Seasonality and heterogeneity of malaria transmission determine success of interventions in high-endemic settings: a modeling study
Authored by Edward A Wenger, Jaline Gerardin, Prashanth Selvaraj
Date Published: 2018
DOI: 10.1186/s12879-018-3319-y
Sponsors:
Bill and Melinda Gates Foundation
Platforms:
Python
Model Documentation:
Other Narrative
Model Code URLs:
https://github.com/InstituteforDiseaseModeling/EMOD
Abstract
Background: Malaria transmission is both seasonal and heterogeneous, and
mathematical models that seek to predict the effects of possible
intervention strategies should accurately capture realistic seasonality
of vector abundance, seasonal dynamics of within-host effects, and
heterogeneity of exposure, which may also vary seasonally.
Methods: Prevalence, incidence, asexual parasite and gametocyte
densities, and infectiousness measurements from eight study sites in
sub-Saharan Africa were used to calibrate an individual-based model with
innate and adaptive immunity. Data from the Garki Project was used to
fit exposure rates and parasite densities with month-resolution. A model
capturing Garki seasonality and seasonal heterogeneity of exposure was
used as a framework for characterizing the infectious reservoir of
malaria, testing optimal timing of indoor residual spraying, and
comparing four possible mass drug campaign implementations for malaria
control.
Results: Seasonality as observed in Garki sites is neither sinusoidal
nor box-like, and substantial heterogeneity in exposure arises from
dry-season biting. Individuals with dry-season exposure likely account
for the bulk of the infectious reservoir during the dry season even when
they are a minority in the overall population. Spray campaigns offer the
most benefit in prevalence reduction when implemented just prior to peak
vector abundance, which may occur as late as a couple months into the
wet season, and targeting spraying to homes of individuals with
dry-season exposure can be particularly effective. Expanding seasonal
malaria chemoprevention programs to cover older children is predicted to
increase the number of cases averted per treatment and is therefore
recommended for settings of seasonal and intense transmission.
Conclusions: Accounting for heterogeneity and seasonality in malaria
transmission is critical for understanding transmission dynamics and
predicting optimal timing and targeting of control and elimination
interventions.
Tags
Malaria
Elimination
Africa
Prevalence
insecticide
Burkina-faso
Plasmodium-falciparum
Mosquitos
Area
Mathematical-models
Anopheles-gambiae
Seasonality
Inoculation rate
Heterogeneity mathematical modeling