AI-Based Predictive Tools for Managing and Preventing Cardiovascular Diseases

A large percentage of deaths each year are caused by cardiovascular diseases (CVDs), which are a serious worldwide health concern. Particularly in varied groups with complicated risk profiles, the predictive value of current risk assessment techniques, such the Framingham Risk Score, is limited. In...

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Published inInternational Journal of Innovative Research in Computer Science and Technology Vol. 13; no. 3; pp. 76 - 81
Main Authors Rasool, Saad, Khaja, Abdullah Mazharuddin, Hayat, Yawar, Khan, Arbaz Haider
Format Journal Article
LanguageEnglish
Published 01.05.2025
Online AccessGet full text
ISSN2347-5552
2347-5552
DOI10.55524/ijircst.2025.13.3.13

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Abstract A large percentage of deaths each year are caused by cardiovascular diseases (CVDs), which are a serious worldwide health concern. Particularly in varied groups with complicated risk profiles, the predictive value of current risk assessment techniques, such the Framingham Risk Score, is limited. In this work, we investigate how ML techniques can improve the prediction of cardiovascular risk by examining patterns that conventional models frequently overlook. Using a generated dataset designed to mimic real patient data, we applied and assessed a range of machine learning algorithms, such as logistic regression, support vector machines, random forests, XGBoost, and neural networks on a generated dataset designed to replicate actual patient information. Accuracy, sensitivity, specificity, and AUC metrics were used to evaluate each model. Our results demonstrate that ensemble approaches and neural networks perform better than traditional models, especially when it comes to identifying high-risk instances. The study takes into account how these tools could be ethically incorporated into healthcare settings in addition to their predictive power. We talk about issues with ethical use, data quality, and generalizability. All things considered, this work bolsters the expanding importance of AI in improving the efficiency, preventiveness, and personalization of cardiovascular care.
AbstractList A large percentage of deaths each year are caused by cardiovascular diseases (CVDs), which are a serious worldwide health concern. Particularly in varied groups with complicated risk profiles, the predictive value of current risk assessment techniques, such the Framingham Risk Score, is limited. In this work, we investigate how ML techniques can improve the prediction of cardiovascular risk by examining patterns that conventional models frequently overlook. Using a generated dataset designed to mimic real patient data, we applied and assessed a range of machine learning algorithms, such as logistic regression, support vector machines, random forests, XGBoost, and neural networks on a generated dataset designed to replicate actual patient information. Accuracy, sensitivity, specificity, and AUC metrics were used to evaluate each model. Our results demonstrate that ensemble approaches and neural networks perform better than traditional models, especially when it comes to identifying high-risk instances. The study takes into account how these tools could be ethically incorporated into healthcare settings in addition to their predictive power. We talk about issues with ethical use, data quality, and generalizability. All things considered, this work bolsters the expanding importance of AI in improving the efficiency, preventiveness, and personalization of cardiovascular care.
Author Khan, Arbaz Haider
Khaja, Abdullah Mazharuddin
Hayat, Yawar
Rasool, Saad
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