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Neuro-Fuzzy Nets in Medical Diagnosis: The DIAGEN Case Study of Glaucoma

机译:医学诊断的神经模糊网:青光眼的岩状病例研究

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This work presents an approach to the automatic interpretation of the visual field to enable ophthalmology patients to be classified as glaucomatous and normal. The approach is based on a neuro-fuzzy system (NEFCLASS) that enables a set of rules to be learnt, with no a priori knowledge, and the fuzzy sets that form the rule antecedents to be tuned, on the basis of a set of training data. Another alternative is to insert knowledge (fuzzy rules) and let the system tune its antecedents, as in the previous case. Three trials are shown which demonstrate the useful application of this approach in this medical discipline, enabling a set of rule bases to be obtained which produce high sensitivity and specificity values in the classification process.
机译:这项工作提出了一种方法来实现视野的自动解释,使眼科患者能够被归类为青光瘤和正常。该方法基于神经模糊系统(Nefclass),该系统能够学习一组规则,没有先验的知识,并且在一组培训的基础上形成要调整的规则前书的模糊集数据。另一种替代方案是插入知识(模糊规则),并让系统调整其前一种的前提,如上一例。显示了三次试验,其证明了这种方法在本医学中的有用应用,从而获得了一组规则基础,在分类过程中产生高灵敏度和特异性值。

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