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首页> 外文期刊>International journal of computer science and network security >Extraction of Significant Patterns from Heart Disease Warehouses for Heart Attack Prediction
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Extraction of Significant Patterns from Heart Disease Warehouses for Heart Attack Prediction

机译:从心脏病仓库中提取重要模式以进行心脏病发作预测

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摘要

The diagnosis of diseases is a significant and tedious task in medicine. The detection of heart disease from various factors or symptoms is a multi-layered issue which is not free from false presumptions often accompanied by unpredictable effects. Thus the effort to utilize knowledge and experience of numerous specialists and clinical screening data of patients collected in databases to facilitate the diagnosis process is considered a valuable option. The healthcare industry gathers enormous amounts of heart disease data that regrettably, are not "mined" to determine concealed information for effective decision making by healthcare practitioners. In this paper, we have proposed an efficient approach for the extraction of significant patterns from the heart disease warehouses for heart attack prediction. Initially, the data warehouse is preprocessed to make it appropriate for the mining process. After preprocessing, the heart disease warehouse is clustered using the K-means clustering algorithm, which will extract the data relevant to heart attack from the warehouse. Subsequently the frequent patterns are mined from the extracted data, relevant to heart disease, using the MAFIA algorithm. Then the significant weightage of the frequent patterns are calculated. Further, the patterns significant to heart attack prediction are chosen based on the calculated significant weightage. These significant patterns can be used in the development of heart attack prediction system.
机译:疾病的诊断是医学上的重要且繁琐的任务。从各种因素或症状中检测出心脏病是一个多层次的问题,它不能避免错误的推定,而错误的推定通常会带来不可预测的后果。因此,努力利用众多专家的知识和经验以及数据库中收集的患者的临床筛查数据来促进诊断过程是一种有价值的选择。医疗保健行业收集了大量的心脏病数据,遗憾的是,这些数据没有被“挖掘”出来以确定隐藏的信息,以便医疗保健从业者做出有效的决策。在本文中,我们提出了一种从心脏病仓库中提取重要模式用于心脏病发作预测的有效方法。最初,对数据仓库进行预处理以使其适合于挖掘过程。预处理之后,使用K-means聚类算法对心脏病仓库进行聚类,该算法将从仓库中提取与心脏病发作有关的数据。随后,使用MAFIA算法从提取的与心脏病有关的数据中提取频繁模式。然后计算频繁模式的显着权重。此外,基于计算出的重要权重来选择对心脏病发作预测重要的模式。这些重要的模式可以用于心脏病发作预测系统的开发中。

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