Model
quantifies the impact of quarantine measures on Covid-19’s spread
Mary
Beth Gallagher | MIT Department of Mechanical Engineering
The research described in this article has been published on a preprint server but has not yet been peer-reviewed by scientific or medical experts.
The research described in this article has been published on a preprint server but has not yet been peer-reviewed by scientific or medical experts.
This
figure shows the model prediction of the infected case count for the United
States following its current model with quarantine control and the exponential
explosion in the infected case count if the quarantine measures were relaxed.
On the other hand, switching to stronger quarantine measures as implemented in
Wuhan, Italy, and South Korea might lead to a plateau in the infected case
count sooner. Image courtesy of the researchers.
Every
day for the past few weeks, charts and graphs plotting the projected apex of
Covid-19 infections have been splashed across newspapers and cable news. Many
of these models have been built using data from studies on previous outbreaks
like SARS or MERS.
Now, a team of engineers at MIT has developed a model that uses data from the Covid-19 pandemic in conjunction with a neural network to determine the efficacy of quarantine measures and better predict the spread of the virus.
Now, a team of engineers at MIT has developed a model that uses data from the Covid-19 pandemic in conjunction with a neural network to determine the efficacy of quarantine measures and better predict the spread of the virus.
“Our model is the first which uses data from the coronavirus itself and integrates two fields: machine learning and standard epidemiology,” explains Raj Dandekar, a PhD candidate studying civil and environmental engineering.
Together with George Barbastathis, professor of mechanical engineering, Dandekar has spent the past few months developing the model as part of the final project in class 2.168 (Learning Machines).
Most
models used to predict the spread of a disease follow what is known as the SEIR
model, which groups people into “susceptible,” “exposed,” “infected,” and
“recovered.” Dandekar and Barbastathis enhanced the SEIR model by training a
neural network to capture the number of infected individuals who are under
quarantine, and therefore no longer spreading the infection to others.
The
model finds that in places like South Korea, where there was immediate
government intervention in implementing strong quarantine measures, the virus
spread plateaued more quickly.
In places that were slower to implement government interventions, like Italy and the United States, the “effective reproduction number” of Covid-19 remains greater than one, meaning the virus has continued to spread exponentially.
In places that were slower to implement government interventions, like Italy and the United States, the “effective reproduction number” of Covid-19 remains greater than one, meaning the virus has continued to spread exponentially.
The
machine learning algorithm shows that with the current quarantine measures in
place, the plateau for both Italy and the United States will arrive somewhere
between April 15-20. This prediction is similar to other projections like that
of the Institute for Health Metrics and Evaluation.
“Our
model shows that quarantine restrictions are successful in getting the
effective reproduction number from larger than one to smaller than one,” says
Barbastathis. “That corresponds to the point where we can flatten the curve and
start seeing fewer infections.”
Quantifying
the impact of quarantine
In
early February, as news of the virus’ troubling infection rate started
dominating headlines, Barbastathis proposed a project to students in class
2.168. At the end of each semester, students in the class are tasked with
developing a physical model for a problem in the real world and developing a
machine learning algorithm to address it. He proposed that a team of students
work on mapping the spread of what was then simply known as “the coronavirus.”
“Students
jumped at the opportunity to work on the coronavirus, immediately wanting to
tackle a topical problem in typical MIT fashion,” adds Barbastathis.
One
of those students was Dandekar. “The project really interested me because I got
to apply this new field of scientific machine learning to a very pressing
problem,” he says.
As
Covid-19 started to spread across the globe, the scope of the project expanded.
What had originally started as a project looking just at spread within Wuhan,
China grew to also include the spread in Italy, South Korea, and the United
States.
The
duo started modeling the spread of the virus in each of these four regions
after the 500th case was recorded. That milestone marked a clear delineation in
how different governments implemented quarantine orders.
Armed
with precise data from each of these countries, the research team took the
standard SEIR model and augmented it with a neural network that learns how
infected individuals under quarantine impact the rate of infection. They
trained the neural network through 500 iterations so it could then teach itself
how to predict patterns in the infection spread.
Using
this model, the research team was able to draw a direct correlation between
quarantine measures and a reduction in the effective reproduction number of the
virus.
“The neural network is learning what we are calling the ‘quarantine control strength function,’” explains Dandekar.
In South Korea, where strong measures were implemented quickly, the quarantine control strength function has been effective in reducing the number of new infections. In the United States, where quarantine measures have been slowly rolled out since mid-March, it has been more difficult to stop the spread of the virus.
Predicting
the “plateau”
As
the number of cases in a particular country decreases, the forecasting model
transitions from an exponential regime to a linear one. Italy began entering
this linear regime in early April, with the U.S. not far behind it.
The
machine learning algorithm Dandekar and Barbastathis have developed
predicted that the United States will start to shift from an exponential
regime to a linear regime in the first week of April, with a stagnation in the
infected case count likely between April 15 and April 20. It also
suggests that the infection count will reach 600,000 in the United States
before the rate of infection starts to stagnate.
“This is a really crucial moment of time. If we relax quarantine measures, it could lead to disaster,” says Barbastathis.
According
to Barbastathis, one only has to look to Singapore to see the dangers that
could stem from relaxing quarantine measures too quickly. While the team didn’t
study Singapore’s Covid-19 cases in their research, the second wave of infection
this country is currently experiencing reflects their model’s finding about the
correlation between quarantine measures and infection rate.
“If
the U.S. were to follow the same policy of relaxing quarantine measures too
soon, we have predicted that the consequences would be far more catastrophic,”
Barbastathis adds.
The
team plans to share the model with other researchers in the hopes that it can
help inform Covid-19 quarantine strategies that can successfully slow the rate
of infection.