Optimized Cardiovascular Disease Prediction Using Clustered Butterfly Algorithm

Document Type

Article

Source of Publication

Computers Materials and Continua

Publication Date

1-1-2025

Abstract

Cardiovascular disease prediction is a significant area of research in healthcare management systems (HMS). We will only be able to reduce the number of deaths if we anticipate cardiac problems in advance. The existing heart disease detection systems using machine learning have not yet produced sufficient results due to the reliance on available data. We present Clustered Butterfly Optimization Techniques (RoughK-means+BOA) as a new hybrid method for predicting heart disease. This method comprises two phases: clustering data using Roughk-means (RKM) and data analysis using the butterfly optimization algorithm (BOA). The benchmark dataset from the UCI repository is used for our experiments. The experiments are divided into three sets: the first set involves the RKM clustering technique, the next set evaluates the classification outcomes, and the last set validates the performance of the proposed hybrid model. The proposed RoughK-means+BOA has achieved a reasonable accuracy of 97.03 and a minimal error rate of 2.97. This result is comparatively better than other combinations of optimization techniques. In addition, this approach effectively enhances data segmentation, optimization, and classification performance.

ISSN

1546-2218

Publisher

Tech Science Press

Volume

85

Issue

1

First Page

1603

Last Page

1630

Disciplines

Computer Sciences | Medicine and Health Sciences

Keywords

butterfly optimization algorithm, Cardiovascular disease prediction, classification, clustering, healthcare management system, RoughK-means

Scopus ID

105015042050

Indexed in Scopus

yes

Open Access

yes

Open Access Type

Gold: This publication is openly available in an open access journal/series

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