2020
DOI: 10.20944/preprints202008.0074.v1
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Clustering of Cardiovascular Disease Patients Using Data Mining Techniques with Principal Component Analysis and K-Medoids Clustering of Cardiovascular Disease Patients Using Data Mining Techniques with Principal Component Analysis and K-Medoids

Abstract: Cardiovascular disease is the number one cause of death in the world and Quoting from WHO, around 31% of deaths in the world are caused by cardiovascular diseases and more than 75% of deaths occur in developing countries. The results of patients with cardiovascular disease produce many medical records that can be used for further patient management. This study aims to develop a method of data mining by grouping patients with cardiovascular disease to determine the level of patient complications in the two clus… Show more

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Cited by 3 publications
(2 citation statements)
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“…Irwansyah et al research raised the topic of grouping cardiovascular disease patients. This research was conducted using the K-Medoids method to produce two clusters with a silhouette coefficient of 0,35 (Irwansyah et al, 2020). In the research conducted by Bu'ulolo and Purba, the K-Medoids clustering algorithm can be applied in the formation of clusters of Covid-19 distribution zones, especially in North Sumatra.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Irwansyah et al research raised the topic of grouping cardiovascular disease patients. This research was conducted using the K-Medoids method to produce two clusters with a silhouette coefficient of 0,35 (Irwansyah et al, 2020). In the research conducted by Bu'ulolo and Purba, the K-Medoids clustering algorithm can be applied in the formation of clusters of Covid-19 distribution zones, especially in North Sumatra.…”
Section: Literature Reviewmentioning
confidence: 99%
“…That is to derive a few principal components from the original variables, so that they retain as much information about the original variables as possible, and are independent of each other. The principal component analysis is often used to find comprehensive indicators to judge things or phenomena and to interpret the information contained in the comprehensive indicators appropriately [46]. The weight of each principal component is its contribution rate, and the weight is the ratio of the variance contribution rate of the principal component to the cumulative variance contribution rate, which reflects the proportion of the information contained in the principal component to the total information, and overcomes the defect of determining the weight in other methods.…”
Section: Principal Component Analysismentioning
confidence: 99%