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Sean Mackey, Stanford:
Computer algorithm measures pain objectively
September 14, 2011
Researchers from the Stanford
University School of Medicine have taken a first step toward developing
a diagnostic tool that could eliminate a major hurdle in pain medicine —
the dependency on self-reporting to measure the presence or absence of
pain. The new tool would use patterns of brain activity to give an
objective physiologic assessment of whether someone is in pain.
Pain
expert Sean Mackey and his colleagues are working to develop a tool that
could assess whether someone is experiencing pain.
The scientists used functional magnetic resonance imaging scans of the
brain combined with advanced computer algorithms to accurately predict
thermal pain 81 percent of the time in healthy subjects, according to a
study published Sept. 13 in the online journal PLoS ONE.
“People have been looking for a pain detector for a very long time,”
said Sean Mackey, MD, PhD, chief of the Division of Pain Management and
associate professor of anesthesia. “We’re hopeful we can eventually use
this technology for better detection and better treatment of chronic
pain.”
Researchers stressed that future studies are needed to determine whether
these methods will work to measure various kinds of pain, such as
chronic pain, and whether they can distinguish accurately between pain
and other emotionally arousing states, such as anxiety or depression.
“A key thing to remember is that this approach objectively measured
thermal pain in a controlled lab setting,” Mackey said. “We should take
care not to extrapolate these findings to say we can measure and detect
pain in all circumstances.”
The need for a better way to objectively measure pain instead of relying
on the current method of self-reporting has long been acknowledged. But
the highly subjective nature of pain has made this an elusive goal.
Advances in neuroimaging techniques have re-invigorated the debate over
whether it might be possible to measure pain physiologically, and, in
fact, led to this current study.
“We rely on patient self-reporting for pain, and that remains the gold
standard,” said Mackey, senior author of the study. “That’s what I, as a
physician, rely on when I take care of a patient with chronic pain. But
there are a large number of patients, particularly among the very young
and the very old, who can’t communicate their pain levels. Wouldn’t it
be great if we had a technique that could measure pain physiologically?”
A study released by the Institute of Medicine in June reported that more
than 100 million Americans suffer chronic pain, costing around $600
billion each year in medical expenses and lost productivity. (Mackey was
a member of the committee that produced the report.) What’s more, it
found that cultural bias against chronic pain sufferers as being weak or
even worse — they are often perceived as lying about their pain —
complicates the delivery of appropriate treatment. Similar biases crop
up in the legal field, with hundreds of thousands of cases each year
that hinge on the existence of pain, said Stanford law professor Hank
Greely, an expert on the legal, ethical and social issues surrounding
the biosciences.
“A robust, accurate way to determine whether someone is in pain or not
would be a godsend for the legal system,” said Greely, who did not
participate in the study.
The idea for this study germinated at a 2009 Stanford Law School event
organized by Greely that brought together neuroscientists and legal
scholars to discuss how the neuroimaging of pain could be used and
abused in the legal system. Mackey and two of his lab assistants
attended.
“At the end of the symposium, there was discussion about the challenges
of creating a ‘painometer.’ I discussed hypothetically how we could do
this in the future,” Mackey said. “These two young scientists in my lab
came up to me after and said, ‘We think we can do this. We would like to
try.’ I was skeptical.”
The two scientists — Neil Chatterjee, currently a MD/PhD student at
Northwestern University, and first author of the study Justin Brown,
PhD, now an assistant professor of biology at Simpson College — came up
with the concept in a discussion after the symposium.
“It was very much on a whim,” said co-author Chatterjee. “We thought,
maybe we can’t make the perfect tool, but has anyone ever really tried
doing this on a very, very basic level? It turned out to be surprisingly
simple to do this.”
Researchers took eight subjects, and put them in the brain-scanning
machine. A heat probe was then applied to their forearms, causing
moderate pain. The brain patterns both with and without pain were then
recorded and interpreted by advanced computer algorithms to create a
model of what pain looks like. The process was repeated with a second
group of eight subjects.
The
idea was to train a linear support vector machine — a computer algorithm
invented in 1995 — on one set of individuals, and then use that computer
model to accurately classify pain in a completely new set of
individuals.
The computer was then asked to consider the brain scans of eight new
subjects and determine whether they had thermal pain.
“We asked the computer to come up with what it thinks pain looks like,”
Chatterjee said. “Then we could measure how well the computer did.” And
it did amazingly well. The computer was successful 81 percent of the
time.
“I was definitely surprised,” Chatterjee said. |