A new model to predict the spread of emerging diseases has been developed
by researchers in the US, Italy, and France. The model, described in the
online open access journal BMC Medicine, could give healthcare
professionals advance warning of the path an emerging disease might take
and so might improve emergency responses and control.
Severe acute respiratory syndrome (SARS) spread rapidly in 2002-2003,
revealing just how vulnerable we might be to emerging diseases and how
global transportation is critical to the spread of an epidemic.
Now, Vittoria Colizza and Alessandro Vespignani of Indiana University,
Bloomington, USA and the Institute for Scientific Interchange Foundation,
in Turin, Italy, and colleagues in France have developed a predictive
model of the spread of emerging diseases based on actual travel and census
data for more than three thousand urban areas in 220 countries. The model
provides predictions of how likely an outbreak will be in each region and
how widespread it might become. The research highlights just how the
accuracy in predicting the spreading pattern of an epidemic can be related
to clearly identifiable routes by which the disease could spread.
In order to assess the predictive power of their model, the researchers
turned to the historical records of the global spread of the SARS virus.
They evaluated the initial conditions before the disease had spread
widely, based on the data for the arrival of the first patient who left
mainland China for Hong Kong, and for the resulting outbreak there. They
then simulated the likelihood that SARS would emerge in specific countries
thereafter, as brought by infectious travelers. The simulated results fit
very accurately with the actual pattern of the spread of SARS in 2002.
Analysis of the results also identified possible paths of the virus'
spread along the routes of commercial air travel, highlighting some
preferred channels which may serve as epidemic pathways for the global
spread of the disease.
"The presented computational approach shows that the integration of
long-range mobility and demographic data provides epidemic models with a
predictive power that can be consistently tested," the researchers
explain. "This computational strategy can be therefore considered as a
general tool in the analysis and forecast of the global spreading of
emerging diseases."
Article
Predictability and epidemic pathways in global outbreaks of infectious
diseases: the SARS case study Vittoria Colizza, Alain Barrat, Marc
Barthelemy and Alessandro Vespignani
BMC Medicine
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