Evaluation of Classification Algorithms vs Knowledge-Based Methods for Differential Diagnosis of Asthma in Iranian Patients

R. Safdari, Peyman Rezaei-Hachesu, M. Saeedi, Taha Samad-Soltani, M. Zolnoori
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引用次数: 10

Abstract

Medical data mining intends to solve real-world problems in the diagnosis and treatment of diseases. This process applies various techniques and algorithms which have different levels of accuracy and precision. The purpose of this article is to apply data mining techniques to the diagnosis of asthma. Sensitivity, specificity and accuracy of K-nearest neighbor, Support Vector Machine, naive Bayes, Artificial Neural Network, classification tree, CN2 algorithms, and related similar studies were evaluated. ROC curves were plotted to show the performance of the authors' approach. Support vector machine SVM algorithms achieved the highest accuracy at 98.59% with a sensitivity of 98.59% and a specificity of 98.61% for class 1. Other algorithms had a range of accuracy greater than 87%. The results show that the authors can accurately diagnose asthma approximately 98% of the time based on demographics and clinical data. The study also has a higher sensitivity when compared to expert and knowledge-based systems.
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分类算法与基于知识的方法对伊朗哮喘患者鉴别诊断的评价
医学数据挖掘旨在解决疾病诊断和治疗中的现实问题。这个过程应用了各种技术和算法,这些技术和算法具有不同程度的准确性和精密度。本文的目的是将数据挖掘技术应用于哮喘的诊断。评估了k近邻、支持向量机、朴素贝叶斯、人工神经网络、分类树、CN2算法及相关类似研究的灵敏度、特异性和准确性。绘制ROC曲线以显示作者方法的性能。支持向量机SVM算法在分类1中准确率最高,为98.59%,灵敏度为98.59%,特异性为98.61%。其他算法的准确率范围大于87%。结果表明,基于人口统计学和临床数据,作者可以在大约98%的时间内准确诊断哮喘。与专家和基于知识的系统相比,该研究也具有更高的灵敏度。
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