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An efficient Bayesian network for differential diagnosis using Experts' knowledge

机译:高效的贝叶斯网络,用于使用专家的知识进行鉴别诊断

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摘要

Purpose - This study aims to differential diagnosis of some diseases using classification methods to support effective medical treatment. For this purpose, different classification methods based on data, experts' knowledge and both are considered in some cases. Besides, feature reduction and some clustering methods are used to improve their performance. Design/methodology/approach - First, the performances of classification methods are evaluated for differential diagnosis of different diseases. Then, experts' knowledge is utilized to modify the Bayesian networks' structures. Analyses of the results show that using experts’ knowledge is more effective than other algorithms for increasing the accuracy of Bayesian network classification. A total of ten different diseases are used for testing, taken from the Machine Learning Repository datasets of the University of California at Irvine (UCI). Findings - The proposed method improves both the computation time and accuracy of the classification methods used in this paper. Bayesian networks based on experts' knowledge achieve a maximum average accuracy of 87 percent, with a minimum standard deviation average of 0.04 over the sample datasets among all classification methods. Practical implications - The proposed methodology can be applied to perform disease differential diagnosis analysis. Originality/value - This study presents the usefulness of experts' knowledge in the diagnosis while proposing an adopted improvement method for classifications. Besides, the Bayesian network based on experts' knowledge is useful for different diseases neglected by previous papers.
机译:目的 - 本研究旨在利用分类方法对某些疾病进行鉴别诊断以支持有效的医疗。为此目的,在某些情况下,基于数据,专家知识和两者的不同分类方法都被考虑在某些情况下。此外,特征减少和一些聚类方法用于提高其性能。设计/方法/方法 - 首先,评估分类方法的性能以进行不同疾病的鉴别诊断。然后,专家的知识用于修改贝叶斯网络的结构。结果表明,使用专家的知识比其他算法更有效,以增加贝叶斯网络分类的准确性。总共有十种不同的疾病用于测试,从加利福尼亚大学(UCI)的加利福尼亚大学的机器学习储存库数据集进行了测试。结果 - 所提出的方法可以提高本文中使用的分类方法的计算时间和准确性。基于专家知识的贝叶斯网络达到最高的平均精度为87%,在所有分类方法中的样本数据集中最小标准偏差平均值为0.04。实际意义 - 所提出的方法可以应用疾病鉴别诊断分析。原创性/价值 - 本研究提出了专家知识在诊断中的有用性,同时提出了采用的分类方法。此外,基于专家知识的贝叶斯网络对于之前论文忽视的不同疾病是有用的。

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