Decoding the individual finger movements from single‐trial functional magnetic resonance imaging recordings of human brain activity |
| |
Authors: | Guohua Shen Jing Zhang Mengxing Wang Du Lei Guang Yang Shanmin Zhang Xiaoxia Du |
| |
Affiliation: | Shanghai Key Laboratory of Magnetic Resonance, Department of Physics, East China Normal University, , 200062 Shanghai, China |
| |
Abstract: | Multivariate pattern classification analysis (MVPA) has been applied to functional magnetic resonance imaging (fMRI) data to decode brain states from spatially distributed activation patterns. Decoding upper limb movements from non‐invasively recorded human brain activation is crucial for implementing a brain–machine interface that directly harnesses an individual's thoughts to control external devices or computers. The aim of this study was to decode the individual finger movements from fMRI single‐trial data. Thirteen healthy human subjects participated in a visually cued delayed finger movement task, and only one slight button press was performed in each trial. Using MVPA, the decoding accuracy (DA) was computed separately for the different motor‐related regions of interest. For the construction of feature vectors, the feature vectors from two successive volumes in the image series for a trial were concatenated. With these spatial–temporal feature vectors, we obtained a 63.1% average DA (84.7% for the best subject) for the contralateral primary somatosensory cortex and a 46.0% average DA (71.0% for the best subject) for the contralateral primary motor cortex; both of these values were significantly above the chance level (20%). In addition, we implemented searchlight MVPA to search for informative regions in an unbiased manner across the whole brain. Furthermore, by applying searchlight MVPA to each volume of a trial, we visually demonstrated the information for decoding, both spatially and temporally. The results suggest that the non‐invasive fMRI technique may provide informative features for decoding individual finger movements and the potential of developing an fMRI‐based brain–machine interface for finger movement. |
| |
Keywords: | brain– machine interface finger decoding functional magnetic resonance imaging motor cortex multivariate pattern classification analysis |
|
|