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IDMS: An Integrated Decision Making System for Heart Disease Prediction

机译:IDMS:心脏病预测的综合决策系统

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摘要

Heart Disease, one of the deadliest human diseases worldwide, should be properly diagnosed in time and treatments should be carried out accordingly. To predict Heart Diseases, decision making systems based on classification techniques have been widely proposed in various studies. In this paper, an Integrated Decision Making System (IDMS) has been introduced for prediction of heart disease. In addition, it uses Principal Component Analysis (PCA) for dimensionality reduction, Agglomerative hierarchical clustering technique for clustering and Random Forest (RF) for classification purpose. Then, the results are compared with other six conventional classification techniques. Some experiments are performed using Cleveland Heart Disease Dataset (CHDD) sourced from UCI-ML repository and Python language concluding that the proposed system provides better results comparing with other conventional methods. The proposed integrated decision making system will help out the doctors to diagnose the heart patients professionally and it may be useful for further investigation and predictions using different datasets and resulting valuable knowledge on Heart Disease.
机译:心脏病,全球最致命的人类疾病之一,应当适当地及时诊断,并应相应地进行治疗。为了预测心脏病,在各种研究中已经广泛提出了基于分类技术的决策系统。本文介绍了综合决策系统(IDMS)以预测心脏病。此外,它使用主成分分析(PCA)来减少分类和随机森林(RF)的群集和随机森林(RF)。然后,将结果与其他六种常规分类技术进行比较。一些实验是使用来自UCI-ML存储库的克利夫兰心脏病数据集(CHDD)进行,并且Python语言得出结论,所提出的系统提供与其他传统方法相比的更好结果。拟议的综合决策制度将有助于医生专业诊断心脏患者,并且可以使用不同数据集进一步调查和预测,并导致心脏病有价值的知识。

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