Methods Inf Med 2004; 43(01): 79-82
DOI: 10.1055/s-0038-1633840
Original Article
Schattauer GmbH

Inclusion of Signal Analysis in a Hybrid Medical Decision Support System

D. L. Hudson
1   University of California, San Francisco, Fresno, CA, USA
,
M. E. Cohen
1   University of California, San Francisco, Fresno, CA, USA
2   California State University, Fresno, CA, USA
,
W. Meecham
1   University of California, San Francisco, Fresno, CA, USA
,
M. Kramer
3   University of California, Berkeley, CA, USA
› Author Affiliations
Further Information

Publication History

Publication Date:
07 February 2018 (online)

Summary

Objectives: Signal analysis has played an important role in cardiac diagnosis, both as a separate entity and in conjunction with clinical parameters. Hybrid systems are an effective method for developing higher-order decision models in which biomedical signal data can be incorporated.

Methods: The hybrid system components include a knowledge-based system that utilizes approximate reasoning techniques, a neural network model based on a potential function approach to supervised learning that uses the general class of Cohen orthogonal functions as potential functions, and a signal analysis component that relies on continuous chaotic modeling to produce a degree of variability in the time series. The hybrid system is illustrated in an application for differentiation among different types of dementia.

Results: Application of this method to cardiac diagnosis shows that chaotic parameters alone contribute significantly to correct classification while the addition of clinical parameters increases the sensitivity, specificity, and accuracy. Applications to electroencephalogram analysis indicate that the second-order difference plots display significant differences for the different types of EEG waves identifiable by frequency, both in shape and degree of dispersion. Hence the identification of these waves, and the duration of their occurrence, may provide suitable variables for chaotic analysis.

Conclusions: Results from studies in cardiology demonstrate that using chaotic measures for ECG analysis provide useful information for classification. Sensitivity, specificity, and accuracy are increased if these methods are combined with other clinical parameters in a hybrid system. This approach has been extended to new applications based on EEG analysis combined with other relevant information.

 
  • References

  • 1 Goldberger AL. Cardiac chaos. Science 1989; 243 2987 1419
  • 2 Hudson DL, Cohen ME, Deedwania PC. A hybrid system approach to differential diagnosis of cardiac disorders. ISCA Intelligent Systems. 1998: 24-27.
  • 3 Signorini MG, Cerutti S. The role of self-similar and fractal heart rate variability properties in the early diagnosis of cardiovascular disease. IEEE Engineering in Medicine and Biology. 1999: 906
  • 4 Binnie CD, Prior PF. Electroencephalography. Journal of Neurology, Neurosurgery and Psychiatry, 1994; 57 (11) 1308-19.
  • 5 Watt RC, Hameroff SR. Phase space electroencephalography (EEG): A new mode of intraoperative EEG analysis, International. J Clinical Monitoring and Computing 1988; 5 (01) 3-13.
  • 6 Cohen ME, Hudson DL. A hybrid system for diagnosis of dementia. ISCA Computers and Their Applications. 2001: 350-3.
  • 7 Hudson DL, Cohen ME. An approach to management of uncertainty in an expert system. International Journal of Intelligent Systems 1988; 3 (01) 45-58.
  • 8 Cohen ME, Hudson DL. Comparative Approaches to Medical Reasoning. World Scientific. 1995
  • 9 Hudson DL, Cohen ME. Neural Networks and Artificial Intelligence in Biomedical Engineering. IEEE Press; 1999
  • 10 Hudson DL, Cohen ME. Use of Intelligent Agents to Include Signal Analysis Data. IEEE Engineering in Medicine and Biology. 2001
  • 11 Cohen ME, Hudson DL. New chaotic methods for biomedical signal analysis. IEEE EMBS Information Technology Applications in Biomedicine 2000; 117-22.