A rough neural expert system for medical diagnosis

Li-ping An, Ling-yun Tong
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引用次数: 11

Abstract

Expert systems are the major practical application of artificial intelligence. In spite of the progress in expert system technology, the technology has some limitations in knowledge acquisition, inference, and level of intelligence, et al. In this paper, a rough neural expert system is constructed using rough set theory and neural networks. The methodology of rough set theory serves as a pre-processor for neural networks, including provision default values for missing data, discretization, binerization, attribute reduction and data transformation for network input. Knowledge acquisition is accomplished with the learning program of neural network. Then, the trained network serves as a knowledge base of the system. In the end, using a real example of diagnosis of coronary artery disease, a rough neural expert system is designed. The construction process of the system is illustrated in detail. The system correctly classified 83.75% of the testing set at a tolerance level of 0.25, and 85% at a tolerance level of 0.30.
用于医学诊断的粗糙神经专家系统
专家系统是人工智能的主要实际应用。尽管专家系统技术取得了长足的进步,但在知识获取、推理、智能水平等方面仍存在一定的局限性。本文利用粗糙集理论和神经网络构造了一个粗糙神经专家系统。粗糙集理论的方法作为神经网络的预处理程序,包括为缺失数据提供默认值、离散化、二值化、属性约简和网络输入的数据转换。知识获取是通过神经网络的学习程序来完成的。然后,训练后的网络作为系统的知识库。最后,结合冠状动脉疾病的诊断实例,设计了一个粗糙神经专家系统。详细说明了系统的构建过程。在容差水平为0.25时,系统对测试集的正确率为83.75%,在容差水平为0.30时,系统对测试集的正确率为85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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