An Approach for Early Heart Attack Prediction Systems Using K-Means Clustering and Cosine Similarity
DOI:
https://doi.org/10.33022/ijcs.v12i4.3324Keywords:
K-Means Clustering, Cosine similarity, Heart attacks, Prediction system, Clinical characteristicsAbstract
In this study, we used cosine similarity and k-means clustering to construct a system to predict heart attacks. In order to divide patient data into groups with distinct clinical profiles based on their clinical characteristics, the k-means clustering approach is used. The new patient profiles were also contrasted with predetermined risk group profiles using the cosine similarity method. Heart attack high-risk patients are those with a profile that resembles that of the high-risk category. This suggested prediction system offers numerous benefits and contributions. First, the technique helps identify individuals who are at high risk of having a heart attack, allowing for prompt intervention and treatment. Second, the technology aids in lowering the mortality and effects of a heart attack by foreseeing the possibility of one in high-risk patients. Combining the k-means clustering method and cosine similarity, this system can predict heart attacks with an accuracy and dependability of 93.71%. In order to aid medical practitioners in making wise decisions and enhancing patient care, this research offers fresh perspectives on how to understand and manage heart attacks.
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Copyright (c) 2023 Fadhillah Azmi, Nanda Novita, Amir Saleh

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