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Application of local linear neuro-fuzzy model in prediction of mean arterial blood pressure time series

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3 Author(s)
Janghorbani, A. ; Amirkabir Univ. of Technol. Tehran, Tehran, Iran ; Arasteh, Abdollah ; Moradi, M.H.

Predicting the future behavior of human's biosignals can help clinicians to prevent occurrence of physiological disorders such as hypotension, hypertension, epilepsy, etc. In addition this prediction helps clinicians to buy some time in order to select a more effective treatment for physiological disorders without exposing the patient to additional risks of delay in receiving treatment. In this paper a local linear neuro-fuzzy model was applied to predict mean arterial pressure time series. In order to evaluate the accuracy of prediction, Normalized Mean Square Error (NMSE) was chosen as an error index. 10 mean arterial pressure signals (2.5 hours each) from 10 patients were selected for training and prediction. Mean of NMSE for these signals was 0.023 in train and 0.0514 in test.

Published in:

Biomedical Engineering (ICBME), 2010 17th Iranian Conference of

Date of Conference:

3-4 Nov. 2010