A team of researchers led by Angelika Lingnau, from the Royal Holloway, University of London predicted participants' movements by analysing their brain activity.
The research is the first human study to look at the neural signals of planned actions that are freely chosen by the participant and could be the first step in the development of brain-computer interfaces.
Lingnau and her team used functional magnetic resonance imaging (fMRI) while participants planned and performed simple hand movements inside the scanner.
Using machine learning algorithms, the researchers then determined whether they were able to predict which movement the participant was going to perform on the basis of the brain activity measured during the planning phase.
"We are very excited by our findings because it is the first time a human study of this kind has been carried out where the participants were able to choose a movement by themselves and were the only ones who knew what they had planned to do," said Lingnau.
"We were successfully able to predict what action they were going to carry out just from analysing their brain signals," she said.
The study was published in the Journal of Neuroscience.
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