When severe acute respiratory syndrome (SARS) arrived in the Canadian
cities of Vancouver and Toronto last spring, its first cases looked
remarkably similar. Both came from individuals who were infected
at the Metropole Hotel in Hong Kong and then flew home to Canada.
In Vancouver, however, no additional cases grew out of the initial
infection. In Toronto, that single case sparked a huge outbreak
where ultimately hundreds of people were infected. Why did such
different scenarios grow out of nearly identical situations?
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Dr. Lauren Ancel Meyers helps create mathematical
models that not only predict the spread of disease but can
also simulate various interventions strategies to determine
the one that might be most effective.
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“It sounds intuitive, but the key difference between these scenarios
is that the infected individuals had very different contact patterns,”
says Dr. Lauren Ancel Meyers, an assistant professor of integrative
biology at The University of Texas at Austin. “In the Vancouver
case, the man lived alone with his wife, and he went immediately
to a hospital where he was isolated and where caregivers took significant
precautions while treating him. In the Toronto case, the woman was
from a large multigenerational family. She died at home as an undiagnosed
case of SARS, meanwhile exposing many people in her family who later
went on to expose other people.
“So the contact patterns of the first few cases can make all the
difference as to whether you get a big outbreak or epidemic or none
at all.”
Understanding the contact patterns in a community is central to
Meyers’ research. She uses mathematical modeling to track and predict
the spread of infectious diseases in a community. Earlier this year
the University of British Columbia Centre for Disease Control (UBC
CDC) asked her to help them understand the spread of SARS in Canada
and worldwide and to determine the most appropriate intervention
strategies to stem the disease.
Meyers worked with Dr. Babak Pourbohloul, director of mathematical
modeling at the UBC CDC, and members of the Scientific Investigators’
Vaccine Initiative (SIVI) to create a mathematical model that describes
the spread of SARS through a city. Using demographic and census
data from Vancouver, they built a model of the patterns of interaction
in the city. Household size, the number of houses, distribution
of schools and hospitals and other data allowed them to construct
a network that represents the way individuals actually interact
in the community. Once they understand those interactions, they
can predict how rapidly a disease will spread, what parts of the
city are most at risk and what preventions are most effective in
stopping it.
Using mathematical models to analyze the spread of the disease
isn’t new, but Meyers and other researchers are approaching modeling
in a new way, using network theory.
In the past, most mathematical modeling of epidemics was undertaken
by separating a population into three or more distinct groups: those
who are susceptible to a disease, those who are already infected
and those who have recovered. It assumed that there was some probability
that those who are susceptible would come into contact with those
who were infected, that those who were infected would recover, and
that in some cases, those who recovered would once again become
susceptible.
“This doesn’t take into account the true heterogeneity of contact
patterns that underlie the spread of disease,” says Meyers.
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Traditional mathematical modeling of epidemics
(top) places individuals in large groups and tries to predict
the probability of movement from one group to the next.
Network theory (bottom) allows researchers to build more
complex models that take into consideration the contact
patterns of individuals.
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In reality, all susceptible people do not face the same risk of
contracting a disease. An elderly person living alone at home is
much less likely to come into contact with an infected person than
someone who works in a large office building or a hospital, for
example. In the initial Canadian SARS cases, it is clear that living
in a large family increased the chance of contracting a disease.
The type and frequency of interactions that a person has with others
is key to determining who may become infected.
“Using network theory, instead of grouping people into populations,
we take into account every single person, and every single person
becomes a point in a network,” says Meyers. “Now let’s say a person
brings a disease like SARS into a community. We can predict what
parts of the community—the network—will be infected, how quickly
it will spread, and how best to stop it .”
Network theory is often used by researchers investigating social
interactions, and it’s become popularized in the past decade through
the concept of “six degrees of separation.” “Six degrees of separation”
asserts that each person on the planet is at the most removed from
every other person by six degrees, or six connections with others.
The term was popularized by the playwright John Guare, who wrote
a play of the same name which was later made into a movie. And a
few years ago some college students in Pennsylvania created a “six
degrees of Kevin Bacon” game that become an instant fad, asking
players to link the ubiquitous actor to other actors in a maximum
of six steps.
The mathematical models Meyers builds borrow from sociological
approaches. The models account for the points of connection between
individuals.
“Each person within a community is represented as a point in the
network,” Meyers explains. “The edges that connect a person to other
people represent interactions that take place inside or outside
of the home, including interactions that take place at school or
work, while shopping or dining, while at a hospital, etc. The network
thereby captures the diversity of human contacts that underlie the
spread of disease.”
Some people may come into contact with very few people, but others
may have many strands connecting them to other people in the community
through their work or social habits. If this person becomes sick,
he or she has the potential to become what researchers call a “superspreader,”
someone who spreads disease to a lot of people in the community.
Identifying potential superspreaders is one step in curbing an outbreak.
This type of mathematical modeling may have important implications
for public health officials. When the SARS outbreak began, officials
were in a quandary. They needed to act quickly to control the spread
of the disease, yet they lacked the information necessary to determine
which interventions would be most effective. Would they be best
served by closing schools or by supplying health care workers with
better face masks, by limiting air travel or by waiting for a vaccine?
Such decisions may be easier to make in the future, thanks to advances
in mathematical modeling.
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This shows a municipal contact network. In a
city, SARS can spread within households, schools, workplaces,
hospitals and public spaces. The lines between the dots
represent contacts between individuals that could potentially
lead to disease transmission.
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“Mathematical models allow us to simulate the spread of diseases
through different kinds of settings and test different kinds of
interventions,” says Meyers. “This can give policymakers the tools
and confidence to make educated decisions.”
Meyers first started working on mathematical models in the spread
of infectious diseases while doing post-doctoral research in Atlanta
and at the Santa Fe Institute. She collaborated with Mark Newman
from the University of Michigan, one of the pioneers of epidemiological
network modeling, and some researchers at the Centers for Disease
Control and Prevention (CDC) who were trying to figure out how to
stop the spread of mycoplasma pneumonia—known as walking pneumonia—in
hospital wards, military barracks, college campuses and other places
where individuals come into close contact.
“Before we began this project, the CDC hadn’t yet determined the
best strategies for controlling the spread walking pneumonia because
they can rarely do experiments when an outbreak is in progress,”
Meyers explains. “They can’t treat half the population and not the
other half. It is also difficult to compare the success of interventions
on different outbreaks because the settings in which they take place
are often quite distinct.”
Meyers and her collaborators developed a mathematical model of
a psychiatric institution in Indiana, building a network that accounted
for everyone who works or lives in the facility. She found that
while the focus is generally on preventing the spread of walking
pneumonia from patient to patient, caregivers play a much more important
role in the large-scale spread of respiratory infections across
such a facility. Caregivers pick it up in one ward and spread it
to the next, and because of their diverse patient load, a few infected
caregivers can potentially lead to the infection hundreds of patients.
“Looking at this from a network modeling perspective allowed us
to see how important changing the behavior of caregivers is to stopping
an outbreak,” Meyers says.
The models then enable researchers to simulate a change in caregiver
behavior and project the response in the spread of disease. This
allows policymakers to test possible interventions before investing
time and money into them.
And should SARS or another respiratory-borne illness threaten Vancouver,
policymakers there will similarly be able to test possible interventions
before implementing them.
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Air travel can enable illnesses like SARS and
flu to cross international borders. Meyers is working on
a model of global disease transmission based on flights
in and out of American cities.
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Because contact patterns differ from community to community, mathematical
modeling requires that a model be built for each individual community.
Meyers and Pourbohloul are currently working with a large team of
Canadian epidemiologists and infectious disease experts to build
network models of four Canadian hospitals and two communities—one
rural and the other urban. Once good network models of these hospitals
and communities are in place, they can be used to predict and control
the spread of all kinds of diseases.
At the same time, modeling these distinct communities will allow
researchers to look to see if they can draw any generalizations
across communities. They hope to be able to say that, in general,
one type of intervention works better than another. Ideally, however,
each community, be it a large city like Toronto or a community like
The University of Texas at Austin campus, would have its own model
to use as a tool for preventing the spread of disease.
Meyers likes the idea of building some models closer to home, be
it for Texas or Austin or the university campus. In the meantime,
she’s working on Canada and beginning to build a network model of
global disease transmission based on the flights in and out of American
cities. This kind of larger scale model would be extremely helpful
for diseases like SARS and flu that cross international borders.
When reflecting on networks, Meyers calls to mind one of this year’s
other big news stories: the big power outage.
“You can think about electricity spreading along a grid like disease
spreading through a population,” she says. “But our goals for electricity
and epidemiology are opposite. With electricity, you want to make
sure your network is built so that if something happens to cut down
one of your links, the whole system is not going to crash. In the
case of disease, you want to break the connections through vaccinations
or other interventions that most effectively stop its spread.”
Vivé Griffith
Photos: Marsha Miller
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