The Eco-Bio-Social Factors That Modulate Aedes aegypti Abundance in South Texas Border Communities
Abstract
:Simple Summary
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Community Selection and Sample Size
2.3. Entomological Surveillance
2.4. KAP and House Quality Surveys
2.5. Statistical Analysis
3. Results
3.1. KAP: Aedes aegypti and Zika
3.2. KAP: Prevention, Control, and Demographics
3.3. Housing Materials: Yard, Windows, and Doors
3.4. Factors Associated with Indoor and Outdoor Relative Ae. aegypti Abundance
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Income | Community | Total Households | AGO | KAP |
---|---|---|---|---|
Low | Balli | 45 | 7 | 4 |
Cameron | 85 | 6 | 6 | |
Chapa | 30 | 5 | 5 | |
Mesquite | 39 | 5 | 5 | |
Middle | Christian Ct. | 34 | 6 | 5 |
Rio Rico | 20 | 5 | 5 | |
La Vista | 63 | 6 | 4 | |
La Bonita | 67 | 7 | 6 |
Target | Offset | Fixed | Distribution (AIC) |
---|---|---|---|
Indoor female Ae. aegypti | logs (Weeks of Trapping) | TypeAC + OpenWindow + OpenDoor + WaterStorage + OtherContainers + Income + Outdoor female + AP2.1 + AP2.2 + Window1 + Window2 + Door2 | Poisson (156.4) Negative Binomial 1 (152.2) Negative Binomial 2 (145.8) |
Outdoor female Ae. aegypti | logs (Weeks of Trapping) | Vegetation + MessyYard + OpenWindow + OpenDoor + WaterStorage + OtherContainers + Tires + Income + AP2.1 + AP2.2 + Window1 + Window2 + Door1 + Door2 | Poisson (804.1) Negative Binomial 1 (337.2) Negative Binomial 2 (340.8) |
Knowledge, Attitudes and Practices | Response | No. Positive Responses/Total (%) |
---|---|---|
Mosquitoes and their diseases | Recognized a mosquito larva from picture | 17/39 (43.6) |
Recognized an adult mosquito from picture | 38/39 (97.4) | |
Believed mosquitoes are most abundant during the summer | 20/38 (52.6) | |
Believed the canals are a source for mosquitoes in their community | 17/37 (45.9) | |
Had seen a mosquito in the past few days | 27/38 (71.1) | |
Believed mosquitoes had an impact on their life | 33/38 (86.8) | |
Health risk | 24/33 (72.7) | |
Nuisance | 12/33 (36.4) | |
Considered mosquitoes a problem in their community | 33/39 (84.6) | |
Small or moderate | 21/39 (53.8) | |
Serious | 12/39 (30.7) | |
Knew that mosquitoes can transmit diseases | 34/39 (87.2) | |
Zika | 27/34 (79.4) | |
Dengue | 19/34 (55.9) | |
Chikungunya | 6/34 (17.6) | |
Malaria | 5/34 (14.7) | |
West Nile | 2/34 (5.6) | |
Knew someone that had been infected with dengue, chikungunya and/or Zika | 8/39 (20.5) | |
Zika virus | Had heard about Zika virus before this interview | 33/39 (84.6) |
Knew that Zika causes fever symptoms | 22/33 (66.7) | |
Knew that Zika may affect babies | 8/33 (24.2) | |
Knew another mode of transmission for Zika besides mosquitoes | 13/33 (39.4) | |
Sexual intercourse | 10/13 (76.9) | |
Congenital | 1/13 (7.7) | |
Considered Zika a problem in the LRGV | 22/39 (66.7) | |
Somewhat or slightly | 14/39 (35.8) | |
Very or extreme | 8/39 (29.4) | |
Worried about Zika because of family and children | 12/22 (54.5) |
Knowledge, Attitudes and Practices | Response | No. Positive Responses/Total (%) |
---|---|---|
Prevention and control of mosquitoes | Had been bitten by mosquitoes inside or outside the home in the past week | 22/39 (56.4) |
Stored water on their property for plants and flowers | 7/10 (70.0) | |
Left windows open for ventilation | 19/39 (48.2) | |
Left door open for ventilation | 17/39 (43.9) | |
Believed that they should do something if they had a mosquito problem in their property | 37/39 (94.9) | |
Use insect repellent | 29/37 (78.4) | |
Spray insecticide | 13/37 (35.1) | |
Dump stagnant water | 6/37 (16.2) | |
Call city or county | 5/37 (13.9) | |
Limited outdoor activities because of mosquitoes | 25/39 (64.1) | |
AGO intervention | Would support an AGO intervention in their community if the three traps were free and maintenance was provided | 37/39 (94.9) |
Would support intervention if AGO traps were free, but household need to provide maintenance | 23/37 (62.2) | |
Would support intervention if AGO traps were $15 each and household provided maintenance | 9/37 (25.0) |
Question | Variable | No. Positive Responses/Total (%) |
---|---|---|
Size of lot (m2) | 262–600 | 9/39 (23.1) |
601–1000 | 19/39 (48.7) | |
1001–1204 | 11/39 (28.2) | |
No. of bedrooms | 1–2 | 18/39 (46.1) |
3–4 | 19/39 (48.7) | |
5 | 2/39 (5.1) | |
Length of vegetation in the yard | Short (< 5 cm) | 19/39 (48.7) |
Medium (5–10 cm) | 17/39 (43.6) | |
Long (>10 cm) | 3/39 (7.7) | |
Houses with containers in peridomicile | Plant pots | 35/39 (89.7) |
Tin cans | 18/39 (46.2) | |
Tires | 17/39 (43.6) | |
Drum water barrels | 2/39 (5.1) | |
Wall material | Timber/Metal | 18/39 (46.1) |
Cement | 3/39 (7.7) | |
Brick | 18/39 (46.2) | |
Type of roof and material | Flat and cement | 2/39 (5.1) |
Pitched and asphalt shingles | 37/39 (94.9) | |
Type of A/C unit | None | 1/39 (2.6) |
Window mounted | 17/39 (43.6) | |
Central system | 21/39 (53.9) | |
Window | With mesh | 259/389 (66.6) |
No holes | 232/259 (89.2) | |
Holes < than 0.5cm | 15/259 (5.8) | |
Holes ≥ than 0.5cm | 13/259 (5.0) | |
Doors | Exterior door | 91/104 (87.5) |
Exterior door with screen | 47/91 (51.6) | |
Exterior door with gap in the frame | 20/91 (21.9) |
Variable | Exp (Estimate) | Estimate | Std. Error | 95% CI |
---|---|---|---|---|
(Intercept) | −5.51 | 0.86 | −7.35–−3.87 | |
Type AC (None) | 1.10 | 0.09 | 1.13 | −2.07–2.67 |
Type AC (Window) | 4.68 | 1.54 | 0.57 | 0.39–2.74 * |
OpenWindow (Yes) | 3.73 | 1.32 | 0.58 | 0.21–2.58 * |
WaterStorage (Yes) | 2.83 | 1.04 | 0.53 | −0.05–2.10 |
OtherContainers | 1.01 | 0.01 | 0.00 | 0.005–0.02 |
AP2.1 | 0.49 | −0.71 | 0.22 | −1.16–−0.27 * |
Window1 | 2.12 | 0.75 | 0.27 | 0.23–1.29 * |
Door2 | 1.66 | 0.51 | 0.26 | 0.01–1.09 * |
Outdoor female | 1.01 | 0.01 | 0.00 | 0.005–0.02 |
Variable | Exp (Estimate) | Estimate | Std. Error | 95% CI |
---|---|---|---|---|
(Intercept) | 2.27 | 0.28 | 1.70–2.81 | |
Vegetation (>51%) | 0.38 | −0.96 | 0.30 | −1.55–−0.36 * |
OpenDoor | 0.30 | −1.19 | 0.27 | −1.74–−0.66 * |
Tires | 0.92 | −0.08 | 0.02 | −0.12–−0.04 * |
Income (>$75k) | 0.81 | −0.21 | 0.38 | −0.98–0.53 |
Income ($25–$50k) | 5.01 | 1.61 | 0.31 | 0.99–2.23 * |
AP2.1 | 1.65 | 0.50 | 0.11 | 0.27–0.72 * |
AP2.2 | 1.40 | 0.34 | 0.15 | 0.01–0.64 * |
Door1 | 1.23 | 0.20 | 0.07 | 0.01–0.34 * |
Door2 | 0.70 | −0.35 | 0.09 | −0.54–−0.17 * |
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Juarez, J.G.; Garcia-Luna, S.M.; Medeiros, M.C.I.; Dickinson, K.L.; Borucki, M.K.; Frank, M.; Badillo-Vargas, I.; Chaves, L.F.; Hamer, G.L. The Eco-Bio-Social Factors That Modulate Aedes aegypti Abundance in South Texas Border Communities. Insects 2021, 12, 183. https://doi.org/10.3390/insects12020183
Juarez JG, Garcia-Luna SM, Medeiros MCI, Dickinson KL, Borucki MK, Frank M, Badillo-Vargas I, Chaves LF, Hamer GL. The Eco-Bio-Social Factors That Modulate Aedes aegypti Abundance in South Texas Border Communities. Insects. 2021; 12(2):183. https://doi.org/10.3390/insects12020183
Chicago/Turabian StyleJuarez, Jose G., Selene M. Garcia-Luna, Matthew C. I. Medeiros, Katherine L. Dickinson, Monica K. Borucki, Matthias Frank, Ismael Badillo-Vargas, Luis F. Chaves, and Gabriel L. Hamer. 2021. "The Eco-Bio-Social Factors That Modulate Aedes aegypti Abundance in South Texas Border Communities" Insects 12, no. 2: 183. https://doi.org/10.3390/insects12020183
APA StyleJuarez, J. G., Garcia-Luna, S. M., Medeiros, M. C. I., Dickinson, K. L., Borucki, M. K., Frank, M., Badillo-Vargas, I., Chaves, L. F., & Hamer, G. L. (2021). The Eco-Bio-Social Factors That Modulate Aedes aegypti Abundance in South Texas Border Communities. Insects, 12(2), 183. https://doi.org/10.3390/insects12020183