Both consumptive and non-consumptive effects of predators impact mosquito populations and have implications for disease transmission
- MarieCRussell[email protected]1
- CatherineMHerzog2
- ZacharyGajewski3
- ChloeRamsay4
- FadouaElMoustaid3
- MichelleVEvans56
- TrishnaDesai7
- NicoleLGottdenker58
- SaraLHermann9
- AlisonGPower10
- AndrewCMcCall11
- Research Article
- Ecology
- Epidemiology and Global Health
- vector ecology
- predation
- disease dynamics
- meta-analysis
- Mosquito
- publisher-id71503
- doi10.7554/eLife.71503
- elocation-ide71503
Abstract
Predator-prey interactions influence prey traits through both consumptive and non-consumptive effects, and variation in these traits can shape vector-borne disease dynamics. Meta-analysis methods were employed to generate predation effect sizes by different categories of predators and mosquito prey. This analysis showed that multiple families of aquatic predators are effective in consumptively reducing mosquito survival, and that the survival of Aedes, Anopheles, and Culex mosquitoes is negatively impacted by consumptive effects of predators. Mosquito larval size was found to play a more important role in explaining the heterogeneity of consumptive effects from predators than mosquito genus. Mosquito survival and body size were reduced by non-consumptive effects of predators, but development time was not significantly impacted. In addition, Culex vectors demonstrated predator avoidance behavior during oviposition. The results of this meta-analysis suggest that predators limit disease transmission by reducing both vector survival and vector size, and that associations between drought and human West Nile virus cases could be driven by the vector behavior of predator avoidance during oviposition. These findings are likely to be useful to infectious disease modelers who rely on vector traits as predictors of transmission.
Introduction
While it is well known that predation reduces vector populations through consumptive effects, non-consumptive effects of predators can also greatly impact prey demographics 106Preisser et al.2004,12,31. Mosquitoes are vectors of a variety of debilitating and deadly diseases, including malaria, lymphatic filariasis, and arboviruses, such as chikungunya, Zika, and dengue 147Weaver and Reisen2009,12,31148WORLD HEALTH ORGANIZATION2019,12,31. Consequently, there is motivation from a public health perspective to better understand the different drivers of variation in mosquito traits that can ultimately impact vector population growth and disease transmission. In addition, recent work has suggested that incorporation of vector trait variation into disease models can improve the reliability of their predictions 23Cator et al.2019,12,31. In this study, systematic review and meta-analysis methods are used to synthesize a clearer understanding of the consumptive and non-consumptive effects of predators on mosquito traits, including survival, oviposition, development, and size.
Mosquito insecticide resistance is recognized as a growing problem 54Hancock et al.2017,12,3157Hemingway and Ranson1999,12,3182Liu2014,12,31 leading some to suggest that control efforts should rely more heavily on ‘non-insecticide based strategies’ 14Benelli et al.2015,12,31. The consumptive effects of predators on mosquitoes have previously been harnessed for biocontrol purposes. Past biocontrol efforts have used predators such as cyclopoid copepods 69Kay et al.2001,12,3187Marten1989,12,31120Russell et al.1995,12,31142Veronesi et al.2014,12,31 and mosquitofish 107Pyke2007,12,31121Seale1916,12,31 to target the mosquito’s aquatic larval stage. The strength of the consumptive effects of these predators on mosquitoes can be influenced by multiple factors, including predator-prey size ratio and temperature. Predator-prey body size ratios tend to be higher in freshwater habitats than other types of habitats 18Brose et al.2005,12,31, and attack rate tends to increase with temperature 68Kalinoski and DeLong2015,12,3129Dam and Peterson1987,12,31, although other studies suggest a unimodal response to temperature 139Uiterwaal and Delong2019,12,3141Englund et al.2010,12,31.
Predators can also have non-consumptive effects on prey 103Peacor and Werner2000,12,31, and these effects are thought to be more pronounced in aquatic ecosystems than in terrestrial ecosystems 106Preisser et al.2004,12,31. Non-consumptive effects of predators are the result of the prey initiating anti-predator behavioral and/or physiological trait changes that can aid in predator avoidance 59Hermann and Landis2016,12,3180Lima and Dill1989,12,31. Such plasticity in certain prey traits may also result in energetic costs 81Lima1997,12,31. Predator detection is key for these trait changes to occur and can be mediated by chemical, tactile, and visual cues 58Hermann and Thaler2013,12,31. In mosquitoes, exposure to predators is known to affect a variety of traits including behavior, size, development, and survival 10Arav and Blaustein2005,12,3117Bond et al.2004,12,31114Roberts2011,12,31119Roux et al.2014,12,31151Zuharah et al.2012,12,31. Experimental observations of predator effects on mosquito size and development are inconsistent and results sometimes vary by mosquito sex. For example, exposure to predation was found to increase the size of Culex pipiens mosquitoes 2Alcalay et al.2017,12,31 but decrease the size of Culiseta longiareolatanull128Stav et al.2004,12,31. In addition, female Aedes triseriatus exhibited shorter development times when exposed to predation at high nutrient availability 100Ower and Juliano2018,12,31, but male C. longiareolata had longer development times in the presence of predators 128Stav et al.2004,12,31. In some cases, a shared evolutionary history between predator and prey organisms can strengthen the non-consumptive effects of predators on mosquitoes 21Buchanan et al.2016,12,31124Sih1985,12,31.
This investigation assesses the consumptive and non-consumptive effects of predators on mosquito traits and describes how these effects could impact disease transmission. The roles of vector genus, predator family, mosquito larval instar (an indicator of prey size), and temperature are also examined as potential moderators of predator effects. Non-consumptive effects of predators are expected to cause a smaller reduction in mosquito survival than consumptive effects because, in practice, measures of consumptive effects always include both consumptive and non-consumptive effects. Based on previous findings, larger predators are more likely to consumptively reduce mosquito survival 74Kumar et al.2007,12,31. In addition, Aedes mosquito larvae may be more vulnerable to consumption than other genera because of the high degree of motility observed in this genus 35Dieng et al.2002,12,3189Marten and Reid2006,12,31126Soumare and Cilek2010,12,31. The oviposition response to predation is expected to be weakest among Aedes species that oviposit above the water line, due in part to their delayed-hatching eggs 146Vonesh and Blaustein2009,12,31. Predation is predicted to reduce mosquito size and lengthen development time, consistent with the reduced growth response observed in other insect systems 59Hermann and Landis2016,12,31. Certain non-consumptive effects of predation, particularly oviposition site selection and decreased vector size, are likely to play important roles in the dynamics of mosquito-borne disease.
Materials and methods
Literature screening
A systematic search was conducted for studies on predation of mosquitoes that were published between 1970 and July 1, 2019 using both PubMed and Web of Science search engines, according to the PRISMA protocol 93Moher et al.2008,12,31. Mosquito vectors of the Anopheles and Aedes genera were specifically highlighted in our search terms because these genera contain the vector species that transmit malaria, yellow fever, and dengue – the three most deadly mosquito-borne diseases worldwide 62Hill et al.2004,12,31. Searches included 18 combinations of three vector predation terms (mosquito predat*, Anopheles predat*, Aedes predat*) and six trait terms (survival, mortality, development, fecundity, dispers*, host preference). Abstracts from the 1136 studies were each screened by two different co-authors, using the ‘metagear’ package in R 76Lajeunesse2015,12,31108R Development Core Team2019,12,31. If either screener thought the study had information relevant to predation of mosquitoes, or both screeners thought the abstract was ambiguous, the study was read in full. This resulted in 306 studies that were fully reviewed to determine if any predation data could be extracted (Figure 1).
Study exclusion criteria
Data were extracted from studies that collected data on non-consumptive and/or consumptive effects of predators on mosquitoes. Studies were required to have a mean, error measurement, and at least two replicates for both control and predator treatments. The control treatment was required to have all the same conditions as the predator treatment, such as prey density and type of water, without the predators. Studies that were not published in English and studies that did not differentiate between predators of multiple families were excluded. Studies were also excluded if oviposition by free-flying female mosquitoes could have interfered with observing the consumptive effects of predators on vector survival. The final database comprised data extracted from 60 studies (Supplementary file 1). The data included observations from laboratory experiments, as well as semi-field experiments, in which mesocosms of different treatments were observed in outdoor settings.
Data extraction
Variables related to the publication, the vector, the predator, and the effect size (Table 1) were extracted from each study. Data from tables and text were recorded as they were published, and data from figures were extracted using WebPlotDigitizer 116Rohatgi2019,12,31. Error measurements that were not originally presented as standard deviations were converted to standard deviations prior to the effect size calculation.
Variable | Description |
---|---|
Publication data: | |
Title | Full study title |
Journal | Name of journal that published the study |
Year | Year of publication |
Study environment | Environment where the experiment took place: lab or semi-field |
Vector data: | |
Order, Family, Genus, Species | Taxonomic identification |
Trait | Outcome that was measured (e.g. survival, development, etc.) |
Stage | Life stage: egg, larva, pupa, or adult |
Larval instar | Early (1st and 2nd instars), late (3rd and 4th instars), both, or NA (eggs, pupae, or adults) |
Sex | Male or female |
Predator data: | |
Phylum, Class, Order, Family, Genus, Species | Taxonomic identification |
Starved | Whether the predator was starved: yes or no |
Time starved | Amount of time that the predator was starved (in minutes) |
Predation effect | Consumptive or non-consumptive |
Effect size data: | |
Units | Units of extracted data |
Control mean | Average of the outcome measured among the controls |
Control standard deviation | Standard deviation of the outcome measured in the controls |
Control number of replicates | Number of control replicates |
Predation mean | Average of the outcome measured in the predator treatment |
Predation standard deviation | Standard deviation of the outcome measured in the predator treatment |
Predation number of replicates | Number of predation replicates |
Experiment ID | Alphabetic assignment to mark observations sharing a control group or representing the same prey individuals as originating from the same experiment |
Additional data: | |
Experiment time (days) | Duration of the experiment in days |
Data source | Graph or text |
Number of predators | Number of predators with access to prey, or ‘cue’ if there are no predators with direct access to prey |
Number of prey (vectors) | Number of mosquito prey that are exposed to predation |
Arena volume (mL) | Volume of the arena where prey encounter predators |
Time exposed to predator(s) | Amount of time (in days) when the predator has direct access to the mosquito prey |
Temperature (°C) | Temperature during the predation interaction |
Type of predator cue | Predator cues, or cues from both predator(s) and dying conspecifics; NA for observations with a consumptive predation effect |
Data exclusions
A PRISMA plot of literature inclusion and exclusion is provided in Figure 1. Observations where insecticide was used were excluded because insecticides are known to interfere with consumptive and non-consumptive effects of predators 32Delnat et al.2018,12,3163Janssens and Stoks2011,12,31. In addition, observations from experiments with mosquito prey of two or more species were excluded because it was not possible to account for effects from apparent competition or prey-switching. Observations of vector fecundity, vector competence, behavioral traits other than oviposition, as well as observations where the vector trait was marked as ‘other’ were not analyzed because each of these traits were only recorded from three or fewer studies.
Due to protandry, the earlier emergence of males to maximize their reproductive success, mosquitoes respond to sex-specific selective forces that influence their development time and body size 71Kleckner et al.1994,12,31. Under low resource conditions, female mosquitoes are likely to maximize body mass by extending their development time, whereas males tend to minimize their development time at the expense of lower body mass 71Kleckner et al.1994,12,31. Observations of mosquito development time and body size in our database that were not sex-specific were excluded so that these vector traits could be analyzed while controlling for sex. In addition, among the observations of development time and body size, some predator means did not necessarily represent an evenly weighted average of the replicates. For example, if a total of 20 mosquitoes from three different predator replicates survived to adulthood, the mean development time and size of those 20 individuals may have been reported. To represent an evenly weighted average of the replicates, it is necessary to first calculate summary statistics among multiple individuals that emerge from the same replicate, and then report the average of the replicate-specific means. Observations that might have been influenced by uneven representation of replicates were excluded to prevent pseudo-replication from altering later meta-analyses.
For consumptive observations where life stage-specific survival was reported after more than 10 days of predator exposure, only data on survival marked by adult emergence were included for analysis. Effects observed among immature vector stages after such a long period of predator exposure were not analyzed because they could have resulted from a combination of non-consumptive effects on development, and consumptive effects on survival. Development time observations that were reported as the inverse of development time (units of days–1) were excluded because although their means could be converted to units of days, their standard deviations could not be converted to match units of days. In cases where multiple body sections of the same mosquitoes were measured to produce multiple size observations, only the wing measurement was included in the analysis to prevent pseudo-replication. Observations in which both the control and the predator treatments had standard deviations of zero were excluded because the meta-analysis methods did not support non-positive sampling variances.
Exclusions and data substitutions for predator treatment means of zero
One study that was included in our database reported egg survival data as the hatch rate of field collected Culex pervigilans rafts 151Zuharah et al.2012,12,31. However, mosquitoes have been shown to lay eggs independent of mating 101O’Meara1978,12,31, and hatch rates of zero have previously been observed in rafts laid by Culex females that were held separately from males 131Su and Mulla1996,12,31. Thus, hatch rates of zero were excluded from further analysis because these values may represent unfertilized egg rafts, rather than a strong impact of predators on survival. Twenty of the 187 consumptive survival observations had a predation mean of zero, and each of these zeros resulted from experiments that began with a specified number of live larvae. Consumptive survival zeros were each replaced with 0.5% of the starting number of mosquito prey to avoid undefined effect sizes. In addition, there was one zero out of the 36 oviposition predation means; this value had units of ‘number of egg rafts laid’ and was replaced with 0.5 rafts. Similar methods for replacing zero values in the treatment mean with small non-zero values have previously been employed 134Thapa et al.2017,12,31.
The final analysis dataset included seven subsets: consumptive effects on survival, non-consumptive effects on survival, oviposition, development (female and male), and size (female and male). The data included 187 observations from 34 studies of consumptive survival, 24 observations from seven studies of non-consumptive survival, 36 observations from 12 studies of oviposition, 14 observations from seven studies of female development, 14 observations from seven studies of male development, 27 observations from 10 studies of female size, and 18 observations from nine studies of male size (Figure 1). These observations covered seven different classes of predator families (Figure 2).
Data analysis
options(stringsAsFactors = F, scipen = 999)
library("metafor")
library("tidyverse")
library("broom")
## Full database:
database = read.csv("Predator_effects_on_mosquitoes_database.csv")
length(unique(database$Study_ID))
## Data exclusions & zero substitutions:
clean_data = database %>%
#Insecticide used with predators
filter(Pesticide!="YES") %>%
#Multiple prey species
filter(Mixed_prey!="YES") %>%
#Traits and behavior categories that didn't have enough data for meta-analysis
filter(Vec_trait!="OTHER" & Vec_trait!="FECUNDITY" & Vec_trait!="COMPETENCE") %>%
filter(!(grepl("BEHAVIOR", Vec_trait) & !grepl("oviposition", Vec_trait))) %>%
#Size or development data that were not specific to sex
filter(!(Vec_trait=="DEVELOPMENT" & (Sex=="BOTH" | is.na(Sex)))) %>%
filter(!(Vec_trait=="SIZE" & (Sex=="BOTH" | is.na(Sex)))) %>%
#Pseudo-replication due to uneven representation of reps
filter(!(grepl("individual means", Units))) %>%
#Immature life stage-specific survival reported after more than ten days
filter(!(Pred_effect=="CONSUMPTIVE" & Study_ID=="U106" & grepl("larval", Units))) %>%
filter(!(Pred_effect=="CONSUMPTIVE" & Study_ID==1175 & is.na(Sex))) %>%
filter(!(Pred_effect=="CONSUMPTIVE" & Study_ID=="U105" & grepl("larvae", Units))) %>%
filter(!(Pred_effect=="CONSUMPTIVE" & Study_ID=="U105" & grepl("pupae", Units))) %>%
#Inverse dev time
filter(!(Vec_trait=="DEVELOPMENT" & grepl("1/median", Units))) %>%
#Pseudo-replication due to measuring different body parts of the same mosquitoes
filter(!(Study_ID=="1224" & grepl("thorax", Units))) %>%
filter(!(Study_ID=="1226" & grepl("thorax", Units))) %>%
filter(!(Study_ID=="U166" & grepl("femur", Other_trait))) %>%
filter(!(Study_ID=="U166" & grepl("thorax", Other_trait))) %>%
#Both the control sd and the predation sd are zeros. This will result in non-positive sampling variances for the ROM measure of effect.
filter(!(Con_sd==0 & Pred_sd==0)) %>%
#For oviposition observations with a predation treatment mean of zero, replace zero egg rafts with 0.5 egg rafts.
mutate(Pred_mean = ifelse(Pred_mean==0 & (grepl("oviposition", Vec_trait)), 0.5, Pred_mean)) %>%
#Delete the egg stage survival data if the predation treatment has a mean of zero. These could represent unfertilized egg rafts.
filter(!(Vec_trait=="SURVIVAL" & Vec_stage=="EGG" & Pred_mean==0)) %>%
#Replace larval survival observations that have zero predator means with 0.5% of the starting larvae.
mutate(Pred_mean = ifelse(Pred_mean==0 & (grepl("%", Units) | grepl("percent", Units)), 0.5,
ifelse(Pred_mean==0 & (grepl("number", Units) | grepl("#", Units) | grepl("abundance", Units)), (0.005*Num_prey),
ifelse(Pred_mean==0 & grepl("proportion", Units), 0.005, Pred_mean)))) %>%
#Add the Effect ID column.
mutate(Effect_ID = 1: n())
###############################################################################
######################### CONSUMPTIVE SURVIVAL ##############################
###############################################################################
consumptive_survival = clean_data %>%
filter(Pred_effect == "CONSUMPTIVE")
length(unique(consumptive_survival$Study_ID))
#Calculate the Ratio of Means (ROM) effect size estimate.
ROM_consumptive_survival = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = consumptive_survival,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_consumptive_survival <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_consumptive_survival,
method = "REML")
coef(summary(ROM.uni_consumptive_survival))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_consumptive_survival)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_consumptive_survival, model = "rma", predictor="sei")
#Multilevel mixed effects models:
#No moderators
ROM.no_mods <- rma.mv(yi = ROM_est,
V = ROM_sv,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_consumptive_survival,
method = "REML")
coef(summary(ROM.no_mods))
#Vector genus as a moderator
ROM.vec <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Vec_genus-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_consumptive_survival,
method = "REML")
coef(summary(ROM.vec))
#Predator family as a moderator
ROM.pred_fam <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Pred_family-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_consumptive_survival,
method = "REML")
coef(summary(ROM.pred_fam))
#Predator family and vector genus as moderators
ROM.pred_and_vec <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Pred_family+Vec_genus -1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_consumptive_survival,
method = "REML")
coef(summary(ROM.pred_and_vec))
#Predator family and vector genus interacting as moderators
ROM.pred_vec_interact <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Pred_family*Vec_genus -1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_consumptive_survival,
method = "REML")
coef(summary(ROM.pred_vec_interact))
#182 out of 187 consumptive observations, 97%, are of the larval stage.
#Testing moderators on observations of larval survival only:
larval_stage = consumptive_survival %>%
filter(!(is.na(Larval_instar)))
length(unique(larval_stage$Study_ID))
#Calculate the Ratio of Means (ROM).
ROM_larval_stage = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = larval_stage,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_larval_stage <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.uni_larval_stage))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_larval_stage)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_larval_stage, model = "rma", predictor="sei")
#Multilevel mixed effects models:
#No moderators
ROM.larval_no_mods <- rma.mv(yi = ROM_est,
V = ROM_sv,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.larval_no_mods))
#Larval instar as a moderator
ROM.larval_instar <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Larval_instar-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.larval_instar))
#Vector genus as a moderator
ROM.larval_vec <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Vec_genus-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.larval_vec))
#Predator family as a moderator
ROM.larval_pred <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Pred_family-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.larval_pred))
#Larval instar and predator family as moderators
ROM.larval_instar_and_pred <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Larval_instar+Pred_family-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.larval_instar_and_pred))
#Vector genus and predator family as moderators
ROM.larval_pred_and_vec <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Vec_genus+Pred_family-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.larval_pred_and_vec))
#Larval instar and predator family interacting as moderators
ROM.larval_instar_pred_interact <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Larval_instar*Pred_family-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.larval_instar_pred_interact))
#Vector genus and predator family interacting as moderators
ROM.larval_pred_vec_interact <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Vec_genus*Pred_family-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_larval_stage,
method = "REML")
coef(summary(ROM.larval_pred_vec_interact))
#Test moderators only on observations that included temperature.
#The temperature range is from 16 to 28.25 degrees C.
temp = consumptive_survival %>%
filter(!(is.na(Temp))) %>%
mutate(Temp_squared = Temp*Temp)
length(unique(temp$Study_ID))
#Calculate the Ratio of Means (ROM).
ROM_temp = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = temp,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_temp <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_temp,
method = "REML")
coef(summary(ROM.uni_temp))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_temp)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_temp, model = "rma", predictor="sei")
#Multilevel mixed effects models:
#No moderators
ROM.temp_no_mods <- rma.mv(yi = ROM_est,
V = ROM_sv,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_temp,
method = "REML")
coef(summary(ROM.temp_no_mods))
#Temp as a moderator
ROM.temp <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Temp,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_temp,
method = "REML")
coef(summary(ROM.temp))
#Temp_squared as a moderator
ROM.temp_squared <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Temp_squared,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_temp,
method = "REML")
coef(summary(ROM.temp_squared))
###############################################################################
###################### NON-CONSUMPTIVE SURVIVAL #############################
###############################################################################
non_con_survival = clean_data %>%
filter(Pred_effect=="NONCONSUMPTIVE") %>%
filter(Vec_trait=="SURVIVAL")
length(unique(non_con_survival$Study_ID))
#Calculate the Ratio of Means (ROM).
ROM_non_con_survival = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = non_con_survival,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_non_con_survival <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_non_con_survival,
method = "REML")
coef(summary(ROM.uni_non_con_survival))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_non_con_survival)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_non_con_survival, model = "rma", predictor="sei")
#There is significant publication bias, so the "trimfill" function is used to impute values from missing studies.
trimfill(ROM.uni_non_con_survival, estimator = "L0", side = "left")
trimfill(ROM.uni_non_con_survival, estimator = "L0", side = "right")
#Visualization of the three imputed values on the left side of the funnel plot:
funnel(trimfill(ROM.uni_non_con_survival, estimator = "L0", side = "left"))
###############################################################################
############################## OVIPOSITION ##################################
###############################################################################
oviposition = clean_data %>%
filter(Vec_trait=="BEHAVIOR: oviposition")
length(unique(oviposition$Study_ID))
#Calculate the Ratio of Means (ROM).
ROM_oviposition = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = oviposition,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_oviposition <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_oviposition,
method = "REML")
coef(summary(ROM.uni_oviposition))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_oviposition)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_oviposition, model = "rma", predictor="sei")
#Multilevel mixed effects models:
#No moderators
ROM.oviposition_no_mods <- rma.mv(yi = ROM_est,
V = ROM_sv,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_oviposition,
method = "REML")
coef(summary(ROM.oviposition_no_mods))
#Vector genus as a moderator
ROM.oviposition_vec <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Vec_genus-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_oviposition,
method = "REML")
coef(summary(ROM.oviposition_vec))
#Predator family as a moderator
ROM.oviposition_pred <- rma.mv(yi = ROM_est,
V = ROM_sv,
mods = ~Pred_family-1,
random = list(~1|Effect_ID, ~1|Study_ID/Experimental_ID),
data = ROM_oviposition,
method = "REML")
coef(summary(ROM.oviposition_pred))
###############################################################################
########################## FEMALE DEVELOPMENT ###############################
###############################################################################
development_females = clean_data %>%
filter(Vec_trait=="DEVELOPMENT") %>%
filter(Sex=="FEMALE")
length(unique(development_females$Study_ID))
#Calculate the Ratio of Means (ROM).
ROM_development_females = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = development_females,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_development_females <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_development_females,
method = "REML")
coef(summary(ROM.uni_development_females))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_development_females)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_development_females, model = "rma", predictor="sei")
#There is significant publication bias, so the "trim-fill" function is used to impute values from missing studies.
trimfill(ROM.uni_development_females, estimator = "L0", side = "left")
trimfill(ROM.uni_development_females, estimator = "L0", side = "right")
###############################################################################
########################### MALE DEVELOPMENT ################################
###############################################################################
development_males = clean_data %>%
filter(Vec_trait=="DEVELOPMENT") %>%
filter(Sex=="MALE")
length(unique(development_males$Study_ID))
#Calculate the Ratio of Means (ROM).
ROM_development_males = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = development_males,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_development_males <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_development_males,
method = "REML")
coef(summary(ROM.uni_development_males))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_development_males)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_development_males, model = "rma", predictor="sei")
#There is significant publication bias, so the "trimfill" function is used to impute values from missing studies.
trimfill(ROM.uni_development_males, estimator = "L0", side = "left")
trimfill(ROM.uni_development_males, estimator = "L0", side = "right")
###############################################################################
############################## FEMALE SIZE ##################################
###############################################################################
size_females = clean_data %>%
filter(Vec_trait=="SIZE") %>%
filter(Sex=="FEMALE")
length(unique(size_females$Study_ID))
#Calculate the Ratio of Means (ROM).
ROM_size_females = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = size_females,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_size_females <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_size_females,
method = "REML")
coef(summary(ROM.uni_size_females))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_size_females)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_size_females, model = "rma", predictor="sei")
#There is significant publication bias, so the "trimfill" function is used to impute values from missing studies.
trimfill(ROM.uni_size_females, estimator = "L0", side = "left")
trimfill(ROM.uni_size_females, estimator = "L0", side = "right")
#Visualization of the two imputed values on the right side of the funnel plot:
funnel(trimfill(ROM.uni_size_females, estimator = "L0", side = "right"))
###############################################################################
############################### MALE SIZE ###################################
###############################################################################
size_males = clean_data %>%
filter(Vec_trait=="SIZE") %>%
filter(Sex=="MALE")
length(unique(size_males$Study_ID))
#Calculate the Ratio of Means (ROM).
ROM_size_males = escalc(measure = "ROM",
n1i = Pred_n,
n2i = Con_n,
m1i = Pred_mean,
m2i = Con_mean,
sd1i = Pred_sd,
sd2i = Con_sd,
data = size_males,
var.names = c("ROM_est", "ROM_sv"),
append=T)
#Random effects model:
ROM.uni_size_males <- rma.uni(yi = ROM_est,
vi = ROM_sv,
data = ROM_size_males,
method = "REML")
coef(summary(ROM.uni_size_males))
#Assess publication bias visually with a funnel plot.
funnel(ROM.uni_size_males)
#Use Egger's regression test to quantitatively assess publication bias.
regtest(ROM.uni_size_males, model = "rma", predictor="sei")
Measuring effect sizes and heterogeneity
All analyses were conducted in R version 4.0.2 108R Development Core Team2019,12,31. For each subset of trait data (Figure 1), the ratio of means (ROM) measure of effect size was calculated using the ‘escalc’ function from the ‘metafor’ package; this effect measure is equal to a log-transformed fraction, where predation mean is the numerator and control mean is the denominator 143Viechtbauer2009,12,31. Random effects models, using the ‘rma.uni’ function, were run with the ROM effect sizes as response variables; each model had a normal error distribution and a restricted maximum likelihood (REML) estimator for τ2, the variance of the distribution of true effect sizes 143Viechtbauer2009,12,31. Although these random effects models could not account for multiple random effects or moderators, they provided overall estimates of the ROM effect sizes and estimates of the I2 statistics. Each I2 statistic represented the percentage of total variation across studies due to heterogeneity 60Higgins et al.2002,12,31. If the I2 statistic was equal to or greater than 75%, the heterogeneity was considered to be high 60Higgins et al.2002,12,31, and high heterogeneity has previously motivated further testing of moderators 144Vincze et al.2016,12,31.
Assessing publication bias
Publication bias was assessed by visually inspecting funnel plots and conducting Egger’s regression test (‘regtest’ function) with standard error as the predictor 129Sterne and Egger2000,12,31143Viechtbauer2009,12,31. If the Egger’s regression test showed significant evidence of publication bias based on funnel plot asymmetry, the ‘trim and fill’ method (‘trimfill’ function) was used to estimate how the predation effect size might change after imputing values from missing studies 37Duval and Tweedie1999,12,3138Duval and Tweedie1999,12,31143Viechtbauer2009,12,31. The trim and fill method has previously been recommended for testing the robustness of conclusions related to topics in ecology and evolution 64Jennions and Møller2001,12,31. Of the two trim and fill estimators, Rnull and Lnull, that were originally recommended 37Duval and Tweedie1999,12,3138Duval and Tweedie1999,12,31, the Lnull estimator was used in this study because it is more appropriate for smaller datasets 123Shi and Lin2018,12,31.
Testing moderators
Data subsets that had high heterogeneity, observations from at least 10 studies, and no evidence of publication bias according to Egger’s regression results were analyzed further using multilevel mixed effects models with the ‘rma.mv’ function 143Viechtbauer2009,12,3161Higgins et al.2019,12,31. All multilevel mixed effects models had normal error distributions, REML estimators for τ2, and accounted for two random factors: effect size ID, and experiment ID nested within study ID. Moderators, such as predator family, vector genus, larval instar (directly correlated to prey size), and temperature, were tested within each data subset to determine if they affected the observed heterogeneity in ROM effect sizes. For categorical moderators, the intercept of the multilevel mixed effects model was removed, allowing an analysis of variance (ANOVA) referred to as the ‘test of moderators’ to indicate if any of the categories had an effect size different than zero. For data subsets with observations from 10 to 29 studies, only one moderator was tested at a time to account for sample size constraints. For subsets with observations from a higher number of studies (30 or more), up to two moderators were tested at once, and interaction between moderators was also tested. The small sample corrected Akaike Information Criterion (AICc) was used to compare multilevel mixed effects models and to select the model of best fit within each data subset; differences in AICc greater than two were considered meaningful 22Burnham and Anderson2003,12,31.
Results
Random effects models
Each data subset (Figure 1) had an I2 statistic of greater than 75%, indicating high heterogeneity 60Higgins et al.2002,12,31. Random effects model results showed that predators consumptively decreased mosquito survival with an effect size of –1.23 (95% CI −1.43,–1.03), p-value < 0.0001, and non-consumptively reduced survival with a smaller effect size of –0.11 (95% CI −0.17,–0.04), p-value = 0.0016. In addition, predators non-consumptively reduced oviposition behavior with an effect size of –0.87 (95% CI −1.31,–0.42), p-value = 0.0001, and mosquito body size was non-consumptively reduced by predators in both males and females; the female effect size was –0.13 (95% CI −0.19,–0.06), p-value = 0.0002, and the male effect size was –0.03 (95% CI −0.06,–0.01), p-value = 0.0184. There was not a significant non-consumptive effect of predators on either male or female development time; the female effect size was –0.01 (95% CI –0.09, 0.07), p-value = 0.7901, and the male effect size was –0.04 (95% CI –0.12, 0.04), p-value = 0.3273.
The Egger’s regression test results showed that the non-consumptive survival subset, both development time subsets (male and female), and the female size subset exhibited funnel plot asymmetry indicative of publication bias. The ‘trim and fill’ procedure identified missing studies in the non-consumptive survival subset and the female size subset, but the procedure did not identify any missing studies in either of the development time subsets. Three studies were estimated to be missing from the non-consumptive survival data, and accounting for imputed values from missing studies resulted in a shift in the predation effect size from –0.11 (95% CI −0.17,–0.04), p-value = 0.0016, to -0.13 (95% CI −0.20,–0.07), p-value < 0.0001. Two studies were estimated to be missing from the female size data, and accounting for imputed values from these missing studies shifted the predation effect size from –0.13 (95% CI −0.19,–0.06), p-value = 0.0002, to -0.10 (95% CI −0.17,–0.03), p-value = 0.0083. Shifts in effect size estimates due to the trim and fill procedure were minor and did not cause any of the observed effects of predators to change direction or become insignificant.
Multilevel mixed effects models
The consumptive survival and oviposition data subsets met the criteria of high heterogeneity, observations from at least 10 studies, and no evidence of publication bias. Therefore, these data subsets were tested for moderators using multilevel mixed effects models. Predator families that decreased mosquito survival included Cyprinidae: –3.44 (95% CI −5.79,–1.09), p-value = 0.0042; Poeciliidae: –1.42 (95% CI −2.67,–0.16), p-value = 0.0270; Ambystomatidae: –5.18 (95% CI −7.94,–2.42), p-value = 0.0002; Aeshnidae: –2.93 (95% CI −4.80,–1.07), p-value = 0.0020; and Notonectidae: –2.14 (95% CI −3.07,–1.21), p-value < 0.0001 (Figure 3a). Vector genera that experienced significant decreases in survival due to consumptive effects of predators included Aedes: –1.23 (95% CI −1.81,–0.65), p-value < 0.0001; Anopheles: –1.34 (95% CI −2.01,–0.66), p-value = 0.0001; and Culex: –1.41 (95% CI −1.96,–0.86), p-value < 0.0001 (Figure 3b). Among all 187 consumptive survival observations from 34 studies, the best model fit, according to AICc value, was achieved when an interaction between predator family and vector genus was included in the model (Table 2). However, among the 163 larval stage consumptive survival observations from 30 studies, adding an interactive term between larval instar (an indicator of prey size) and predator family had a greater improvement on model fit than adding an interactive term between vector genus and predator family (Figure 3c, Table 3). Temperature did not affect the heterogeneity of consumptive survival data, either as a linear moderator: –0.01 (95% CI –0.10, 0.07), p-value = 0.7559, or a quadratic moderator: 0.00 (95% CI 0.00, 0.00), p-value = 0.8184. The best oviposition model fit, according to AICc value, was achieved when vector genus was added as a moderator (Table 4). The mean oviposition effect size was not significantly different than zero for Aedes: 0.32 (95% CI –2.14, 2.79), p-value = 0.7970, or Culiseta: –0.61 (95% CI –1.83, 0.62), p-value = 0.3329, but for Culex mosquitoes, oviposition was significantly decreased by predator presence: –1.69 (95% CI −2.82,–0.56), p-value = 0.0033 (Figure 4).
Moderator(s) | Test of moderators(degrees of freedom, p-value) | AICc | ΔAICc |
---|---|---|---|
Predator family x vector genus | 28, < 0.0001 | 500.5 | null |
Predator family | 19, < 0.0001 | 507 | 6.5 |
Predator family + vector genus | 23, < 0.0001 | 508.1 | 7.6 |
Vector genus | 5, < 0.0001 | 573 | 72.5 |
None | ---- | 576.5 | 76 |
Moderator(s) | Test of moderators(degrees of freedom, p-value) | AICc | ΔAICc |
---|---|---|---|
Predator family x larval instar | 25, < 0.0001 | 429.2 | null |
Predator family + larval instar | 19, < 0.0001 | 443.5 | 14.3 |
Predator family x vector genus | 25, < 0.0001 | 455 | 25.8 |
Predator family | 17, < 0.0001 | 456.8 | 27.6 |
Predator family + vector genus | 21, < 0.0001 | 458.4 | 29.2 |
Larval instar | 3, < 0.0001 | 503.1 | 73.9 |
Vector genus | 5, < 0.0001 | 504.7 | 75.5 |
None | ---- | 508.5 | 79.3 |
Moderator(s) | Test of moderators(degrees of freedom, p-value) | AICc | ΔAICc |
---|---|---|---|
Vector genus | 3, 0.0149 | 122.1 | null |
None | ---- | 125.2 | 3.1 |
Predator family | 12, 0.8855 | 167.9 | 45.8 |
Discussion
In this study, laboratory and semi-field empirical data were obtained through a systematic literature review and used to conduct a meta-analysis that assessed consumptive and non-consumptive effects of predators on mosquito prey. Some results agree with previously observed trends, such as greater consumptive effects from larger predators 74Kumar et al.2007,12,31104Peters1982,12,31 and no oviposition response to predator cues among container-breeding Aedes mosquitoes 146Vonesh and Blaustein2009,12,31. However, this meta-analysis revealed additional trends. Mosquito larval instar had an important role in moderating consumptive effects of predators, likely because of its direct correlation to prey size. Furthermore, a small, but significant, decrease in mosquito survival due to non-consumptive effects of predators was observed, suggesting that mosquitoes can be ‘scared to death’ by predators 106Preisser et al.2004,12,31. Both male and female body sizes were also reduced among mosquitoes that had been exposed to predators, and predator avoidance during oviposition was observed among female Culex mosquitoes. Effects of predators on different vector traits, particularly survival, body size, and oviposition behavior, have the potential to influence infectious disease dynamics.
Consumptive effects of predators on survival
Several larger predators reduced mosquito survival, including freshwater fish (Cyprinidae and Poeciliidae), salamander larvae (Ambystomatidae), dragonfly larvae (Aeshnidae), and backswimmers (Notonectidae) (Figure 3a). This finding is consistent with a previous analysis which showed a positive linear relationship between predator body mass and ingestion rate across taxa 104Peters1982,12,31. In addition, more effect size heterogeneity in the consumptive survival data was explained by an interaction between predator family and larval instar than was explained by an interaction between predator family and vector genus (Table 3). This result suggests that the relative sizes of predator and prey groups could play a more important role in determining consumptive mosquito survival than variations in predator responses to different behaviors of prey genera, which are likely to be shaped by the degree of shared evolutionary history between trophic levels 21Buchanan et al.2016,12,31. Larval instar is an indicator of mosquito size, and previous modeling work has provided evidence of prey size selection by predators to maximize energetic gain 92Mittelbach1980,12,31. While smaller cyclopoid copepods are more effective against early instar mosquito larvae 34Dieng et al.2001,12,31, larger predators including tadpoles, giant water bugs, dragonfly larvae, fish, and backswimmers are more effective against late instar larvae 75Kweka et al.2010,12,31.
Non-consumptive effects of predators on survival
Exposure to predation cues significantly lowered mosquito survival, and this non-consumptive effect has also been observed in dragonfly larvae prey (Leucorrhinia intacta) that were exposed to caged predators 90McCauley et al.2010,12,31. The reduction in mosquito survival from non-consumptive effects of predators was significantly smaller than the reduction that was observed from consumptive effects. This is partially due to the practical constraints of most experimental designs, which cause consumptive and non-consumptive effects of predators on survival to be grouped together and reported as consumptive effects. The greater impact of combined consumptive and non-consumptive effects, in comparison to only non-consumptive effects, has previously been observed in pea aphids (Acyrthosiphon pisum) 96Nelson et al.2003,12,31.
Non-consumptive effects of predators on body size
While predators did not significantly impact mosquito development time through non-consumptive effects in either sex, mosquito body size was decreased by the non-consumptive effects of predators in both sexes. Smaller body size is associated with lower reproductive success in mosquitoes because smaller females lay fewer eggs 16Blackmore and Lord1999,12,3184Lyimo and Takken1992,12,3198Oliver and Howard2010,12,31130Styer et al.2006,12,31138Tsunoda et al.2009,12,31, and smaller males produce less sperm 55Hatala et al.2017,12,31105Ponlawat and Harrington2006,12,31. These effects suggest that predation could non-consumptively reduce mosquito population growth. The smaller size of mosquitoes exposed to predators could also limit disease transmission. Vector lifespan contributes disproportionately to disease transmission because older vectors are more likely to have been exposed to pathogens, more likely to already be infectious after having survived the extrinsic incubation period, and more likely to survive long enough to bite subsequent hosts 23Cator et al.2019,12,31. It is well-established that smaller mosquito body size is associated with shorter mosquito lifespan 9Araújo et al.2011,12,3156Hawley1984,12,31111Reisen et al.1983,12,31112Reiskind and Lounibos2008,12,31149Xue et al.2009,12,31. Therefore, non-consumptive effects of predators may limit the transmission of mosquito-borne diseases.
Non-consumptive effects of predators on oviposition behavior
Predator presence also non-consumptively reduced oviposition behavior in adult female mosquitoes. Meta-regression results showed that Culex females significantly avoid oviposition sites that contain predators or predator cues, but Aedes and Culiseta females do not avoid these sites, despite a slight non-significant trend toward predator avoidance in Culiseta (Figure 4). Both Culex and Culiseta mosquitoes have an ‘all-or-none’ oviposition strategy 66Johnson and Fonseca2013,12,31, in which they lay hundreds of rapidly hatching eggs in rafts on the water’s surface 30Day2015,12,31. Such an oviposition strategy is conducive to evolving predator avoidance behaviors, and a previous meta-analysis showed significant predator avoidance in both Culex and Culiseta during oviposition 146Vonesh and Blaustein2009,12,31. Conversely, it is likely that an oviposition response to predation is not particularly advantageous for Aedes because the delayed hatching of their eggs 30Day2015,12,31 can prevent the level of predation risk at the time of oviposition from matching the level of predation risk present in the eventual larval environment 146Vonesh and Blaustein2009,12,31. The predator avoidance response in Aedes species that lay their eggs above the water’s edge in containers has previously been described as ‘non-existent’ 146Vonesh and Blaustein2009,12,31. Both Aedes species included in this study’s oviposition data subset, Ae. albopictus and Ae. aegypti, meet the criterion of ovipositing above water in containers 67Juliano2008,12,31. Predator avoidance during oviposition has previously been found to increase the mosquito population size at equilibrium 127Spencer et al.2001,12,31. However, this study’s results and those of a previous meta-analysis 146Vonesh and Blaustein2009,12,31 suggest that models of oviposition site selection, such as those using parameters from Notonectidae predators and Culiseta prey 70Kershenbaum et al.2011,12,31, are not generalizable to Aedes vectors.
Implications for West Nile Virus disease dynamics
Predator avoidance during oviposition by Culex mosquitoes (Figure 4) may be of particular importance to West Nile virus (WNV) disease dynamics. Previous work has shown that Cx. pipiens, Cx. restuans, and Cx. tarsalis all avoid predator habitats 146Vonesh and Blaustein2009,12,31, and that Cx. pipiens is the primary bridge vector of WNV responsible for spill-over transmission from avian reservoir hosts to humans 44Fonseca et al.2003,12,3151Hamer et al.2007,12,3172Kramer et al.2007,12,318Andreadis2011,12,31. Cx. pipiens mosquitoes can live in permanent aquatic environments, such as ground pools 3Amini et al.2019,12,3111Barr1966,12,3133Dida et al.2017,12,31133Sulesco et al.2014,12,31, ponds 83Lühken et al.2014,12,31, stream edges 3Amini et al.2019,12,31, and lake edges 145Vinogradova1999,12,31 that are more common in rural areas, but Cx. pipiens are also found in urban and suburban residential areas, where they typically breed in artificial containers 133Sulesco et al.2014,12,31, including tires 83Lühken et al.2014,12,3197Nikookar et al.2016,12,31140Verna2014,12,31, rainwater tanks 136Townroe and Callaghan2013,12,31, and catch basins 45Gardner et al.2011,12,31. Small artificial containers, such as discarded tires, are generally unlikely to harbor larger predators, including freshwater fish (Cyprinidae and Poeciliidae), salamander larvae (Ambystomatidae), dragonfly larvae (Aeshnidae), and backswimmers (Notonectidae), because temporary aquatic environments cannot support the relatively long development times of these organisms. The mean dispersal distance of adult Culex mosquitoes is greater than one kilometer 27Ciota et al.2011,12,3153Hamer et al.2013,12,31, and female Cx. pipiens have exhibited longer dispersal distances after developing in the presence of a fish predator 2Alcalay et al.2017,12,31. Therefore, predator avoidance during oviposition may cause Cx. pipiens populations to disperse from permanent aquatic environments in more rural areas to artificial container environments in urbanized areas, where the risk of human WNV infection is higher 19Brown et al.2007,12,31.
Predator cue levels may be altered by climate conditions, and these changes in cue levels can impact WNV transmission to humans. Drought has previously been associated with human WNV cases 65Johnson and Sukhdeo2012,12,3186Marcantonio et al.2014,12,31115Roehr2011,12,31122Shaman et al.2004,12,3142Epstein and Defilippo2000,12,31102Paull et al.2016,12,31, but the association has thus far lacked a clear underlying mechanism. Under drought conditions, the density of aquatic organisms increases and predation pressures can intensify due to compressed space and high encounter rates 4Amundrud et al.2018,12,31. A previous study of a stream ecosystem found that impacts of fish predation are more severe during the dry season 36Dudgeon1992,12,31. In addition, reductions in water volume can facilitate consumption of mosquito larvae by crane fly larvae (Tipulidae), whereas mosquito consumption by tipulids was not observed at a higher water level 4Amundrud et al.2018,12,31. Laboratory and semi-field studies have shown that mosquitoes respond to a gradient of predator cues 118Roux et al.2013,12,31125Silberbush and Blaustein2010,12,31. The frequency of larval anti-predator behavior is correlated with the concentration of predator cues 118Roux et al.2013,12,31, and adult female mosquitoes prefer oviposition sites with lower predator densities 125Silberbush and Blaustein2010,12,31. Therefore, as predator cue levels increase due to drought, permanent aquatic habitats are likely to transition from suitable oviposition sites for one generation of female mosquitoes, to unsuitable oviposition sites for the next generation.
When suitable oviposition sites are absent, females retain their eggs until sites become available 15Bentley and Day1988,12,31. Cx. pipiens females can retain their eggs for up to five weeks, allowing them enough time to find container sites with low predation risk, often located in residential areas 66Johnson and Fonseca2013,12,31. The movement of gravid female Cx. pipiens to residential areas increases the risk of WNV spill-over to humans because these vectors are likely to have already blood-fed at least once 28Clements1991,12,31, suggesting that they have a higher risk of WNV infection, relative to non-gravid mosquitoes. This is consistent with studies that have reported associations between drought and WNV-infected mosquitoes in urban and residential areas 65Johnson and Sukhdeo2012,12,31102Paull et al.2016,12,31. In addition, vertical transmission of WNV from gravid females to their progeny may occur during oviposition 117Rosen1987,12,31, when the virus is transmitted by an accessory gland fluid that attaches eggs to one another 95Nelms et al.2012,12,31. Because the rate of vertical transmission in Cx. pipiens increases with the number of days following WNV infection 7Anderson et al.2007,12,31, extended searches for oviposition sites due to drought could increase the frequency of vertical transmission. However, the impact of vertical transmission on WNV epidemics is thought to be minimal because when transmission to an egg raft did occur, only 4.7% of the progeny were found to be infected as adults 7Anderson et al.2007,12,31, and only about half of those infected adults are estimated to be female. In summary, the movement of Cx. pipiens females toward more residential areas, combined with potential limited WNV amplification from increased vertical transmission, suggests that the vector trait of predator avoidance during oviposition can serve as a plausible explanation for associations between drought and human WNV cases.
Another theory for the association between drought and human WNV cases is based on the hypothesis that increased contact between mosquito vectors and passerine reservoir hosts occurs during drought conditions 102Paull et al.2016,12,31122Shaman et al.2004,12,31. The proposed aggregation of bird and mosquito populations during drought was originally thought to occur in humid, densely vegetated hammocks – a type of habitat that is specific to southern Florida 122Shaman et al.2004,12,31, but WNV incidence is more consistently clustered in other regions of the US, particularly the Northern Great Plains 24CENTERS FOR DISEASE CONTROL AND PREVENTION2020,12,31132Sugumaran et al.2008,12,31. Northern cardinals (Cardinalis cardinalis), American robins (Turdus migratorius), and house sparrows (Passer domesticus) were among the bird species that most frequently tested seropositive for WNV antibodies in 2005 and 2006 in Chicago, where high numbers of human cases were reported 52Hamer et al.2007,12,31, and these passerine species are more abundant in residential areas, regardless of precipitation patterns 6Anderson2005,12,3113Beddall1962,12,3179Lepczyk et al.2007,12,31. Apart from drought, landowners’ participation in supplemental bird feeding, providing bird houses, gardening, and maintaining vegetation can strongly influence passerine abundance in residential areas 78Lepczyk et al.2003,12,31. Furthermore, as terrestrial foragers that can obtain hydration from their diet of insects, fruits, and other plant material 5Anderson2005,12,3120Brzek et al.2008,12,3185Malmborg and Willson1987,12,31113Renne et al.1999,12,31, passerine reservoir hosts of WNV are less likely to move in response to drought than the mosquito vectors of WNV, which have obligate aquatic life stages.
While hatch-year birds are more vulnerable to mosquito biting, and thus contribute to the amplification of WNV 52Hamer et al.2007,12,31, it is illogical to expect an increased abundance of hatch-year birds during drought conditions. However, some have argued that in cases where drought decreases the abundance of juvenile birds, the ratio of mosquitoes to birds increases, and this could lead to higher WNV prevalence in the mosquito population 102Paull et al.2016,12,31. Although reductions in both hatching success 46George et al.1991,12,31 and survival of recently fledged birds 150Yackel Adams et al.2005,12,31 have been observed during drought conditions, the impact of drought on avian abundance varies widely by species 141Verner and Purcell1998,12,31. In particular, synanthropic species, such as those likely to harbor WNV, are less negatively affected by drought 1Albright et al.2008,12,31. Additionally, the droughts that impact avian abundance often occur over much longer periods of time than the seasonal droughts that predict WNV transmission to humans. For example, avian abundance has been modeled based on precipitation metrics spanning 32 weeks, and house wren (Troglodytes aedon) abundance has been predicted by precipitation averages spanning four years 141Verner and Purcell1998,12,31. Finally, birds with higher levels of stress hormones are more likely to be fed on by mosquitoes, and certain factors associated with residential areas, such as road noise, light pollution, and pesticide exposure, can cause avian stress 47Gervasi et al.2015,12,31. Therefore, elevated avian stress hormones in these habitats may contribute to WNV prevalence in the mosquito population, independent of drought conditions.
Implications for mosquito-borne disease modeling
Although the aquatic phase of the mosquito life cycle is often overlooked in mathematical models of mosquito-borne pathogen transmission 110Reiner et al.2012,12,31, vector survival at immature stages plays an important role in determining mosquito population abundance, which is an essential factor for predicting disease transmission 12Beck-Johnson et al.2012,12,31. The results of this study show that mosquito survival decreases among the Aedes, Anopheles, and Culex genera due to consumptive effects of predators (Figure 3b), and that there is also a reduction in mosquito survival due to non-consumptive effects. Other studies have demonstrated that aquatic predators dramatically impact mosquito survival and abundance. For example, a biocontrol intervention relying on the application of copepod predators eliminated Aedes albopictus from three communes in Nam Dinh, Vietnam, where dengue transmission was previously detected, and reduced vector abundance by 86–98% in three other communes 69Kay et al.2001,12,31. Conversely, the annual abundance of Culex and Anopheles mosquitoes was observed to increase 15-fold in semi-permanent wetlands in the year following a drought, likely because the drought eliminated aquatic predators from wetlands that dried completely, and mosquitoes were able to re-colonize newly formed aquatic habitats more quickly than their most effective predators 26Chase and Knight2002,12,31.
While relationships between temperature and different vector traits, such as fecundity and lifespan, have been incorporated into models of temperature effects on mosquito population density 40El Moustaid and Johnson2018,12,31, models of predator effects on vector borne disease transmission have focused primarily on the impacts of predation on vector survival. Previous models have shown that predators of vector species can decrease or eliminate pathogen infection in host populations as vector fecundity increases 94Moore et al.2009,12,31. The findings of this meta-analysis suggest that predators also decrease vector fecundity through non-consumptive effects on vector body size. In addition, the entomological inoculation rate (EIR) is likely to be reduced by effects of predators on mosquito fecundity and lifespan, as well as effects of predators on mosquito survival. The EIR has been defined as the product of three variables: (m) the number of mosquitoes per host, (a) the daily rate of mosquito biting, and (s) the proportion of mosquitoes that are infectious 12Beck-Johnson et al.2012,12,31. Based on this study’s findings, predators are likely to decrease the number of mosquitoes per host by reducing mosquito survival through both consumptive and non-consumptive effects, and by reducing mosquito fecundity through non-consumptive effects on body size. In addition, predators are likely to decrease the proportion of mosquitoes that are infectious by shortening the vector lifespan through non-consumptive effects on body size. The relationship between mosquito body size and biting rate is unclear, with some studies showing higher biting rates among larger mosquitoes 9Araújo et al.2011,12,3150Gunathilaka et al.2018,12,31, and others reporting higher biting rates among smaller mosquitoes 43Farjana and Tuno2012,12,3177Leisnham et al.2007,12,31. The links between factors that influence the EIR and observed effects of predators on mosquito prey demonstrate the necessity of including both consumptive and non-consumptive effects of predators in models of mosquito-borne disease.
Conclusion
This meta-analysis on mosquito predation demonstrates that predators not only play an important role in directly reducing mosquito populations, but also have non-consumptive effects on surviving mosquitoes that may ultimately reduce further population growth and decrease disease transmission. While families of larger sized predators were effective in reducing mosquito survival, other factors, such as impacts on native species, as well as the economic cost of mass-rearing and field applications 73Kumar and Hwang2005,12,31107Pyke2007,12,31, should be carefully considered before selecting a predator as a suitable biocontrol agent. Predictive disease models are likely to be more reliable when the non-consumptive effects of predation are incorporated. Although exposure of mosquito larvae to predators is commonplace in outdoor field settings, it remains rare in most laboratory-based assessments of vector traits. Therefore, mosquitoes observed in nature are likely to have smaller body sizes than those observed under optimal laboratory conditions. It is important for disease modelers to recognize these impacts of predation on vector traits as they can reduce mosquito population growth and limit disease transmission due to shorter vector lifespans. Within the WNV disease system, consideration of the oviposition behavioral response to predation cues by Culex vectors can improve current understanding of the association between drought and human cases. This study provides general estimates of the effects of predators on selected mosquito traits for use in predictive disease models.
Future directions
Modeling efforts that aim to optimize the application of biocontrol predators should also consider incorporating predator effects on vector survival, fecundity, and lifespan. These additions to predictive models of various biocontrol interventions are likely to help public health officials choose the most cost-effective strategies for limiting disease transmission. In the 60-study database that was compiled, only one study was designed to directly measure the effect of larval-stage predation on vector competence 119Roux et al.2014,12,31. Therefore, future efforts to assess the impact of predators on mosquito-borne disease transmission should prioritize experimental studies in which infected mosquito larvae are observed throughout an initial period of aquatic exposure to predators, followed by a period of blood-feeding in the adult stage.
Two studies from the compiled database examined the compatibility of predators with Bacillus thuringiensis var. israelensis (Bti), a commonly used bacterial biocontrol agent 25Chansang et al.2003,12,3199Beeck et al.2015,12,31. Previous studies have supported the simultaneous application of cyclopoid copepod predators and Btinull88Marten et al.1992,12,31135Tietze et al.1993,12,31, but additional analyses are needed on the use of Bti with other families of mosquito predators. Populations of other insect pests, such as the southern green stink bug (Nezara viridula), are known to be regulated by both predators and parasites 39Ehler2001,12,31. The literature search conducted for this meta-analysis returned studies on water mite parasites 109Rajendran and Prasad1993,12,31 and nematode parasitoids 31Valdez2005,12,31 of mosquitoes, and ascogregarine parasites have previously been evaluated as biocontrol agents against Aedes mosquitoes 137Tseng2006,12,31. A more thorough review of the impacts of parasites and parasitoids on vector traits, such as survival, fecundity, and lifespan, is needed before incorporating these potential biocontrol agents into integrated vector control plans.
Three studies in the 60-study database included experiments where two mosquito prey species were made available to the predator species 48Grill and Juliano1995,12,3149Griswold and Lounibos2004,12,3191Micieli et al.2001,12,31. In these cases, the effect size measurement for each mosquito species could be influenced by interspecific competition, or a preference of the predator species for a certain prey species. Hetero-specific prey observations were excluded from this meta-analysis, but future analyses centered on the concepts of interspecific competition or predator preferences might further evaluate these data. In addition, this meta-analysis investigated consumptive and non-consumptive effects of predators separately. More research is needed to determine how models should combine these different types of predator effects to accurately reflect predation interactions as they occur in natural environments.
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