Research on Predictive Algorithms for Cardiovascular Disease
Pages 304 - 314
Abstract
Cardiovascular disease (CVD) is a global disease with acute and chronic complications. It is primarily responsible for the vast majority of deaths worldwide, which account for 17.9 million deaths annually. In terms of CVDs, illnesses like rheumatic heart disease and coronary heart disease are included, of which coronary heart disease (CHD) accounts for more than 50% of all these cases. In this research, principal component analysis (PCA) and backward stepwise elimination are used to identify the relevant predictors and avoid overfitting models for random forest analysis and logistic regression analysis. Moreover, for assessing the effectiveness of the models, the confusion matrix and the receiver operating characteristics (ROC) curve with AUC (area under the ROC curve) value are produced for model comparison. The outcomes demonstrate that the random forest model performs better at categorizing high-dimensional data. Thus, the techniques discussed in this paper give medical researchers better ways to handle coronary heart disease data statistically and provide a new statistical procedure for coronary heart disease prediction and prevention.
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Index Terms
- Research on Predictive Algorithms for Cardiovascular Disease
Recommendations
Human Cardiovascular Model and Applications
Cardiovascular diseases (CVDs) can be known as a class of diseases which affect different parts of the cardiovascular system such as the heart or blood vessels. Hemodynamic signals are an important tool used by doctors to diagnose the type of CVD ...
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Published In
October 2023
1394 pages
ISBN:9798400708138
DOI:10.1145/3644116
Copyright © 2023 ACM.
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Association for Computing Machinery
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Published: 05 April 2024
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ISAIMS 2023
ISAIMS 2023: 2023 4th International Symposium on Artificial Intelligence for Medicine Science
October 20 - 22, 2023
Chengdu, China
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Overall Acceptance Rate 53 of 112 submissions, 47%
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