Background. Aedes albopictus is an aggressive invasive mosquito species that represents
a serious health concern not only in tropical areas, but also in temperate regions due
to its role as vector of arboviruses. Estimates of mosquito biting rates are essential to
account for vector-human contact in models aimed to predict the risk of arbovirus
autochthonous transmission and outbreaks, as well as nuisance thresholds useful for
correct planning of mosquito control interventions. Methods targeting daytime and
outdoor biting Ae. albopictus females (e.g., Human Landing Collection, HLC) are
expensive and difficult to implement in large scale schemes. Instead, egg-collections
by ovitraps are the most widely used routine approach for large-scale monitoring of
the species. The aim of this work was to assess whether ovitrap data can be exploited
to estimate numbers of adult biting Ae. albopictus females and whether the resulting
relationship could be used to build risk models helpful for decision-makers in charge
of planning of mosquito-control activities in infested areas.
Method. Ovitrap collections and HLCs were carried out in hot-spots of Ae. albopictus
abundance in Rome (Italy) along a whole reproductive season. The relationship between
the two sets of data was assessed by generalized least square analysis, taking into account
meteorological parameters.
Result. The mean number of mosquito females/person collected by HLC in 150
(i.e.,
females/HLC) and the mean number of eggs/day were 18.9 ± 0.7 and 39.0 ± 2.0,
respectively. The regression models found a significant positive relationship between
the two sets of data and estimated an increase of one biting female/person every five
additional eggs found in ovitraps. Both observed and fitted values indicated presence of
adults in the absence of eggs in ovitraps. Notably, wide confidence intervals of estimates
of biting females based on eggs were observed. The patterns of exotic arbovirus outbreak
probability obtained by introducing these estimates in risk models were similar to those
based on females/HLC (R0 > 1 in 86% and 40% of sampling dates for Chikungunya and
Zika, respectively; R0 < 1 along the entire season for Dengue). Moreover, the model
predicted that in this case-study scenario an R0 > 1 for Chikungunya is also to be
expected when few/no eggs/day are collected by ovitraps.
Discussion. This work provides the first evidence of the possibility to predict mean
number of adult biting Ae. albopictus females based on mean number of eggs and to
compute the threshold of eggs/ovitrap associated to epidemiological risk of arbovirus
transmission in the study area. Overall, however, the large confidence intervals in the
model predictions represent a caveat regarding the reliability of monitoring schemes
based exclusively on ovitrap collections to estimate numbers of biting females and plan
control interventions