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Review on fuzzy expert system and data mining techniques for the diagnosis of coronary artery disease

机译:模糊专家系统和数据挖掘技术在冠心病诊断中的研究进展

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According to World Health Organization (WHO), Coronary Artery Disease (CAD) has become the leading cause of death in many countries, especially in Asia. In Indonesia itself, CAD becomes the second rank for the cause of death because 9.89% of the total number of deaths is caused by CAD. This paper focused on reviewing possible algorithm types of data mining, fuzzy, and combination between data mining and fuzzy applied for dataset processing and classification to identify patients suspected of having CAD and optimized in minimal time with high accuracy. The choice of data to design a detection system also varied. Standart datasets with relevant features are used to facilitate detection of abnormalities with the maximum detection rate. The use of data mining techniques produced the highest accuracy of 99%, they were with J48 algorithm, Naive Bayes, REPTREE, CART, and Bayes Net. The use of fuzzy produced accuracy of 94% that was by methods of mamdani inference system and fuzzy membership function of triangle and trapezoid. The use of data mining and fuzzy produced 94.92% with decision tree algorithms, fuzzy, and ICA.
机译:根据世界卫生组织(WHO)的研究,冠状动脉疾病(CAD)已成为许多国家(尤其是亚洲)的主要死亡原因。在印度尼西亚本身,CAD成为第二大死因,因为占死亡总数的9.89%是CAD。本文着重研究可能的数据挖掘算法类型,模糊算法,以及数据挖掘和模糊算法在数据集处理和分类中的组合,以识别怀疑患有CAD并在最短时间内以高精度进行优化的患者。设计检测系统的数据选择也多种多样。具有相关特征的Standart数据集用于以最大检测率促进异常检测。使用J48算法,朴素贝叶斯(Naive Bayes),REPTREE,CART和贝叶斯网络(Bayes Net)时,使用数据挖掘技术可产生最高99%的准确性。使用mamdani推理系统的方法以及三角形和梯形的模糊隶属度函数产生的模糊精度为94%。通过决策树算法,模糊和ICA,数据挖掘和模糊的使用产生了94.92%的收益。

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