| Literature DB >> 27716420 |
Zachary S Brown1, Randall A Kramer2,3, David Ocan4, Christine Oryema4.
Abstract
BACKGROUND: Insecticide-based tools remain critical for controlling vector-borne diseases in Uganda. Securing public support from targeted populations for such tools is an important component in sustaining their long-run effectiveness. Yet little quantitative evidence is available on the perceived benefits and costs of vector control programmes among targeted households.Entities:
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Year: 2016 PMID: 27716420 PMCID: PMC5053089 DOI: 10.1186/s40249-016-0190-1
Source DB: PubMed Journal: Infect Dis Poverty ISSN: 2049-9957 Impact factor: 4.520
Fig. 1Study location and surveyed villages
Fig. 2Choice experiment implementation. a information frame, b choice task script, c visual aid, d example choice task
Summary statistics
| Variable | Mean/Frequency | Standard Dev. | External statistic5 |
|---|---|---|---|
| Number of households surveyed | 588 | ||
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| Household size (members) | 6.1 | 2.6 | 4.95(a) |
| Average household age (years) | 21 | 11 | 205(a) |
| Number of children under 10 | 2.1 | 1.6 | 1.85(a) |
| Value of household assets | $266 | $459 | |
| Monthly household income | $44 | $71 | |
| Education ≥ some secondary1 | 11.2 % | -- | 16 %5(b) |
| Monthly malaria incidence1,2 | |||
| Total population | 0.17 | 0.24 | |
| Children under 10 | 0.24 | 0.35 | |
| Participated in previous IRS | |||
| Cluster weights only | 80 % | -- | 93 %5(c) |
| Cluster & household weights1 | 83 % | -- | |
| Mosquito nets | |||
| per household | 1.6 | 1.8 | 1.45(a) |
| per person1,3 | 0.26 | 0.35 | |
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| Age | 39 | 15 | |
| Female | 54 % | -- | |
| Education | 27 % | -- | |
| Ill with malaria in past month?2 | 13 % | -- | |
| Perceived malaria risk4 | 0.33 | 0.22 | |
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| Mosquitoes cause malaria1 | 90 % | -- | |
| Standing water predicts mosquito abundance1 | 54 % | -- | |
| IRS is effective1 | 82 % | -- | |
Notes: Statistics calculated using sampling weights adjusting for cluster sampling, unless otherwise noted. 1. Sampling weights accounting for both cluster sampling and household size used for these statistics, 2. Malaria diagnosis measures are self-reports indicating whether each member in the household was diagnosed with malaria in the past month by going “to the health facility where they took blood,” so this incidence measure is an underestimate of actual malaria incidence in the population at the time of study. Other, less conservative measures are reported in the survey, but are not shown here. 3. Refers to both insecticide-treated or untreated, 4. Measured as respondent subjective expectation of how many people out of 10 would fall ill with malaria in next 30 days, 5. External data-sources used for comparison: (a) MIS [39], for ‘Mid Northern’ subpopulation where available, otherwise ‘Rural,’ (b) DHS [40], for ‘North’ subpopulation, (c) PMI [48]
Description of choice experiment attributes and levels
| Attribute | Description | Levels and values |
|---|---|---|
| Malaria risk | Average fraction of people out of 10 getting sick with malaria in an average month. | 1/10 to 9/10, increments of 1/10 |
| Compensation | One-time payment offered to respondent (in place of IRS).a | $0, $4, $22, $43, $65, $217 |
| DDT | Frequency that DDT is sprayed (for IRS programmes) | 0,1,2, or 4 times per year |
| ICON | Frequency that ICON is sprayed (for IRS programmes), mutually exclusive with DDT. | 0,1,2, or 4 times per year |
Notes: aCompensation amounts were described to respondents in local currency (Ugandan shillings), but are presented here in USD 2009 for ease of interpretation
Summary outcomes from the choice experiment
| Frequency | 95 % Confidence Interval | |
|---|---|---|
| IRS alternative selecteda | 82 % | (81 %–87 %) |
| using DDT | 42 % | (39 %–46 %) |
| using lambda-cyhalothrin (ICON) | 40 % | (38 %–44 %) |
| Always selectedb | ||
| Money alternative | 8 % | (6 %–11 %) |
| IRS alternative | 74 % | (70 %–78 %) |
| DDT alternative | 13 % | (9 %–16 %) |
| ICON alternative | 10 % | (7 %–13 %) |
| Lowest malaria risk alternative | 31 % | (26 %–35 %) |
Notes: Sampling weights applied to account for cluster sampling. a Percentage of choice tasks in sample (3 per respondent). b Percentage of survey respondents exhibiting one of the listed behavioural patterns
Fig. 3Percent of choice tasks in which money selected over IRS, by cost-effectiveness ratio. Error bars show 95 % confidence interval of mean estimate of 1 686 choice tasks distributed across 588 respondents. Sample weights used in computation
Estimated annual willingness to accept (WTA)
| Conditional logit modela | Latent class logit modelb | |||||
|---|---|---|---|---|---|---|
| Class 1 (High WTA) | Class 2 (Low WTA) | |||||
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| Foregone 10 % malaria risk reduction | $8.94*** | ($3.40) | $19.35*** | ($5.35) | $0.38 | ($0.31) |
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| DDT-based | $56.38*** | ($14.57) | $87.53*** | ($20.43) | -$1.97*** | ($0.94) |
| ICON-based | $53.78*** | ($13.69) | $84.32*** | ($20.01) | -$2.79*** | ($1.07) |
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| Unconditional | 80 % | 20 % | ||||
| (w/ sample weights) | 82 % | 18 % | ||||
| Conditional | 81 % | 19 % | ||||
| (w/ sample weights) | 84 % | 16 % | ||||
| Respondents | 588 | 588 | ||||
| Choice tasks per respondent | 3 | 3 | ||||
| Model degrees of freedom | 4 | 25 | ||||
| Log-likelihood | −1 376 | −1 166 | ||||
Notes: ***, ** and * indicate statistical significance at the 1, 5 and 10 % levels, respectively. Computations based on conditional and latent class logit model estimates (Additional file 2: Table A1). A 10 % discount rate is applied to convert the choice model coefficients to annual WTA, according to estimates reported by Bauer and Chytilová [36]. Dollar values in 2009 USD. Standard errors calculated clustering at the respondent level (i.e. across choice tasks). a Model estimated with sampling weights. Model estimated without sampling weights yields similar results, but with a 34 % lower (in magnitude) malaria risk WTA and a log-likelihood value of −1419. b Model and reported log-likelihood first estimated without sampling weights, due to software limitations. To account for sampling design, sampling weights applied to class membership model and imputed class sizes reported here with and without sample weights
Marginal effects of household and respondent covariates on IRS preferences
| Prob. in high-WTA group | Marginal effect on expected WTA to forego: | ||||
|---|---|---|---|---|---|
| Marginal effect | Std. Err. | 10 % decrease in malaria risk | One round of DDT | One round of ICON | |
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| Household size (members) | +0.39 % | (0.706 %) | +$0.07 | +$0.35 | +$0.34 |
| Average household age (years) | −0.34 %* | (0.191 %) | -$0.06 | -$0.30 | -$0.29 |
| Number of children under 10 | −0.93 % | (1.309 %) | -$0.18 | -$0.83 | -$0.81 |
| Value of household assets | −0.01 % | (0.004 %) | -$0.00 | -$0.01 | -$0.01 |
| Monthly household income | +0.05 % | (0.038 %) | +$0.01 | +$0.04 | +$0.04 |
| Monthly malaria incidence | −4.06 % | (7.526 %) | -$0.77 | -$3.63 | -$3.54 |
| Participated in previous IRSa | +8.53 % | (7.210 %) | +$1.62 | +$7.63 | +$7.43 |
| Mosquito nets per person | +9.70 %** | (4.862 %) | +$1.84 | +$8.68 | +$8.45 |
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| Age | +0.11 % | (0.132 %) | +$0.02 | +$0.10 | +$0.10 |
| Female1 | −5.71 %** | (2.916 %) | -$1.08 | -$5.11 | -$4.97 |
| Education | −6.26 % | (4.423 %) | -$1.19 | -$5.61 | -$5.46 |
| Ill with malaria in past month?a | +5.05 % | (3.886 %) | +$0.96 | +$4.52 | +$4.40 |
| Perceived malaria risk | +11.10 % | (9.599 %) | +$2.10 | +$9.93 | +$9.67 |
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| Mosquitoes cause malaria | +3.56 % | (5.677 %) | +$0.68 | +$3.19 | +$3.10 |
| Standing water predicts mosquito abundance | +7.56 %*** | (2.787 %) | +$1.43 | +$6.77 | +$6.59 |
| IRS is effective | +19.45 %*** | (6.897 %) | +$3.69 | +$17.41 | +$16.95 |
Notes: Estimated covariate effects from the latent class logit model (Table 4 and Additional file 2: Table A1). ***, ** and * indicate statistical significance at the 1, 5 and 10 % levels, respectively. For WTA calculations, 10 % discount rate is applied to convert the choice model coefficients to annual WTA [36]. a Marginal effect calculated for discrete change in binary variable