Using Connectionist Modules for Decision Support
- 1 January 1990
- journal article
- knowledge based-systems
- Published by Georg Thieme Verlag KG in Methods of Information in Medicine
- Vol. 29 (03) , 167-181
- https://doi.org/10.1055/s-0038-1634790
Abstract
A connectionist model for decision support was constructed out of several back-propagation modules. Manifestations serve as input to the model; they may be real-valued, and the confidence in their measurement may be specified. The model produces as its output the posterior probability of disease. The model was trained on 1,000 cases taken from a simulated underlying population with three conditionally independent manifestations. The first manifestation had a linear relationship between value and posterior probability of disease, the second had a stepped relationship, and the third was normally distributed. An independent test set of 30,000 cases showed that the model was better able to estimate the posterior probability of disease (the standard deviation of residuals was 0.046, with a 95% confidence interval of 0.046-0.047) than a model constructed using logistic regression (with a standard deviation of residuals of 0.062, with a 95% confidence interval of 0.062-0.063). The model fitted the normal and stepped manifestations better than the linear one. It accommodated intermediate levels of confidence well.Keywords
Funding Information
- National Library of Medicine (LM04419)
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