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首页> 外文期刊>Applied Soft Computing >A framework for application of neuro-case-rule base hybridization in medical diagnosis
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A framework for application of neuro-case-rule base hybridization in medical diagnosis

机译:神经案例规则基础杂交在医学诊断中的应用框架

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摘要

Every approach to handling automation has its unique limitations. In the symbolic (rule base) approach, the brittleness of rules leads to the ineffectiveness of handling noisy data, but it derives its strengths in heuristic search. In the same vein, a case base reasoning paradigm is bedeviled with retrieval and adaptation problems. Neural Networks (NN) methodology suffers from intolerance of incremental insertion of new knowledge and limited explanation capability, but triumphs over other methods when it comes to adaptation using its generalization characteristics. Based on all these, a tight coupling of case base, rule base and neural networks methodologies is proposed for medical diagnosis. The case base provides the 'desired' outputs, which constitute an input to the neural networks. The results obtained from the trained neural networks assisted in formulating diagnostic rules, which form the rule base. Through the rule base, an inference engine that represents the hybrid is built. Data collected from three hospitals in Nigeria on hepatitis patients were used to test the functionality of the proposed system. The results obtained from the hybrid were compared with that obtained from the Multilayer Peceptron Neural Networks (MLPNN) training using NeuroSolutions 5.0 and found to covary strongly. The hybrid exhibits an explanation characteristic, a feature not found in neural networks.
机译:每种处理自动化的方法都有其独特的局限性。在符号(基于规则)方法中,规则的脆弱性导致处理嘈杂数据的效率低下,但它却在启发式搜索中获得了优势。同样,案例检索推理范式具有检索和适应问题。神经网络(NN)方法由于不能容忍新知识的增量插入和有限的解释能力,但是在利用其泛化特性进行自适应方面胜于其他方法。基于所有这些,提出了案例库,规则库和神经网络方法的紧密结合,以进行医学诊断。案例库提供了“所需”输出,这些输出构成了神经网络的输入。从受过训练的神经网络获得的结果有助于制定诊断规则,形成规则库。通过规则库,构建了代表混合动力的推理引擎。从尼日利亚三家医院收集的有关肝炎患者的数据用于测试所提议系统的功能。从混合动力车获得的结果与使用NeuroSolutions 5.0从多层Peceptron神经网络(MLPNN)训练获得的结果进行了比较,发现它们之间存在很大的偏差。混合动力车具有解释性特征,这是神经网络所没有的特征。

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