Sudden Oak Death Research Project:
Early detection of emerging forest disease using dispersal
estimation and ecological niche modeling
Distinguishing the manner in which dispersal limitation and niche requirements
control the spread of invasive pathogens is important for prediction and early detection of
disease outbreaks. Here, we use niche modeling augmented by dispersal estimation to examine
the degree to which local habitat conditions vs. force of infection predict invasion of
Phytophthora ramorum, the causal agent of the emerging infectious tree disease sudden oak
death.

We sampled 890 field plots for the presence of
P. ramorum over a three-year period
(2003–2005) across a range of host and abiotic conditions with variable proximities to known
infections in California, USA. We developed and validated generalized linear models of
invasion probability to analyze the relative predictive power of 12 niche variables and a
negative exponential dispersal kernel estimated by likelihood profiling. Models were developed
incrementally each year (2003, 2003–2004, 2003–2005) to examine annual variability in model
parameters and to create realistic scenarios for using models to predict future infections and to
guide early-detection sampling.

Overall, 78 new infections were observed up to 33.5 km from
the nearest known site of infection, with slightly increasing rates of prevalence across time
windows (2003, 6.5%; 2003–2004, 7.1%; 2003–2005, 9.6%). The pathogen was not detected in
many field plots that contained susceptible host vegetation. The generalized linear modeling
indicated that the probability of invasion is limited by both dispersal and niche constraints.
Probability of invasion was positively related to precipitation and temperature in the wet
season and the presence of the inoculum-producing foliar host Umbellularia californica and
decreased exponentially with distance to inoculum sources.
Models that incorporated niche
and dispersal parameters best predicted the locations of new infections, with accuracies
ranging from 0.86 to 0.90, suggesting that the modeling approach can be used to forecast
locations of disease spread. Application of the combined niche plus dispersal models in a
geographic information system predicted the presence of P. ramorum across
~8228 km2 of
California’s 84 785 km2 (9.7%) of land area with susceptible host species. This research
illustrates how probabilistic modeling can be used to analyze the relative roles of niche and
dispersal limitation in controlling the distribution of invasive pathogens.

Meentemeyer, R.K., Anacker, B., Mark, W., and RIzzo, D.M.
2008. Early detection of emerging forest disease using dispersal
estimation and ecological niche modeling. Ecological Application.
(PDF)
Other Sudden Oak Death Research Projects::
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