P300-Based Brain–Computer Interface Communication: Evaluation and Follow-up in Amyotrophic Lateral Sclerosis

نویسندگان

  • Stefano Silvoni
  • Chiara Volpato
  • Marianna Cavinato
  • Mauro Marchetti
  • Konstantinos Priftis
  • Antonio Merico
  • Paolo Tonin
  • Konstantinos Koutsikos
  • Fabrizio Beverina
  • Francesco Piccione
چکیده

To describe results of training and 1-year follow-up of brain-communication in a larger group of early and middle stage amyotrophic lateral sclerosis (ALS) patients using a P300-based brain-computer interface (BCI), and to investigate the relationship between clinical status, age and BCI performance. A group of 21 ALS patients were tested with a BCI-system using two-dimensional cursor movements. A four choice visual paradigm was employed to training and test the brain-communication abilities. The task consisted of reaching with the cursor one out of four icons representing four basic needs. Five patients performed a follow-up test 1 year later. The clinical severity in all patients were assessed with a battery of clinical tests. A comparable control group of nine healthy subjects was employed to investigate performance differences. Nineteen patients and nine healthy subjects were able to achieve good and excellent cursor movements' control, acquiring at least communication abilities above chance level; during follow-up the patients maintained their BCI-skill. We found mild cognitive impairments in the ALS group which may be attributed to motor deficiencies, while no relevant correlation has been found between clinical data and BCI performance. A positive correlation between age and the BCI-skill in patients was found. Time since training acquisition and clinical status did not affect the patients brain-communication skill at early and middle stage of the disease. A brain-communication tool can be used in most ALS patients at early and middle stage of the disease before entering the locked-in stage.

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عنوان ژورنال:

دوره 3  شماره 

صفحات  -

تاریخ انتشار 2009