Title of article :
Clinical decision-support for diagnosing stress-related disorders by applying psychophysiological medical knowledge to an instance-based learning system
Author/Authors :
Nilsson، نويسنده , , Markus and Funk، نويسنده , , Peter Q. Olsson، نويسنده , , Erik M.G. and von Schéele، نويسنده , , Bo and Xiong، نويسنده , , Ning، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Pages :
18
From page :
159
To page :
176
Abstract :
SummaryObjective ortant procedure in diagnosing stress-related disorders caused by dysfunction in the interaction of the heart with breathing, i.e., respiratory sinus arrhythmia (RSA), is to analyse the breathing first and then the heart rate. Analysing these measurements is a time-consuming task for the diagnosing clinician. A decision-support system in this area would reduce the analysis task of the clinician and enable him/her to give more attention to the patient. We have created a decision-support system which contains a signal classifier and a pattern identifier. The system performs an analysis of the physiological time series concerned which would otherwise be performed manually by the clinician. s gnal-classifier, HR3Modul, classifies heart-rate patterns by analysing both cardio- and pulmonary signals, i.e., physiological time series. HR3Modul uses case-based reasoning (CBR), using a wavelet-based method for retrieving features from the signals. The system searches for familiar shapes in the signals by comparing them with shapes already stored. We have applied a best fit scheme for handling signals of different lengths, as the length of a breath is highly dynamic. We also apply automatic weighting to the features to obtain a more autonomous system. The classified heart signals indicate if a patient may be suffering from a stress-related disorder and the nature of the disorder. These classified signals are thereafter sent to the second subsystem, the pattern-identifier. The pattern-identifier analyses the classified signals and searches for familiar patterns by identifying sequences in the classified signals. The identified sequences give clinicians a more complete analysis of the measurements, providing them with a better basis for diagnosis. s and conclusion e shown that a case-based classifier with a wavelet feature extractor and automatic weighting is a viable option for building a decision-support system for the psychophysiological domain, as it is at par, or even outperforms other retrieval techniques and is less complex.
Keywords :
Decision support , Case-based classification , Respiratory sinus arrhythmia , Wavelet retrieval , knowledge discovery
Journal title :
Artificial Intelligence In Medicine
Serial Year :
2006
Journal title :
Artificial Intelligence In Medicine
Record number :
1836364
Link To Document :
بازگشت