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Research Article

Towards a physiological signal-based access solution for a non-verbal adolescent with severe and multiple disabilities

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Pages 270-277 | Received 09 Aug 2013, Accepted 12 Aug 2013, Published online: 02 Oct 2013
 

Abstract

Objective: To find physiologically arousing stimuli and labile physiological channels in a non-verbal adolescent with severe and multiple congenital disabilities, who did not have a reliable means of communication.

Methods: The client was repeatedly presented with visual and audiovisual stimuli, representing variations of six contextual factors over three sessions in a one month period. For each stimulus, reactions were detected in the client’s four peripheral autonomic nervous system signals using a rule-based classification algorithm.

Results: During the presentation of audiovisual stimuli, the number of physiological reactions significantly differed from that observed in baseline (χ2 = 3.93, p = 0.0476). Aural stimuli articulated in an unfamiliar voice, and aural stimuli containing anticipatory patterns were also physiologically arousing. Fingertip temperature was the client’s most labile physiological signal.

Conclusions: The results of this case study suggest that physiological data may complement caregiver acumen in deciphering the reactions of non-verbal clients with severe and multiple disabilities.

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