Comparison of different neural network algorithms in the diagnosis of acute appendicitis
- PMID: 8666475
- DOI: 10.1016/0020-7101(95)01147-1
Comparison of different neural network algorithms in the diagnosis of acute appendicitis
Abstract
Four different neural network algorithms, binary adaptive resonance theory (ART1), self-organizing map, learning vector quantization and back-propagation, were compared in the diagnosis of acute appendicitis with different parameter groups. The results show that supervised learning algorithms learning vector quantization and back-propagation were better than unsupervised algorithms in this medical decision making problem. The best results were obtained with the learning vector quantization. The self-organizing map algorithm showed good specificity, but this was in conjunction with lower sensitivity. The best parameter group was found to be the clinical signs. It seems beneficial to design a decision support system which uses these methods in the decision making process.
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