ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

10
ROBERTS MENCIS flexion from electrocorticography (ECoG) data

Transcript of ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Page 1: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

ROBERTS MENCIS

Predicting finger flexion from electrocorticography

(ECoG) data

Page 2: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

BCI competition

BCI competition IV, Berlin 2008Subjects – epilepsy patientsECoG electrode grid implantedDataglove from 5DT

Page 3: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Goals of project

Understanding neural basis of finger movement

In-depth analysis of dataPrediction model based on data analysis

Better or comparable result with current winners I place - 0.46 II place – 0.42 III place – 0.27

Page 4: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Experimental setup

3 subjects Each experiment – 10 minutes 2 seconds cue, 2 seconds rest ECoG data from 48-62 channels Finger flexion data, 5 channels Sampling rate 1000 Hz

Page 5: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Neuroscience of finger movement

Brodmann area 4 (primary motor cortex)

Fingers – overlapping areas with hotspot for each finger, somatotopic arrangement

Cora-and-surround organisation, typical movements together

Small distance between neural hotspots (few mm)

Page 6: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Data analysis

For most subjects&fingers at least on channel with 0.3-0.4 correlation between ECoG and finger flexion data

Page 7: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Data analysis

Activity in frequency range 60-200 Hz corresponds to finger flexion (for some subjects&fingers)

Subject #2, finger #1, channel #24, window size 1000 ms

Page 8: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Data analysis

Subject #2, finger #1, channel #24, frequency 110 Hz, correlation 0.4058

Subject #2, finger #1, channel #24, best 20 frequencies, correlation 0.6869

Page 9: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Prediction model

For each subject and finger – find best channel-frequency pairs with highest correlation between ECoG and finger flexion training data

Determine top N channel-frequency pairs with highest scores whose combination gives best correlation on training data

Use those channel-frequency pairs to predict finger flexion from test ECoG data

Smooth predicted finger flexion data (moving average)

Top channel-frequency pairs:

Page 10: ROBERTS MENCIS Predicting finger flexion from electrocorticography (ECoG) data.

Way forward…

That could be done to improve results? More advanced techniques for feature selection Different machine learning algorithms Making use of finger flexion data structure (differences

between cue-rest phase; fact that generally only one finger is flexed simultaneously etc.)

More time and effort…THANK YOU FOR ATTENTION!