Contact:
Anne Watzman
412-268-3830
aw16@andrew.cmu.edu
Byron
Spice
412-268-9068
bspice@cs.cmu.edu
Carnegie Mellon Study Identifies Where Thoughts
Of
Familiar Objects Occur Inside the Human Brain
Experts Trained Algorithm To Extract Patterns From
Participants' Brain Activation Scans
PITTSBURGH — A team of Carnegie Mellon University computer
scientists and cognitive neuroscientists, combining methods of
machine learning and brain imaging, have found a way to
identify where people's thoughts and perceptions of familiar
objects originate in the brain by identifying the patterns of
brain activity associated with the objects. An article in the
Jan. 2 issue of PLoS One discusses this new method, which was
developed over two years under the leadership of
neuroscientist Professor Marcel Just and Computer Science
Professor Tom M. Mitchell.
A
dozen study participants enveloped in an MRI scanner were
shown line drawings of 10 different objects - five tools and
five dwellings -one at a time and asked to think about their
properties. Just and Mitchell's method was able to accurately
determine which of the 10 drawings a participant was viewing
based on their characteristic whole-brain neural activation
patterns. To make the task more challenging for themselves,
the researchers excluded information in the brain's visual
cortex, where raw visual information is available, and focused
more on the "thinking" parts of the brain.
The scientists found that the activation pattern evoked by
an object wasn't located in just one place in the brain. For
instance, thinking about a hammer activated many locations.
How you swing a hammer activated the motor area, while what a
hammer is used for, and the shape of a hammer activated other
areas.
According to Just and Mitchell, this is the first study to
report the ability to identify the thought process associated
with a single object. While earlier work showed it is possible
to distinguish broad categories of objects such as "tools"
versus "buildings," this new research shows that it is
possible to distinguish between items with very similar
meanings, like two different tools. The machine-learning
method involves training a computer algorithm (a set of
mathematical rules) to extract the patterns from a
participant's brain activation, using data collected in one
part of the study, and then testing the algorithm on data in
an independent part of the same study. In this way, the
algorithm is never previously exposed to the patterns on which
it is tested.
Another
important question addressed by the study was whether
different brains exhibit the same or different activity
patterns to encode these individual objects. To answer this
question, the researchers tried identifying objects
represented in one participant's brain after training their
algorithms using data collected from other participants. They
found that the algorithm was indeed able to identify a
participant's thoughts based on the patterns extracted from
the other participants.
"This part of the study establishes, as never before, that
there is a commonality in how different people's brains
represent the same object," said Mitchell, head of the Machine
Learning Department in Carnegie Mellon's School of Computer Science
and a pioneer in applying machine learning methods to the
study of brain activity. "There has always been a
philosophical conundrum as to whether one person's perception
of the color blue is the same as another person's. Now
we see that there is a great deal of commonality across
different people's brain activity corresponding to familiar
tools and dwellings."
"This first step using computer algorithms to identify
thoughts of individual objects from brain activity can open
new scientific paths, and eventually roads and highways,"
added Svetlana Shinkareva, an assistant professor of
psychology at the University of South Carolina who is the
study's lead author. "We hope to progress to identifying
the thoughts associated not just with pictures, but also with
words, and eventually sentences."
Just, who directs the Center for
Cognitive Brain Imaging at Carnegie Mellon, noted that one
application the team is excited about is comparing the
activation patterns of people with neurological disorders,
such as autism. "We are looking forward to determining how
people with autism neurally represent social concepts such as
friend and happy," he said. Just also is developing a
brain-based theory of autism. "People with autism perceive
others in a distinctive way that has been difficult to
characterize," he explained. "This machine learning approach
offers a way to discover that characterization."
The project applying machine learning to brain patterns was
funded by the W.M. Keck Foundation and the National Science
Foundation.
For more information on the article contact Marcel Just, at
412-268-2791.
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Top photo: Marcel Just; Bottom photo: Tom
Mitchell