JOURNAL ARTICLE

Optimizing Fuzzy Clinical Decision Support Rules Using Genetic Algorithms

Michael KrajnakJoel Xue

Year: 2006 Journal:   Conference proceedings   Publisher: Institute of Electrical and Electronics Engineers

Abstract

In this paper, we present a technique for optimizing a fuzzy system using a genetic algorithm that works for patient status monitoring in the operating room. The genetic algorithm adjusts rule weights, outputs, and input membership functions to maximize the area under a receiver operator curve (ROC) for final classification. Compared to pre-optimization, the optimized fuzzy inference system increased ROC area from 0.68 to 0.77, which can be translated to an increase in specificity from 74% to 82%, at a fixed sensitivity of 58%

Keywords:
Receiver operating characteristic Sensitivity (control systems) Genetic algorithm Fuzzy logic Computer science Fuzzy rule Algorithm Operator (biology) Fuzzy inference Fuzzy control system Fuzzy inference system Data mining Artificial intelligence Machine learning Adaptive neuro fuzzy inference system Engineering

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Topics

Healthcare Technology and Patient Monitoring
Health Sciences →  Medicine →  Surgery
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