Engineer Who Survived Pandemic Of '68 Creates Model To Track Outbreak
06/04/07
Nearly 40 years ago, MIT Professor Richard Larson
spent a week sick in bed with the worst illness he'd ever had-the
particularly virulent strain of flu that swept the globe in 1968. "That
was the sickest I'd ever been," Larson recalled. "I really thought that
was the end." It took him two or three months to recover fully from the
illness.
Known as the Hong Kong flu, the virus killed 750,000 people worldwide, the
second worst influenza pandemic the world has seen since the infamous
1918-1919 epidemic of so-called Spanish flu.
Now, many experts fear the world is on the brink of another deadly flu
pandemic. And Larson wants to be sure that people are ready to deal with
it.
To that end, he and his colleagues have developed a mathematical model to
track the progression of a flu outbreak. Their results show that the death
toll of an epidemic could be greatly reduced by minimizing social contacts
and practicing good hygiene, such as frequent handwashing, as early as
possible.
The report, "Simple Models of Influenza Progression within a Heterogeneous
Population," will be published in the May-June issue of Operations
Research, which comes out June 4.
"We can't reduce to zero the chance that any of us will get the next bad
flu. But there is compelling evidence that we can reduce the chances of
our loved ones and ourselves getting the flu by a significant factor,"
said Larson, the Mitsui Professor of Engineering Systems and of civil and
environmental engineering.
The H5N1 strain of flu, also known as avian flu, has infected birds
throughout Asia and Europe, with a few known cases among humans. So far,
the disease has not mutated to a form where it can jump easily between
humans, but if that happens, the disease could spread around the world in
days or weeks.
Larson's research team decided to model the progress of such an epidemic,
taking a unique approach. Unlike most existing models, theirs takes into
account people's different levels of social activity and susceptibility to
the flu.
One of the report's key findings is that "social distancing"-reducing the
frequency and intensity of person-to-person contact-could be an effective
way to limit the spread of the disease.
Influenza is normally spread by person-to-person contact, so people who
have more contact with others have a higher risk of catching the disease
and then spreading it. However, most existing influenza models assume that
all individuals within a population have the same degree of social
contact. They also assume that social behavior does not change over the
course of the epidemic.
Such models "didn't do justice to the complexity of the problem," Larson
says.
He and his team developed a dynamic mathematical model that assumes a
heterogeneous population with different levels of flu susceptibility and
social contact. They then used the model to compare different scenarios:
one where people maintained their social interactions as the flu spread,
and others where they did not.
Their results showed that reducing the social contacts of people who
normally have the most interactions could dramatically slow early growth
of the disease. Most of the disease spread is due to a minority of the
population-the people with the most daily human contacts. Focusing on
these individuals and reducing their daily contacts can change an
exponentially exploding disease into one that dies out over time.
A key feature of the model deals with "R0," a popular parameter of most
other models, which is defined as the average number of new infections
caused by a recently infected person in a population of susceptible
individuals. An R0 greater than 1.0 leads to exponential increase in the
number of cases.
However, because R0 is an average over the entire population, it does not
reflect that fact that only a fraction of the population is responsible
for the majority of new infections. Averages can be misleading-for
example, when a billionaire enters any establishment, on average everyone
there instantly becomes at least a millionaire.
The researchers believe that splitting R0 into components, one for each
level of activity or propensity to become infected, provides better policy
guidance. In Larson's model, every population component is assigned
different values for R0 , depending on factors such as that component's
frequency of human contact and susceptibility to infection if exposed to
the flu. Each of these factors can be at least partially controlled,
suggesting that our individual and collective behaviors in response to the
flu can greatly influence the numbers who become infected.
The researchers also found a striking difference in death toll depending
on how early in the epidemic social distancing measures went into effect.
For example, in a hypothetical population of 100,000 susceptible
individuals, 12,000 fewer people were infected if social distancing steps
were taken on day 30 of an outbreak instead of day 33. But intervention
on Day 0 is best.
This finding is consistent with historical research reported in April by
two research teams, one led by the National Institute of Allergy and
Infectious Diseases and one from the United Kingdom, that demonstrated
that those communities in 1918 that took aggressive social distancing
actions early usually suffered less from the "Spanish Flu" than those who
waited and debated.
The findings strongly suggest that influenza emergency plans should
include measures to reduce social contact, such as encouraging people to
work from home and avoid large gatherings, Larson said. This is especially
important because it generally takes at least six months from the time of
an outbreak to develop an effective vaccine. Those who must continue to
work, such as doctors and other health care workers, should be the first
to receive any available avian flu vaccine that might be developed, he
said.
Larson says that large institutions like MIT, as well as state and local
governments, should have emergency plans ready to put into action as soon
as the first case of human-to-human H5N1 influenza is reported.
"We need to be aggressive. We need to be assertive. Don't dilly-dally,
don't have a lot of political debate and foot-dragging," he said. "If
people do take it seriously, the number of deaths could be greatly
reduced. A key is to start taking aggressive steps well before the flu is
at your doorstep."
Larson became interested in modeling influenza after reading a book about
the 1918 outbreak, which killed between 50 and 100 million people around
the world. He had never heard much about the epidemic, which in the United
States claimed more victims than World War I.
"Reading the history of it, I became fascinated," he said. "The wonderful
thing about being in OR (operations research) is you can go into any
problem you think is important and relevant and really contribute to it."
Larson said he hopes that other operations researchers will take up
influenza research and develop more detailed models.
"Any mathematical model of the disease is bound to be incorrect," Larson
wrote in the Operations Research paper. "But we are not seeking
multidecimal accuracy, but rather insights on how to limit the spread of
the disease. We firmly believe that fresh eyes from the OR community can
play a significant role in this quest."
Other members of the MIT research team include undergraduate Kelley
Bailey; Stan Finkelstein, senior research scientist in the Engineering
Systems Division; Karima Robert Nigmatulina, graduate student in the
Operations Research Center; Robert Rubin, faculty member at the
Harvard-MIT Division of Health Sciences and Technology; and Katsunobu
Sasanuma, a graduate student in the Engineering Systems Division and the
Operations Research Center.
The research was funded in part by an IBM Faculty Research Award.
Written by Anne Trafton, MIT News Office
(Author: http://www.mit.edu)
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