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By decoding brain activity, scientists were able to ‘see’ that 2 monkeys were planning to approach the same reaching task differently – even before they moved a muscle.
Anyone who has looked at the jagged recording of the electrical activity of a single neuron in the brain must have wondered how any useful information could be extracted from such a frazzled signal.
But over the past 30 years, researchers have discovered that clear information can be obtained by decoding the activity of large populations of neurons.
Now, scientists at Washington University in St. Louis, who were decoding brain activity while monkeys reached around an obstacle to touch a target, have come up with two remarkable results.
Their first result was one they had designed their experiment to achieve: they demonstrated that multiple parameters can be embedded in the firing rate of a single neuron and that certain types of parameters are encoded only if they are needed to solve the task at hand.
Their second result, however, was a complete surprise. They discovered that the population vectors could reveal different planning strategies, allowing the scientists, in effect, to read the monkeys’ minds.
By chance, the two monkeys chosen for the study had completely different cognitive styles. One, the scientists said, was a hyperactive type, who kept jumping the gun, and the other was a smooth operator, who waited for the entire setup to be revealed before planning his next move. The difference is clearly visible in their decoded brain activity.
The study was published in the July 19th advance online edition of the journal Science.
All in the task
The standard task for studying voluntary motor control is the “center-out task,” in which a monkey or other subject must move its hand from a central location to targets placed on a circle surrounding the starting position.
To plan the movement, says Daniel Moran, PhD, associate professor of biomedical engineering in the School of Engineering & Applied Science and of neurobiology in the School of Medicine at Washington University in St. Louis, the monkey needs three pieces of information: current hand and target position and the velocity vector that the hand will follow.
In other words, the monkey needs to know where his hand is, what direction it is headed and where he eventually wants ot to go.
A variation of the center-out task with multiple starting positions allows the neural coding for position to be separated from the neural coding for velocity.
By themselves, however, the straight-path, unimpeded reaches in this task don’t let the neural coding for velocity to be distinguished from the neural coding for target position, because these two parameters are always correlated. The initial velocity of the hand and the target are always in the same direction.
To solve this problem and isolate target position from movement direction, doctoral student Thomas Pearce designed a novel obstacle-avoidance task to be done in addition to the center-out task.
Crucially, in one-third of the obstacle-avoidance trials, either no obstacle appeared or the obstacle didn’t block the monkey’s path. In either case, the monkey could move directly to the target once he got the “go” cue.
The population vector corresponding to target position showed up during the third hold of the novel task, but only if there was an obstacle. If an obstacle appeared and the monkey had to move its hand in a curved trajectory to reach the target, the population vector lengthened and pointed at the target. If no obstacle appeared and the monkey could move directly to the target, the population vector was insignificant.
In other words, the monkeys were encoding the position of the target only when it did not lie along a direct path from the starting position and they had to keep its position “in mind” as they initially moved in the “wrong” direction.
“It’s all,” Moran says, “in the design of the task.”
And then some magic happens
Pearce’s initial approach to analyzing the data from the experiment was the standard one of combining the data from the two monkeys to get a cleaner picture.
“It wasn’t working,” Pearce says, “and I was frustrated because I couldn’t figure out why the data looked so inconsistent. So I separated the data by monkey, and then I could see, wow, they’re very different. They’re approaching this task differently and that’s kind of cool.”
The difference between the monkey’s’ styles showed up during the second hold. At this point in the task, the target was visible, but the obstacle had not yet appeared.
The hyperactive monkey, called monkey H, couldn’t wait. His population vector during that hold showed that he was poised for a direct reach to the target. When the obstacle was then revealed, the population vector shortened and rotated to the direction he would need to move to avoid the obstacle.
The difference between the cognitive styles of two monkeys is clearly visible in the neural population vectors for hand movement direction. The instant the target (green) appears, monkey H plans to move directly to it (his direction decoding vector lengthens in the direction of the target). When the obstacle then appears, the vector shrinks and rotates to a direction that will allow him to avoid the obstacle and then lengthens again. In contrast, monkey G doesn’t react to the appearance of the target. Knowing that his path to the target may be blocked by the obstacle he waits until the task has been fully specified before planning his move.
The smooth operator, monkey G, in the meantime, idled through the second hold, waiting patiently for the obstacle to appear. Only when it was revealed did he begin to plan the direction he would move to avoid the obstacle.
Because he didn’t have to correct course, monkey G’s strategy was faster, so what advantage was it to monkey H to jump the gun? In the minority of trials where no obstacle appeared, monkey H approached the target more accurately than monkey G. Maybe monkey H is just cognitively adapted to a Whac-A-Mole world. And monkey G, when caught without a plan, was at a disadvantage.
Working with the monkeys, the scientists had been aware that they had very different personalities, but they had no idea this difference would show up in their neural recordings.
“That’s what makes this really interesting,” Moran says.
Notes about this neuroscience research article
Written by Diana Lutz Contact: Diana Lutz – Washington University in St. Louis Source: Washington University in St. Louis press release Image Source: Monkey performing a center-out reaching task and an obstacle avoidance task images adapted from images credited to Moran/Pearce. Video Source: Neuroscience video shared on Youtube.com by user wustlpa Original Research: Abstract for “Strategy-Dependent Encoding of Planned Arm Movements in the Dorsal Premotor Cortex” by Thomas M. Pearce and Daniel W. Moran in Scienceonline 19 July 2012 doi:10.1126/science.1220642