Spatial modeling of personalized exposure dynamics: the case of pesticide use in small-scale agricultural production landscapes of the developing world
Authored by Stefan Leyk, Claudia R Binder, John R Nuckols
Date Published: 2009
DOI: 10.1186/1476-072x-8-17
Sponsors:
Swiss National Science Foundation (SNSF)
United States National Institutes of Health (NIH)
Fogarty International Institute
Colorado State University
Platforms:
Repast
Java
Model Documentation:
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
Model code not found
Abstract
Background: Pesticide poisoning is a global health issue with the
largest impacts in the developing countries where residential and
small-scale agricultural areas are often integrated and pesticides
sprayed manually. To reduce health risks from pesticide exposure
approaches for personalized exposure assessment (PEA) are needed. We
present a conceptual framework to develop a spatial individual-based
model (IBM) prototype for assessing potential exposure of farm-workers
conducting small-scale agricultural production, which accounts for a
considerable portion of global food crop production. Our approach
accounts for dynamics in the contaminant distributions in the
environment, as well as patterns of movement and activities performed on
an individual level under different safety scenarios. We demonstrate a
first prototype using data from a study area in a rural part of
Colombia, South America.
Results: Different safety scenarios of PEA were run by including
weighting schemes for activities performed under different safety
conditions. We examined the sensitivity of individual exposure estimates
to varying patterns of pesticide application and varying individual
patterns of movement. This resulted in a considerable variation in
estimates of magnitude, frequency and duration of exposure over the
model runs for each individual as well as between individuals. These
findings indicate the influence of patterns of pesticide application, individual spatial patterns of movement as well as safety conditions on
personalized exposure in the agricultural production landscape that is
the focus of our research.
Conclusion: This approach represents a conceptual framework for
developing individual based models to carry out PEA in small-scale
agricultural settings in the developing world based on individual
patterns of movement, safety conditions, and dynamic contaminant
distributions.
The results of our analysis indicate our prototype model is sufficiently
sensitive to differentiate and quantify the influence of individual
patterns of movement and decision-based pesticide management activities
on potential exposure. This approach represents a framework for further
understanding the contribution of agricultural pesticide use to exposure
in the small-scale agricultural production landscape of many developing
countries, and could be useful to evaluate public health intervention
strategies to reduce risks to farm-workers and their families. Further
research is needed to fully develop an operational version of the model.
Tags
Epidemiology
health
Risk
Location
Cellular-automata
Developing-countries
Air-pollution
Geographic information-systems
Land-use data
Residential exposure