
Scientists used a reaching apparatus to study finger paths from a center button to eight other buttons in random order. While volunteers touched the buttons, researchers recorded their brain signals and hand motions. Afterward, the researchers attempted to decode the signals and reconstruct the 3-D hand movements. Image used with permission of Bradberry et al. The Journal of Neuroscience 2010.
Researchers have successfully reconstructed 3D hand motions from brain signals recorded in a non-invasive way, according to a study in the March 3 issue of The Journal of Neuroscience. This finding uses a technique that may open new doors for portable brain-computer interface (BCI) systems. Such a noninvasive system could potentially operate a robotic arm or motorized wheelchair-a huge advance for people with disabilities or paralysis.
Until now, to reconstruct hand motions, researchers have used nonportable, invasive methods that place sensors inside the brain. In this study, a team of neuroscientists led by José Contreras-Vidal, PhD, of the University of Maryland, College Park (UMCP), placed an array of sensors on the scalps of five participants to record their brains’ electrical activity, using electroencephalography (EEG). Volunteers were asked to reach from a center button and touch eight other buttons in random order ten times, while the authors recorded their brain signals and hand motions. Afterward, the researchers attempted to decode the signals and reconstruct the 3D hand movements.
“Our results showed that electrical brain activity acquired from the scalp surface carries enough information to reconstruct continuous, unconstrained hand movements,” Contreras-Vidal said.
The researchers found that of the 34 sensors used, one sensor in particular provided the most accurate information. The sensor was located over a part of the brain called the primary sensorimotor cortex, a region associated with voluntary movement. Useful signals were also recorded from another region called the inferior parietal lobule, which is known to help guide limb movement. The authors used these findings to confirm the validity of their methods.
This study has implications for future BCI technologies and for those already in existence. “It may eventually be possible for people with severe neuromuscular disorders, such as amyotrophic lateral sclerosis (ALS), stroke, or spinal cord injury, to regain control of complex tasks without needing to have electrodes implanted in their brains,” said Jonathan Wolpaw, MD, of the New York State Department of Health’s Wadsworth Center, Albany, who was unaffiliated with the study. “The paper enhances the potential value of EEG for laboratory studies and clinical monitoring of brain function.”
The findings could also help improve existing EEG-based systems designed to allow movement-impaired people to control a computer cursor with just their thoughts. These systems now require that users undergo extensive training sessions. Contreras-Vidal said the length of this training could be reduced and more effortless control achieved using the methods in this study.