |
Notes: Since our data have (almost) no variation in the outcome variable in any region before the vaccination rollout, we use the vaccination share among 18–29 year olds as the main variable to match on. Specifications refer to: (1) all pre-treatment vaccination shares among 18–29 year olds, (2) the first three-fourths of the values, (3) the first half of the values, (4) odd pre-treatment values, (5) even pre-treatment values, (6) pre-treatment mean, and (7) three values. Specifications ending with b includes all additional eight covariates, while specifications ending with a, includes no additional covariates. The post-intervention effect size is largest in Uppsala in each specification, p-value = 1/21 = 0.048.
Control variable comparison between treated municipalities and their neighboring municipalities
| Treated municipality | Average of neighboring municipalities | |
|---|---|---|
| Enköping | Sala, Västerås | |
| Share foreign-born | 0.161 | 0.189 |
| Share high education | 0.208 | 0.230 |
| Share of Covid-19 deaths | 0.00256 | 0.00272 |
| Håbo | Sigtuna, Upplands-Bro | |
| Share foreign-born | 0.157 | 0.326 |
| Share high education | 0.193 | 0.218 |
| Share of Covid-19 deaths | 0.00107 | 0.00270 |
| Knivsta | Norrtälje, Sigtuna | |
| Share foreign-born | 0.144 | 0.245 |
| Share high education | 0.369 | 0.178 |
| Share of Covid-19 deaths | 0.00112 | 0.00263 |
| Uppsala | Norrtälje | |
| Share foreign-born | 0.221 | 0.135 |
| Share high education | 0.423 | 0.168 |
| Share of Covid-19 deaths | 0.00187 | 0.00254 |
| Östhammar | Norrtälje | |
| Share foreign-born | 0.096 | 0.135 |
| Share high education | 0.149 | 0.168 |
| Share of Covid-19 deaths | 0.00230 | 0.00254 |
| Tierp | Gävle | |
| Share foreign-born | 0.131 | 0.159 |
| Share high education | 0.151 | 0.216 |
| Share of Covid-19 deaths | 0.00107 | 0.00217 |
| Älvkarleby | Gävle | |
| Share foreign-born | 0.149 | 0.159 |
| Share high education | 0.155 | 0.216 |
| Share of Covid-19 deaths | 0.00630 | 0.00217 |
| Heby | Avesta, Gävle, Sala, Sandviken | |
| Share foreign-born | 0.126 | 0.165 |
| Share high education | 0.145 | 0.178 |
| Share of Covid-19 deaths | 0.00161 | 0.00227 |
Determinants of share of vaccinated 18-29-year-olds in treated and neighboring municipalities
| (1) | (2) | (3) | (4) | |
|---|---|---|---|---|
| Treatment | 0.063** (0.023) | 0.020 (0.012) | 0.042 (0.033) | 0.007 (0.022) |
| Neighbor indicators | No | No | Yes | Yes |
| Share foreign-born | No | −0.552*** (0.100) | No | −0.377 (0.210) |
| Share high education | No | 0.485*** (0.074) | No | 0.320 (0.140) |
| COVID-19 deaths | No | −2.883 (4.555) | No | −14.421 (13.133) |
| Constant | 0.745*** (0.016) | 0.768*** (0.024) | 0.781*** (0.050) | 0.834*** (0.067) |
| R2 | 0.344 | 0.897 | 0.734 | 0.974 |
| Moran's I (residuals) | −0.214 | −0.130 | −0.124 | −0.417** |
| Conley SE (treatment) | 0.029** | 0.009** | 0.016*** | 0.011 |
Notes: The dependent variable is the share of 18–29-year-olds vaccinated in week 49 in the 16 included municipalities. Ordinary least squares regressions controlling for Treatment (pre-booked appointments), Neighbor indicators (one dummy variable for each treated municipality, indicating its neighbors), as well as the control variables Share foreign-born, Share high education, and COVID-19 deaths. Moran's I for spatial residual autocorrelation and Conley standard errors accounting for spatial autocorrelation were computed assuming a maximum distance for spatial autocorrelation of 65 km (the minimum distance from which all area centroids shared at least one neighbor) and a Bartlett kernel using the acreg package for Stata. *p < 0.1, **p < 0.05, ***p < 0.01.