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Article

Comparison of the Trapping Efficacy of Locally Modified Gravid Aedes Trap and Autocidal Gravid Ovitrap for the Monitoring and Surveillance of Aedes aegypti Mosquitoes in Tanzania

by
Jane Johnson Machange
1,2,*,
Masudi Suleiman Maasayi
1,2,
John Mundi
2,
Jason Moore
2,3,4,
Joseph Barnabas Muganga
2,
Olukayode G. Odufuwa
2,3,4,5,
Sarah J. Moore
1,2,3,4 and
Frank Chelestino Tenywa
2,3,4
1
School of Life Sciences and Bio-Engineering, The Nelson Mandela African Institution of Science and Technology (NM-AIST), Tengeru P.O. Box 447, Tanzania
2
Vector Control Product Testing Unit, Environmental Health and Ecological Science Department, Ifakara Health Institute, Bagamoyo P.O. Box 74, Tanzania
3
Vector Biology Unit, Department of Epidemiology and Public Health, Swiss Tropical and Public Health Institute, Kreuzstrasse 2, 4123 Allschwil, Switzerland
4
Faculty of Science, University of Basel, Petersplatz 1, 4001 Basel, Switzerland
5
MRC International Statistics and Epidemiology Group, London School of Hygiene and Tropical Medicine, Keppel Street, London WC1E 7HT, UK
*
Author to whom correspondence should be addressed.
Insects 2024, 15(6), 401; https://doi.org/10.3390/insects15060401
Submission received: 10 April 2024 / Revised: 8 May 2024 / Accepted: 24 May 2024 / Published: 30 May 2024
(This article belongs to the Section Medical and Livestock Entomology)

Abstract

:

Simple Summary

Mosquito traps are widely used for the monitoring and surveillance of mosquito vectors in many mosquito-borne disease-endemic countries. However, the costs and efficacy of traps remain a great challenge. In this study, we compared the trapping efficacy of locally modified Gravid Aedes Trap (GAT) and Autocidal Gravid Ovitrap (AGO) for dengue vector (Aedes aegypti) in a semi-field and field settings. The GAT was lined with pyrethroid-treated nets as a killing agent, while the AGO adhered with a sticky board to capture mosquitoes. We also compared the locally modified traps baited with either yeast or grass infusion with BG-Sentinel (BGS) with BG lure (a standard trap for capturing Aedes mosquitoes). Our findings showed that the GAT was more efficacious than the AGO in both semi-field and field settings. Additionally, there was no significant difference between yeast-baited and grass-baited GAT traps in capturing mosquitoes, although yeast was easier to use. When compared to a standard trap (BGS), GAT showed no difference in capturing Aedes mosquitoes in a semi-field; however, in the field setting, BGS outperformed the modified GAT.

Abstract

The study assessed the trapping efficacy of locally modified (1) Gravid Aedes Trap (GAT) lined with insecticide-treated net (ITN) as a killing agent and (2) Autocidal Gravid Ovitrap (AGO) with sticky board in the semi-field system (SFS) and field setting. Fully balanced Latin square experiments were conducted to compare GAT lined with ITN vs. AGO, both with either yeast or grass infusion. Biogent-Sentinel (BGS) with BG-Lure and no CO2 was used as a standard trap for Aedes mosquitoes. In the SFS, GAT outperformed AGO in collecting both nulliparous (65% vs. 49%, OR = 2.22, [95% CI: 1.89–2.60], p < 0.001) and gravid mosquitoes (73% vs. 64%, OR = 1.67, [95% CI: 1.41–1.97], p < 0.001). Similar differences were observed in the field. Yeast and grass infusion did not significantly differ in trapping gravid mosquitoes (OR = 0.91, [95% CI: 0.77–1.07], p = 0.250). The use of ITN improved mosquito recapture from 11% to 70% in the SFS. The same trend was observed in the field. Yeast was chosen for further evaluation in the optimized GAT due to its convenience and bifenthrin net for its resistance management properties. Mosquito density was collected when using 4× GATs relative to BGS-captured gravid mosquitoes 64 vs. 58 (IRR = 0.82, [95% CI: 0.35–1.95], p = 0.658) and showed no density dependence. Deployment of multiple yeast-baited GAT lined with bifenthrin net is cost-effective (single GAT < $8) compared to other traps such as BGS ($160).

1. Introduction

Dengue fever is a rapidly growing public health concern in tropical and subtropical regions [1,2], with a dramatic increase in disease incidence in the past fifty years [3,4]. This estimated increase is related to the rapid spread of highly competent dengue vectors [5] due to unplanned urbanization, climate change [1,2] and intercontinental trading [3]. There is some genetic evidence that Aedes aegypti mosquitoes may have been reintroduced to Africa from the Americas [6]. This reintroduction may explain the upsurge in dengue epidemics currently witnessed across the African continent [7]. Between 1990 and 2019, dengue transmission has increased by 400% in sub-Saharan Africa [8].
Currently, available options for dengue prevention primarily involve vector control and surveillance [1,2,9]. Despite the rapid spread of dengue in Africa, vector surveillance remains limited [10], underscoring the critical role of mosquito sampling tools in detecting and estimating vector species composition, biology, and ecology [11]. This information from vector surveillance is crucial for informing proactive Aedes control operations [9]. However, the majority of existing vector control is primarily focused on malaria vectors, which may target times and places that do not overlap with Aedes vectors.
Various sampling tools for monitoring adult mosquitoes have been developed to provide information about the predominant vectors and the impact of the interventions [12,13,14]. Lethal ovitraps (gravid traps) such as Gravid Aedes Trap (GAT) and Autocidal Gravid Ovitrap (AGO) are among the most widely used traps for sampling Aedes mosquitoes and are primarily designed to capture gravid mosquitoes [15]. These are passive traps that use water and organic materials to attract mosquitoes seeking a place for oviposition [16,17,18]. Mosquitoes are captured by either a sticky surface, oil, or insecticide lined inside the GAT [12] or an adhesive sticky board in AGO traps [19]. Both GAT and AGO are simple, lightweight, and do not require electricity to function. Although their primary purpose is monitoring, they also show great promise as a control tool [20] because both traps function based on a “lure and kill” strategy, effectively reducing the adult population [19,20].
Aedes mosquitoes tend to lay a single batch of eggs in multiple breeding sites through “skip oviposition” to ensure the survival of at least some eggs [21,22]. The behavior may be exploited for mosquito control through the use of lethal ovitraps. Gravid traps are advantageous because they can capture gravid Aedes mosquitoes, which are more likely to be infected with the dengue virus [23,24] due to imbibing a blood meal and may therefore also be used for virus surveillance. Although gravid traps are designed for capturing gravid (egg-laying) mosquitoes, they may also capture non-gravid and non-blood fed (nulliparous) mosquitoes that are resting.
The BGS is a fan-operated trap with a lure to attract mosquitoes. It is a standard method that is effective for sampling host-seeking Aedes mosquitoes [25,26]. However, the BGS trap is costly and requires electricity and maintenance [20]. When compared to the standard trap in Brazil, GAT captured a lower number of adult mosquitoes but collected a higher number of gravid mosquitoes than BGS [27]; in Guinea, gravid traps caught a similar number of gravid but a lower number of unfed Aedes [28]. The optimal trap for Aedes sampling is not universal across the globe [29]. This may be attributed to the differences in Aedes ecology [30] and, most importantly, the social, economic, and operational constraints of different countries. Therefore, it is necessary to assess the relative trapping efficiency of the traps from an ecological, economic, and operational perspective including considerations for scalability. Previous reports have evaluated the trapping efficacy of various trap types on Ae. aegypti mosquitoes [16,20,27,31,32]. However, there are limited data from Tanzania regarding the efficacy of the Aedes surveillance traps for dengue vector population monitoring. Given that Tanzania is among the nations impacted by the dengue virus, where all four dengue serotypes co-circulate [33,34,35], it is crucial to pinpoint a cost-effective trap for monitoring dengue vectors. This study used modified GAT and AGO traps using local materials, developed to fit the social, economic, and operation modality of Tanzania. GAT was lined with insecticide-treated nets (ITN) and AGO with sticky board, enhanced with yeast or grass infusion, and evaluated in reference to BGS as a ‘standard’ measure of mosquito density. The evaluation was conducted in the semi-field and field settings in Bagamoyo, Tanzania.

2. Materials and Methods

2.1. Study Area

Five experiments were conducted in Bagamoyo, located 70 km north of Dar es Salaam, one of the fastest growing cities in Africa, which is found on the Indian Ocean coast at latitude 6°25′59.9988″ S and longitude 38°54′0.0072″ E [36]. The geolocation latitude (tropical area) provides a conducive environment for Aedes mosquitoes to thrive. Bagamoyo experiences annual rainfall ranging between 800–1000 mm, a temperature between 22–33 °C, and a relative humidity of 73% [37]. Trap optimization was carried out in the semi-field system (SFS) [37] of the Ifakara Health Institute (IHI) in Ifakara Ambient Chamber Test (IACT) [38]. The IACT chamber is 3.5 m long, 2.3 m wide, and 2 m tall [38]. It is made of white netting and cloth, with one side that can be opened for people and equipment entry, and it closes with a zipper to ensure mosquito retention. Semi-field experiments were carried out in IACT with a temperature and humidity range between 24 to 28 °C and relative humidity 60 to 90% while field experiments were carried out in hotels with high densities of Aedes mosquitoes.

2.2. Traps and Attractant Development

2.2.1. Gravid Aedes Trap (GAT)

A modified GAT [13,39] (Figure 1a) is made of a (1) sixteen-liter bucket covered with black cloth as a base that contains 3 liters of infusion with drainage holes drilled above 3 L capacity to prevent the trap from overfilling; (2) a translucent inverted ten-liter bucket lined with a net; (3) black mosquito mesh placed between the translucent bucket and the base to prevent mosquitoes from reaching the infusion; and (4) a three-liter bucket with the base removed and covered with black cloth as a mosquito entrance.

2.2.2. Autocidal Gravid Ovitrap (AGO)

A modified AGO [20] (Figure 1b) is made of (1) a ten-liter black bucket as a base that contained 3 L of infusion with drainage holes drilled above 3 L capacity to prevent the trap from overfilling; (2) black mosquito mesh placed between the bottom of the trap entrance and the base to prevent mosquitoes from reaching the infusion; (3) a sticky board lining (Rentokil FICS mk1, Barrettine Environmental Health) the inner walls of 3-L black bucket; (4) three-liter black bucket with the base removed, which served as a trap entrance; and (5) a black lid with 120–150 holes of 3 cm placed at the top of the trap entrance to prevent debris from entering the trap.

2.2.3. Trap Infusion

To increase the attractiveness of gravid traps (GAT and AGO) for mosquitoes, two types of infusions were made using grass or yeast. Grass infusion was prepared by mixing 72 g of dry local grass with 10 g of baker’s yeast (Saccharomyces cerevisiae) in 12 L of tap water. Yeast infusion consisted of 22 g of baker’s yeast mixed with 12 L of tap water. Yeast was chosen as the main ingredient due to its ability to enhance bacterial growth in the water. Water was measured using a beaker, while dry grass and yeast were measured using a weighing scale. Both infusions were combined in a 20-L container and agitated with a stirring rod until thoroughly mixed. Each mixture was left to ferment for three days and shaken once daily. The solutions were stored in labeled tightly sealed black buckets away from sunlight. Fresh infusion was added two weeks after deploying the trap and infusion.

2.2.4. Biogent Sentinel Trap (BGS)

The BGS (BG-Sentinel 2 (BioGents, Regensburg, Germany) with the BG lure cartridge without carbon dioxide was used as a standard trap and proxy of mosquito density in this study (Figure 1c). The trap is powered by a 12-volt battery and comprises a white lid with a collapsible dark blue plastic container with a flexible metal frame. The BG lure cartridge, a combination of caproic acid, lactic acid, and ammonia, which mimics human odor and lasts for 3–6 months post-opening [29]. No additional carbon dioxide was used in the traps.

2.3. Mosquitoes

All SFS experiments were conducted using nulliparous (aged 3–5 days) and gravid (aged 5–8 days) female Ae. aegypti mosquitoes (Bagamoyo strain, established in 2015). The mosquitoes were reared according to MR4 guidelines [40] at 27 ± 2 °C temperature and 75 ± 10% humidity. Larvae were fed with cat biscuits (Whiskas, South Africa) while adults were maintained with 10% w/v sugar solution ad libitum. For egg-laying, female adult mosquitoes were fed with cow blood through a membrane-feeding technique. Five- to eight-day-old mosquitoes were selected from the cage and fed with cow blood. The blood-fed mosquitoes reached the gravid stage after 48 h. Groups of 30 gravid mosquitoes were transferred into small cages and marked with fluorescent powder for easy differentiation from the nulliparous ones. Mosquitoes (30 nulliparous and 30 gravid) were left for 1 h to acclimatize before releasing into the experimental IACT chamber. The collected female Ae. aegypt in the field setting were sorted according to their abdominal status unfed as nulliparous, fed, and gravid [41].

2.4. Experimental Design and Procedure

2.4.1. Experiment 1: Comparison of Trapping Efficacy of Gravid Aedes Trap (GAT) against Autocidal Gravid Ovitrap (AGO) in the SFS

From June to August of 2022, a 5 × 5 balanced Latin square design in five IACT chambers over 25 nights was conducted to evaluate the trapping efficacy of (i) BGS trap-baited with BG lure (standard trap), (ii) GAT with yeast infusion, (iii) GAT with dry grass infusion, (iv) AGO with yeast infusion, and (v) AGO with dry grass infusion were deployed into each IACT chamber (Figure 2A). In total, 30 nulliparous and 30 gravid Ae. aegypti were released into each chamber at 09:00 h. Twenty-four hours post the release, the traps were assessed for the presence of recaptured mosquitoes according to their life stage (nulliparous or gravid). The un-trapped mosquitoes in the IACT were collected using a Prokopack aspirator [40] by first collecting dead mosquitoes on the floor, then followed by the alive ones on the net walls and roof. The infusions in each GAT and AGO were changed every two weeks while the traps were rotated between chambers on a nightly basis.

2.4.2. Experiment 2: Comparison of Trapping Efficacy of Gravid Aedes Trap (GAT) Lined with Insecticide-Treated Net in the SFS

In November 2022, a 4 × 4 balanced Latin square design using four IACT chambers for 16 nights was conducted to evaluate the efficacy of insecticide-treated nets (ITN) as a lining for locally made GAT using the following arms: (i) BGS trap-baited with BG lure (standard trap), (ii) GAT with permethrin-treated net and yeast lure, (iii) GAT with bifenthrin treated net and yeast lure, and (iv) GAT with untreated net (Safi net) (Figure 2B). Fifty 5–8 days old gravid Ae. aegypti mosquitoes were released per chamber at 10:00 h. Twenty-four hours post the release, all mosquitoes from each I-ACT chamber and trap were collected as described in experiment 1. Traps were rotated between the chambers on a nightly basis.

2.4.3. Experiment 3: Evaluation of the Trapping Efficacy of Gravid Aedes Trap (GAT) against the Autocidal Gravid Ovitrap (AGO) in the Field Setting

Between September to December 2022, a 5 × 5 Latin square design, as described in experiment 1, was replicated two times in each of the two hotels to give 50 nights of collection per hotel. At each study site, five locations were selected and marked. Each of the five traps was evaluated in each of the five locations on each site (Figure 2C), by daily rotation to account for the influence of the location on mosquito density. The traps were set at 10:00 h and assessed for the presence of trapped mosquitoes after 24 h. Mosquitoes collected were transported to the laboratory for morphological species identification only.

2.4.4. Experiment 4: Evaluation of the Trapping Efficacy of Gravid Aedes Trap (GAT) Lined with Bifenthrin Net in the Field Setting

In December 2022, a 3 × 3 Latin square design was performed over 9 days per study site, where three traps, (1) BGS with lure (positive control), (2) GAT augmented with bifenthrin and yeast, and (3) GAT augmented with untreated net (negative control) and yeast, were deployed in three locations at 15 m apart at each of the two study sites (Figure 2D). The traps were deployed at 10:00 h and left for 24 h before collecting the trapped mosquitoes. The captured mosquitoes were transported to the laboratory for morphological species identification only. The traps were rotated between locations daily in order to account for any bias in trapping that could be influenced by location.

2.4.5. Experiment 5: Evaluation of the Efficacy of Four Gravid Aedes Trap (GAT) Lined with Bifenthrin Net Baited with Yeast Relative to One BGS (BG-Sentinel) Trap in the Field Setting

Between October and November 2023, four GAT traps and one BGS trap were deployed at 10:00 h in five different locations and then left for 24 h. The captured mosquitoes were retrieved from the traps and categorized according to their physiological stages (non-blood-fed, blood-fed, and gravid) (Figure 2E). Traps were stationed in one location for three days in a testing site, 15 m apart. Then, after three days, the traps were rotated simultaneously to control for locational bias (for the BGS) following a 5 × 5 Latin square design for 30 days. After deployment, captured mosquitoes were transported to the laboratory for identification of species and physiological status. Data from the four GATs were pooled.

2.5. Data Management and Statistical Analysis

All data were collected into hardcopy and then double entered into Microsoft Excel spreadsheet version 16.78 to develop a dataset that was imported into STATA 17 (Stata Statistical Software: Release 17. College station, TX, USA: StataCorp, LLC) [42] for analysis. Descriptive statistics were performed to estimate the percentage arithmetic mean with 95% confidence intervals (CI) of Ae. aegypti for each trap in SFS and geometric mean with 95% confidence intervals (CI) of Ae. aegypti for each trap in the field.

2.5.1. Semi-Field Experiments

Binomial logistic regression with mixed effects was performed to analyze the proportion of mosquitoes recaptured as the outcome. Trap types (BGS, AGO, and GAT), lure (grass or yeast), and trap location (chamber) were categorical fixed effects and the experimental day was a random effect as mosquito batches may vary. The same analysis was performed separately for nulliparous and gravid mosquitoes. Odds ratios (OR) with 95% CI were estimated.

2.5.2. Field Experiments

Mixed effect negative binomial regressions were performed to compare the number of mosquitoes captured between the traps. Trap type, lure, and sampling stations were categorical fixed effects and experimental day was a random effect to account for daily heterogeneity in mosquito densities. The same analysis was performed separately for non-blood-fed, blood-fed, and gravid mosquitoes. Incidence rate ratios (IRR) with 95% CI were estimated. Bland–Altman plots were used to assess the agreement of captured female mosquitoes between the BGS (standard) and GAT traps and to examine mosquito density dependence in trap performance.

3. Results

3.1. Experiment 1: Comparison of Trapping Efficacy of Gravid Aedes Trap (GAT) and Autocidal Gravid Ovitrap (AGO) in the Semi-Field System

Of 7612 mosquitoes released (both nulliparous and gravid) in the semi-field system (SFS), 66% (n = 5042) were recaptured by the traps. Recapture was 70% (n = 2105) for the GAT, 56% (n = 1699) for the AGO, and 79% (n = 2105) for the BG trap (Table 1). The GAT with dry grass caught 62% (n = 1077) and the GAT with yeast infusion caught 57% (n = 1028) of the released mosquitoes. The AGO with dry grass caught 49% (n = 866) and the AGO with yeast infusion caught 45% (n = 833) of the released mosquitoes (Figure 3).
The GAT with yeast recaptured an average of 10% fewer mosquitoes, 63% of nulliparous and 73% of gravid mosquitoes, while the BGS recaptured an average of 73% nulliparous and 83% of gravid mosquitoes, which were both statistically lower but comparable to the BGS.
The GAT had higher trapping efficacy than AGO for both nulliparous 65% vs. 49% (OR = 2.22, [95% CI: 1.90–2.61], p < 0.001) and gravid mosquitoes 73% vs. 64% (OR = 1.67, [95% CI: 1.41–1.97], p < 0.001).
When infusions used in the ovitraps (GAT and AGO) were compared, traps with yeast infusion recaptured a significantly lower proportion of nulliparous mosquitoes (OR = 0.83 [95% CI: 0.71–0.97] p = 0.018) compared to those traps with grass infusions (OR = 1) and no significant difference against gravid mosquitoes (OR = 0.91, [95% CI: 0.77–1.07], p = 0.250) (Table 1).
The BGS had the highest trapping efficacy than any of the traps and lure combinations at trapping mosquitoes of both physiological stages in the SFS (Table 1). It recaptured more mosquitoes overall than GAT (OR = 0.56, [95% CI: 0.48–0.66], p < 0.001) and AGO traps (OR = 0.30, [95% CI: 0.25–0.35], p < 0.001), regardless of the lure used in the gravid traps (Table 1).
The GAT with yeast recaptured an average of 10% fewer mosquitoes, 63% of nulliparous and 73% of gravid mosquitoes, while the BGS recaptured an average of 73% nulliparous and 83% of gravid mosquitoes, which were both statistically lower but comparable to the BGS at a short distance (Table 1).

3.2. Experiment 2: Efficacy of Gravid Aedes Trap (GAT) Lined with Insecticide-Treated Net (ITN) against Laboratory-Reared Ae. aegypti in the Semi-Field System

A total of 3498 mosquitoes were released and 62% (n = 2185) were recaptured. The recapture rate was substantially higher for both the GAT with a permethrin net (75%, n = 700) and the GAT with a bifenthrin net (68%, n = 624) relative to the GAT with an untreated net (11%, n = 92). The BGS trap showed the highest recapture rate at 88% (n = 769) (Table 2).
There was no significant difference in trapping efficacy between GAT with bifenthrin (OR = 1) and the BGS OR = 1.40, [95% CI: 0.89–2.21], p = 0.144, as well as the GAT with a permethrin net (69% vs. 76%, OR = 1.17, [95% CI: 0.85–1.61], p = 0.345) in the SFS (Table 2).

3.3. Experiment 3: Field Evaluation of Trapping Effectiveness of Gravid Aedes Trap (GAT) and Autocidal Gravid Ovitrap (AGO)

A total number of 11,397 mosquitoes were trapped. Of these, 86.2% (n = 9827) were Culex quinquefasciatus, 13.7% (n = 1565) were Ae. Aegypti, and 0.1% (n = 5) were Anopheles gambiae s.l.
Among the captured Ae. aegypti, 83% (n = 1298) were female. Most female Ae. aegypti were caught by BGS (71%, n = 926). Of the gravid traps, GAT collected more female Ae. aegypti (21%, n = 266) than AGO (8%, n = 106), (IRR = 2.58, [95% CI: 1.90–3.50], p < 0.001), (Table 3). The use of yeast infusion in the GAT and AGO captured a significantly lower number of mosquitoes (IRR = 0.72, [95% CI: 0.52–0.98], p = 0.037) compared to those traps with dry grass infusions (OR = 1), although the difference in the absolute numbers of mosquitoes captured was marginal < 0.2 per trap day (Table 3).
When comparing the ovitraps with the standard trap (Table 3), GAT caught significantly fewer mosquitoes than the BGS when baited with either dry grass (IRR = 0.16, [95% CI: 0.11–0.23], p < 0.001) or yeast infusions (IRR = 0.13, [95% CI: 0.09–0.19], p < 0.001). The same trend was observed in AGO relative to BGS with dry grass (IRR = 0.07, [95% CI: 0.05–0.11], p < 0.001) and yeast infusion (IRR = 0.04, [95% CI: 0.03–0.07], p < 0.001).
The Bland–Altman plot showed that the BGS trap consistently captured a higher number of female mosquitoes compared to GAT with yeast infusion, with a greater difference at higher mosquito density. The mean difference was 8.07 and the limit of agreement varied from −6.19 to 22.33 (Supplementary Figure S1).

3.4. Experiment 4: Field Evaluation of Gravid Aedes Trap (GAT) Lined with Insecticide-Treated Net (ITN) against Wild Ae. aegypti

A total number of 2868 mosquitoes were trapped. Of these, 88.8% (n = 2548) were Cx. quinquefasciatus, 11.1% (n = 318) were Ae. Aegypti, and 0.1% (n = 2) were An. gambiae s.l. Of Ae. aegypti, 78% (n = 247) were female mosquitoes.
The use of GAT lined with a bifenthrin net resulted in a greater capture of female Ae. aegypti mosquitoes (2 per day per trap) compared to GAT with an untreated net (1 per day pr trap) IRR = 6.19, [95% CI: 2.41–15.92], p < 0.001 (Table 4).
The BGS caught a mean of 9 of Ae. aegypti mosquitoes per trap day, which was greater than GAT with bifenthrin (2 per trap per day) IRR = 6.83 [95% CI: 4.12–11.32], p < 0.001 (Table 4).

3.5. Experiment 5: Evaluation of 4× Gravid Aedes Traps (GAT) traps versus BGS in the Field Setting

A total of 3416 mosquitoes were collected in the field setting. Of these, 69.9% (n = 2388) were Cx. quinquefasciatus and 30.1% (n = 1027) were Ae. aegypti. Among captured Ae. aegypti mosquitoes, 83.9% (n = 862) were female of which 717 were nulliparous, 122 were gravid, and 23 were blood fed.
The four GAT traps with yeast infusion lined with bifenthrin net combined (4× GATs) caught 18% (n = 158) while BGS caught 82% (n = 704) of Ae. aegypti mosquitoes (Table 5). This was significantly lower than BGS trap IRR = 5.79, [95% CI: 4.08–8.21], p < 0.001.
When examined by physiological state, the 4× GATs recaptured fewer non-blood fed and blood-fed mosquitoes than the BGS (IRR = 8.53, [95% CI: 6.11–11.91], p < 0.001) and (IRR = 11.4, [95% CI: 3.2–40.8], p < 0.001), respectively. On the contrary, the 4× GATs with yeast infusion had a similar capture rate of gravid mosquitoes with the BGS (IRR = 0.82, [95% CI: 0.35–1.95], p = 0.658) (Table 5).
The Bland–Altman plot showed that the BGS trap captured a higher number of female mosquitoes compared to 4× GATs traps with yeast infusion lined with a bifenthrin net. The mean difference was 2.52 and the limit of agreement varied from −11.74 to 16.78 (Supplementary Figure S2). Density dependence was no longer seen when four gravid traps were used per compound.

4. Discussion

Understanding Aedes vector species composition, ecology, and behavior is a crucial prerequisite for the prevention of arboviral diseases. Undoubtedly, effective control cannot be achieved without having vector sampling tools that are operationally feasible, efficacious, cost-effective, and technologically simple to operate. This study demonstrated that a locally produced and modified GAT was a suitable tool for capturing Ae. aegypti, the local dengue vector. The BGS was used as a standard indicator of mosquito densities as it is an efficacious tool for sampling and monitoring Aedes populations in the field setting [25,26,32]. While the modified GAT did not outcompete the BGS, it gave reliable data by collecting the same species with similar numbers of mosquitoes caught in each experiment for both trap types. Data agreed with similar studies comparing BGS and gravid traps in West Africa [28]. If deployed at scale, it may prove a useful means of urban dengue vector control as it is a lure and kill device that has good community acceptability [43] and efficacy demonstrated in a number of settings is needed to provide scientific evidence for the reduction in viral transmission risk by mass trapping targeting mosquitoes with their physiological stages (gravid and/or host-seeking) [44].
Both GAT with yeast and drygrass infusion caught gravid and nulliparous in the SFS; therefore, mosquitoes may have also been attracted to the dark humid traps as a resting site or by CO2. This may be explored in further trap optimization. Our study found that the traps baited with dry grass outperformed traps baited with yeast. However, due to convenience, yeast was selected for further evaluation. This is evident in other studies that have shown the effectiveness of yeast-baited traps and ovitraps at luring different mosquito species including Aedes [17,18,45]. While yeast was not as attractive as fermented grass, it was far simpler to use as baker’s yeast is cheap, standardized, and widely available. Yeast-derived CO2 has been shown to be effective at attracting nulliparous mosquitoes [46] and yeast improves the attraction of gravid mosquitoes, likely as an indicator of food availability [47].
The use of fast-acting insecticide in Ae. aegypti mosquito control or surveillance tools is relevant in the control of arboviral diseases such as dengue fever [39,48]. The use of treated long-lasting insecticide nets as killing agents for traps such as GAT was useful in this study and others [12]. The technique exploits the advantage that ITN is widely available, durable, and wash-resistant [12]. However, mosquito insecticide resistance challenges the use of pyrethroid nets [49]. This study demonstrated that bifenthrin-treated nets used in the development of GAT had nearly equal bio-efficacy to permethrin lined within the GAT traps against laboratory-reared at the SFS. Bifenthrin is a pyrethroid insecticide that is less irritant than permethrin, has temperature tolerance, and is effective for both susceptible and pyrethroid-resistant malaria vectors [50,51] due to its structure and binding affinity to and depletion by cytochrome P450 enzymes; it is a less commonly used insecticide [52]. While Ae. aegypti is resistant to permethrin in Dar es Salaam [49], it is less likely to develop resistance to bifenthrin; therefore, bifenthrin nets were used.
In the present study, the SFS data agreed with field data although the magnitude of difference between traps was greater in the field. The results demonstrated that there is a large difference between BGS and GAT trapping efficacy for nulliparous Ae. aegypti mosquitoes in the field while there was a smaller observed difference in trapping efficacy for gravid Aedes mosquitoes as the BGS contains kairomones for host-seeking mosquitoes [53]. In the SFS, there was no significant difference since the traps were tested in a confined space, increasing the probability of mosquitoes interacting with the traps. The observed findings concur with Eiras et al., 2021 [23], that there was no statistical difference between BGS and GAT trapping efficacy in the absence of alternative breeding sites in the simulated outdoor environment. In the SFS, where competing kairomones are not present and the radius of attraction is as important since mosquitoes are confined in close proximity to the traps, data showed a slight difference in recapture between the GAT and the BGS trap. In the field setting, the same direction of effect (relative proportion of mosquitoes recaptured) as the SFS experiment was clearly observable: BGS > GAT + grass > GAT + Yeast > AGO + grass > AGO + yeast. However, the magnitude of the difference was greater: in the field, the BGS trap captured nearly eight times more Aedes aegypti mosquitoes than GAT. We, therefore, infer that the lower performance of the GAT trap in the field may be attributed to the presence of multiple breeding sites, as it was in competition with both natural and artificial existing breeding sites that were abundant in the testing area. A similar finding was observed in a comparison of oviposition attractants for Ae. aegypti in the SFS and field conducted in Kenya where the direction of effect was similar but the magnitude of the effect was different in mosquito preference for different infusions [54].
This study also reports that GAT is more efficacious than AGO at capturing laboratory-reared and wild Ae. aegypti mosquitoes that are in alignment with another study in Florida [31]. Although GAT and AGO are lethal ovitraps that are both used for mosquito surveillance and control of Aedes mosquito species, in this study, we hypothesized that differences in the design and the size of the traps may have resulted in higher trapping in the GAT, as has been observed in another study [55], although the amount of infusion was the same in all traps. The GAT is larger and has a more obvious entrance [56] and the addition of the ITN killed mosquitoes to enhance their retention and reduce predation by ants, which is useful when using the traps for surveillance.
The BGS demonstrated greater trapping efficacy of wild Aedes species than GAT and AGO in the current study, as has also been observed in other studies [16,28]. The observed difference can be attributed to the fact that BGS targets host-seeking at distances up to 10 m [57] through visual and olfactory cues, while both GAT and AGO attract gravid mosquitoes that need to lay eggs [23] also through olfactory and visual cues [22] but in an area where there were competing oviposition sites. Competing resources will influence both blood feeding and oviposition behavior [58]. The BGS operates based on a counter-flow principle that helps disperse attractant molecules to enhance the radius of mosquito detection and attraction; hence, it has a larger range of attraction than GAT. Also, BGS sucks mosquitoes that are in proximity to the trap’s lid with downstream airflow generated by a fan [26]. The GAT and AGO are passive traps that trap only mosquitoes that enter voluntarily into the trap [20,39].
The longer the GAT trap stayed outdoors at one location in the field setting, the more mosquitoes were captured. When GAT traps were stationed in one location in the testing area for three days, GAT traps collected a similar number of gravid mosquitoes with the BGS trap. Furthermore, GAT trapping performance increased when multiple traps were deployed and stationed at one location for three days in a field setting, as opposed to utilizing a single GAT trap that remained for only one day at one location. Both the BGS and the GAT caught similar mosquito densities in repeated tests and estimates of mosquito density were precise with both traps. Importantly, when four GATs were deployed, they showed no density dependence; therefore, it appears that they may be used interchangeably with the BGS. Further large-scale longitudinal assessment is ongoing to verify these data under operational settings.
Despite the relatively greater catch of the BGS trap compared to GAT in the field, its cost and operational requirements (such as the need for electricity) hinder its adaptation for use in mass-trapping programs for surveillance or control. This limitation is particularly evident in low- and middle-income countries with limited health budgets and in areas without regular access to electricity. The GAT is substantially less expensive (less than USD 8 (single GAT) while BGS is USD 150) and does not need power or electricity to operate and captures the same species as BGS [16]; therefore, it can be considered as an alternative for use in mosquito mass trapping programs, particularly in countries will low resources like Tanzania. Additionally, GAT is selective in attracting gravid mosquitos [32], which is advantageous for dengue virus surveillance, as gravid mosquitoes will have taken a blood meal and are therefore more likely to be dengue virus-positive than nulliparous mosquitoes. Ovitraps have been successfully used for dengue monitoring in Malaysia [59] and Singapore [60] and are predictive of dengue cases in Indonesia [61]. There are several studies from Africa also showing that ovitraps may be useful for dengue vector monitoring from Reunion [62], Cameroon [63], Ghana [64], and Tanzania [65].
The GAT trap demonstrated good trapping efficacy in both the SFS and the field setting, especially when multiple traps were deployed. The SFS proved useful for trap optimization as results in both SFS studies were reflective of the same studies repeated in field settings. The SFS is useful for these kinds of experiments as mosquito density, species, and physiological status can be selected so data are more cost-effective to collect and larger sample sizes improve the precision of estimates. Nevertheless, field studies of optimized traps are still warranted due to the interplay of mosquitoes and traps over space and competition with other kairomones that may affect results.
This study examined the efficacy of mosquito traps for Ae. aegypti monitoring and surveillance in outdoor commercial settings at one location; more research is needed to investigate if the modified traps work as well in different locations in urban settings. To obtain a better understanding of how well the trap works, further studies such as longitudinal surveys are recommended.

5. Conclusions

This study addresses the gap in the need to improve dengue vector surveillance for epidemiologic investigations using locally modified traps that are less costly yet efficacious. GAT with yeast infusion lined with a bifenthrin net is a potential trap for Ae. aegypti surveillance for dengue control based on convenience in making it. Although it had lower performance than BGS in the field, when four traps were deployed, the trapping efficacy increased and there was no density dependence in mosquito catches between the two methods. Further larger longitudinal studies are recommended to assess the GAT trap performance for operational use.

Supplementary Materials

The following supporting information can be downloaded at https://www.mdpi.com/article/10.3390/insects15060401/s1: Figure S1. Bland–Altman plot showing the mean difference (y-axis) plotted against the difference and the (x-axis) average value between the BGS and GAT + Yeast infusion to capture adult female Ae. aegypti mosquitoes in the field setting; 2: Figure S2. Bland–Altman plot showing the mean difference (y-axis) plotted against the difference and the (x-axis) average value between the BGS and four GAT + Yeast infusion to capture adult female Ae. aegypti mosquitoes in the field setting. 3. Table S1: Cost estimate analysis of BGS and four GAT traps per year.

Author Contributions

J.J.M., F.C.T., J.M. (Jason Moore) and S.J.M. conceptualized and designed the experiments. J.J.M., M.S.M., J.B.M. and J.M. (John Mundi) collected data. J.B.M. created the study flow and conducted image capturing. J.J.M., F.C.T., S.J.M. and O.G.O. analyzed data. J.J.M., M.S.M. and F.C.T. wrote the paper. J.J.M., M.S.M., J.M. (Jason Moore), J.M. (John Mundi), J.B.M., O.G.O., S.J.M. and F.C.T. reviewed and contributed to the final draft. All authors have read and agreed to the published version of the manuscript.

Funding

This study is supported by VCPTU and the IHI Training and Capacity Building Department.

Institutional Review Board Statement

Written informed consent forms were provided to the Hotel owners for their voluntary permission to work on their premises. The National Institute of Medical Research (NIMR) (NIMR/HQ/R.8a/Vol.IX/4179) and the Institute Review Board of IHI (IHI/IRB/No:19-2022) approved the study.

Informed Consent Statement

Permission to publish has been granted by Tanzania National Institute of Medical Research (NIMR) NIMR/HQ/P.12/VOL.XXXV/158.

Data Availability Statement

Data will be made available on request from the authors.

Acknowledgments

We would like to thank the Vector Control Product Test Unit (VCPTU) and Training Department of Ifakara Health Institute for funding this research. VKA Polymers for the provision of bifenthrin-treated net. Also, we would like to extend our gratitude to the hotel owners who granted us permission to conduct this study on their premises. Furthermore, we are grateful to Seth Irish for his professional advice and support regarding mosquito sampling and to the VCPTU team for their support during the time of research implementation.

Conflicts of Interest

J.J.M., M.S.M., J.M. (Jason Moore), J.B.M., O.G.O., S.J.M. and F.C.T. conducted evaluations of vector control products for a number of vector control product manufacturers. The other authors declare that they have no competing interests.

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Figure 1. Mosquito traps. (a) Gravid Aedes trap (GAT), (b) Autocidal Gravid Ovitrap (AGO), and (c) Biogents Sentinel Trap (BGS).
Figure 1. Mosquito traps. (a) Gravid Aedes trap (GAT), (b) Autocidal Gravid Ovitrap (AGO), and (c) Biogents Sentinel Trap (BGS).
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Figure 2. Study flow of experiments conducted in both SFS and field settings. In the SFS: (A) 5 × 5 Latin square design in 5 chambers over 25 days. (B) 4 × 4 Latin square design in 4 chambers over 16 days. In the field setting: (C) 5 × 5 Latin square design was conducted in 5 locations and replicated twice over 50 days in two hotels. (D) A 3 × 3 experiment was conducted in 3 locations over 9 days in each of the two hotels. (E) A 5 × 5 Latin square experiment was conducted in 5 locations in the study site for over 30 days. “AGO with yeast” (AGOG), “AGO with grass infusion” (AGOY), “GAT with yeast” (GATY), “GAT with grass infusion”, GATG.
Figure 2. Study flow of experiments conducted in both SFS and field settings. In the SFS: (A) 5 × 5 Latin square design in 5 chambers over 25 days. (B) 4 × 4 Latin square design in 4 chambers over 16 days. In the field setting: (C) 5 × 5 Latin square design was conducted in 5 locations and replicated twice over 50 days in two hotels. (D) A 3 × 3 experiment was conducted in 3 locations over 9 days in each of the two hotels. (E) A 5 × 5 Latin square experiment was conducted in 5 locations in the study site for over 30 days. “AGO with yeast” (AGOG), “AGO with grass infusion” (AGOY), “GAT with yeast” (GATY), “GAT with grass infusion”, GATG.
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Figure 3. Percentage mean and 95% confidence interval (CI) of Ae. aegypti mosquitoes recaptured by three mosquito traps with their lure in the SFS.
Figure 3. Percentage mean and 95% confidence interval (CI) of Ae. aegypti mosquitoes recaptured by three mosquito traps with their lure in the SFS.
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Table 1. Percentage means and odds ratio of nulliparous and gravid mosquitoes recaptured in the semi-field system.
Table 1. Percentage means and odds ratio of nulliparous and gravid mosquitoes recaptured in the semi-field system.
TrapNn1n2%MeanOR (95% CI)p-Valuen1n2%MeanOR (95% CI)p-Value
Overall
BGS251573123878 (71, 85)1
GAT253024210569 (65, 74)0.56 (0.48,0.66)<0.001
AGO253015169956 (51, 61)0.30 (0.25,0.35)<0.001
Nulliparous Ae. aegyptiGravid Ae. aegypti
BGS + BG lure2576155773 (63, 83)1 81268183 (73, 92)1
GAT + Dry grass2575851968 (60, 76)0.79 (0.62,1.00)0.04875155874 (68, 81)0.54 (0.41, 0.70)<0.001
GAT + Yeast2576148063 (53, 72)0.59 (0.47, 0.75)<0.00175454873 (65, 80)0.48 (0.37, 0.63)<0.001
AGO + Dry grass2575838150 (41, 59)0.33 (0.26, 0.41)<0.00175048565 (56, 73)0.32 (0.25, 0.41)<0.001
AGO + Yeast2575436047(38, 57)0.29 (0.23, 0.36)<0.00175347363 (53, 72)0.29 (0.23, 0.37)<0.001
AGO vs. GAT25
AGO 25151274149 (42, 55)1 150395864 (57, 71)1
GAT25151999965 (59, 72)2.22 (1.90, 2.61)<0.0011505110673 (68, 78)1.67 (1.41, 1.97)<0.001
Grass vs. Yeast
Grass25151690059(52, 66)1 1501104369 (64, 75)1
Yeast25151584055(48, 62)0.83 (0.71, 0.97)0.0181507102168 (61, 74)0.91 (0.77, 1.07)0.250
N = number of replicates, n1 = number of mosquitoes released, n2 = number of mosquitoes recaptured, %Mean = percentage arithmetic mean of mosquitoes recaptured of those released, OR (95% CI) = odds ratio with 95% confidence interval.
Table 2. Percentage means and odds ratio of gravid female Ae. aegypti trapped in the semi-field system.
Table 2. Percentage means and odds ratio of gravid female Ae. aegypti trapped in the semi-field system.
TrapNn1n2%MeanOR (95% CI)p-Value
GAT + Bifenthrin1690762469 (64, 74)1
GAT + Permethrin1692770076 (69, 82)1.17 (0.85, 1.61)0.345
GAT + Untreated167949211 (9, 14)0.02 (0.02, 0.03)<0.001
BGS 1687076989 (85, 92)1.40 (0.89, 2.21)0.144
N = number of replicates, n1 = number of mosquitoes released, n2 = number of mosquitoes recaptured, %Mean = percentage arithmetic mean of mosquitoes recaptured with 95% confidence interval, OR (95% CI) = odds ratio with 95% confidence interval.
Table 3. Percentage means, and incidence rate ratio (IRR) of female Ae. aegypti mosquitoes captured in Bagamoyo.
Table 3. Percentage means, and incidence rate ratio (IRR) of female Ae. aegypti mosquitoes captured in Bagamoyo.
TrapNn%Mean IRR (95% CI)p-Value
AGO vs. GAT
AGO501061.47 (1.30, 1.68)1
GAT502661.97 (1.72, 2.25)2.58 (1.90, 3.50)<0.001
Grass vs. Yeast
Grass502111.85 (1.63, 2.11)1
Yeast501611.66 (1.42, 1.94)0.72 (0.52, 0.98)0.037
BGS vs. Gravid traps
BGS + BG lure509266.27 (4.84,8.14)1
GAT + Dry grass501472.16 (1.80, 2.60)0.16 (0.11, 0.23)<0.001
GAT + Yeast501191.77 (1.44, 2.18)0.13 (0.09, 0.19)<0.001
AGO + Dry grass50641.49 (1.27, 1.75)0.07 (0.05, 0.11)<0.001
AGO + Yeast50421.46 (1.17, 1.84)0.04 (0.03, 0.07)<0.001
N = number of replicates, n = number of mosquitoes captured, %Mean = percentage geometric mean of mosquitoes captured daily by trap with 95% confidence interval, IRR (95% CI) = incidence rate ratios with 95% confidence interval.
Table 4. Percentage means and incidence rate ratio (IRR) of female Ae. aegypti mosquitoes captured at commercial premises in Bagamoyo.
Table 4. Percentage means and incidence rate ratio (IRR) of female Ae. aegypti mosquitoes captured at commercial premises in Bagamoyo.
TrapNn%MeanIRR (95% CI)p-Value
GAT + Untreated vs. GAT + Bifenthrin
GAT + Untreated951 (0.7, 2)1
GAT + Bifenthrin9312 (1, 2)6.19 (2.41, 15.92)<0.001
GAT + Bifenthrin vs. BGS
GAT + Bifenthrin9312 (1, 2) 1
GAT + Untreated951 (0.7, 2) 0.16 (0.06, 0.44)<0.001
BGS92119 (6, 14) 6.83 (4.12,11.32)<0.001
N = number of replicates, n = number of mosquitoes captured, %Mean (95% CI) = percentage geometric mean of mosquitoes captured daily by trap with 95% confidence interval, IRR (95% CI) = incidence rate ratios with 95% confidence interval.
Table 5. Percentage mean and incidence rate ratio (IRR) of female Ae. aegypti mosquitoes captured at the commercial premises in Bagamoyo.
Table 5. Percentage mean and incidence rate ratio (IRR) of female Ae. aegypti mosquitoes captured at the commercial premises in Bagamoyo.
TrapNn%MeanIRR (95% CI)p-Value
Overall
4× GAT + Yeast301581.8 (1.6, 2.1)1
BGS3070411.6 (7.7, 17.3)5.79 (4.08, 8.21)<0.001
Gravid mosquitoes
4× GAT + Yeast30641.6 (1.3, 1.9)1
BGS30582.7 (1.6, 4.6)0.82 (0.35, 1.95)0.658
Non-blood fed mosquitoes
4× GAT + Yeast30901.4 (1.2, 1.6)1
BGS3062711.01 (7.5, 16.2)8.53 (6.11, 11.91)<0.001
Blood-fed mosquitoes
4× GAT + Yeast3041 (1, 1)1
BGS30191.4 (0.9, 2.1)11.4 (3.2, 40.8)<0.001
N = number of replicates, n = number of mosquitoes captured, %Mean (95% CI) = percentage geometric mean of mosquitoes captured daily by trap with 95% confidence interval, IRR (95% CI) = incidence rate ratios with 95% confidence interval.
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Machange, J.J.; Maasayi, M.S.; Mundi, J.; Moore, J.; Muganga, J.B.; Odufuwa, O.G.; Moore, S.J.; Tenywa, F.C. Comparison of the Trapping Efficacy of Locally Modified Gravid Aedes Trap and Autocidal Gravid Ovitrap for the Monitoring and Surveillance of Aedes aegypti Mosquitoes in Tanzania. Insects 2024, 15, 401. https://doi.org/10.3390/insects15060401

AMA Style

Machange JJ, Maasayi MS, Mundi J, Moore J, Muganga JB, Odufuwa OG, Moore SJ, Tenywa FC. Comparison of the Trapping Efficacy of Locally Modified Gravid Aedes Trap and Autocidal Gravid Ovitrap for the Monitoring and Surveillance of Aedes aegypti Mosquitoes in Tanzania. Insects. 2024; 15(6):401. https://doi.org/10.3390/insects15060401

Chicago/Turabian Style

Machange, Jane Johnson, Masudi Suleiman Maasayi, John Mundi, Jason Moore, Joseph Barnabas Muganga, Olukayode G. Odufuwa, Sarah J. Moore, and Frank Chelestino Tenywa. 2024. "Comparison of the Trapping Efficacy of Locally Modified Gravid Aedes Trap and Autocidal Gravid Ovitrap for the Monitoring and Surveillance of Aedes aegypti Mosquitoes in Tanzania" Insects 15, no. 6: 401. https://doi.org/10.3390/insects15060401

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