Optimizing Cardiovascular Disease Prediction: A Synergistic Approach of Grey Wolf Levenberg Model and Neural Networks

Sheikh Amir Fayaz Fayaz, Majid Zaman, Sameer Kaul, Waseem Jeelani Bakshi
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Abstract

Background: One of the latest issues in predicting cardiovascular disease is the limited performance of current risk prediction models. Although several models have been developed, they often fail to identify a significant proportion of individuals who go on to develop the disease. This highlights the need for more accurate and personalized prediction models. Objective: This study aims to investigate the effectiveness of the Grey Wolf Levenberg Model and Neural Networks in predicting cardiovascular diseases. The objective is to identify a synergistic approach that can improve the accuracy of predictions. Through this research, the authors seek to contribute to the development of better tools for early detection and prevention of cardiovascular diseases. Methods: The study used a quantitative approach to develop and validate the GWLM_NARX model for predicting cardiovascular disease risk. The approach involved collecting and analyzing a large dataset of clinical and demographic variables. The performance of the model was then evaluated using various metrics such as accuracy, sensitivity, and specificity. Results: the study found that the GWLM_NARX model has shown promising results in predicting cardiovascular disease. The model was found to outperform other conventional methods, with an accuracy of over 90%. The synergistic approach of Grey Wolf Levenberg Model and Neural Networks has proved to be effective in predicting cardiovascular disease with high accuracy. Conclusion: The use of the Grey Wolf Levenberg-Marquardt Neural Network Autoregressive model (GWLM-NARX) in conjunction with traditional learning algorithms, as well as advanced machine learning tools, resulted in a more accurate and effective prediction model for cardiovascular disease. The study demonstrates the potential of machine learning techniques to improve diagnosis and treatment of heart disorders. However, further research is needed to improve the scalability and accuracy of these prediction systems, given the complexity of the data associated with cardiac illness. Keywords: Cardiovascular data, Clinical data., Decision tree, GWLM-NARX, Linear model functions
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优化心血管疾病预测:灰狼Levenberg模型和神经网络的协同方法
背景:预测心血管疾病的最新问题之一是当前风险预测模型的有限性能。虽然已经建立了几个模型,但它们往往不能确定很大一部分继续发展为这种疾病的个体。这凸显了对更准确和个性化的预测模型的需求。目的:探讨灰狼Levenberg模型和神经网络在心血管疾病预测中的有效性。目标是确定一种能够提高预测准确性的协同方法。通过这项研究,作者试图为开发更好的工具来早期发现和预防心血管疾病做出贡献。方法:采用定量方法建立并验证GWLM_NARX模型预测心血管疾病风险。该方法包括收集和分析临床和人口变量的大型数据集。然后使用各种指标如准确性、敏感性和特异性来评估模型的性能。结果:研究发现GWLM_NARX模型在预测心血管疾病方面显示出良好的效果。该模型优于其他传统方法,准确率超过90%。灰狼Levenberg模型与神经网络的协同预测方法在心血管疾病预测中具有较高的准确性。结论:将灰狼Levenberg-Marquardt神经网络自回归模型(GWLM-NARX)与传统学习算法以及先进的机器学习工具相结合,可以建立更准确有效的心血管疾病预测模型。这项研究证明了机器学习技术在改善心脏病诊断和治疗方面的潜力。然而,考虑到与心脏病相关的数据的复杂性,需要进一步的研究来提高这些预测系统的可扩展性和准确性。关键词:心血管数据;临床数据;决策树,GWLM-NARX,线性模型函数
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