Optimization heart disease prediction using independent component analysis and support vector machine

Abbas Nawar Khalifa
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Abstract

Prediction models play a crucial role in early detection and intervention for cardiac diseases. However, their effectiveness is often hindered by limitations inherent in current methodologies. This paper proposes a novel approach to address these challenges by integrating Independent Component Analysis (ICA) with the Support Vector Machine (SVM) technique. Utilizing a comprehensive Cleveland dataset, our model achieves notable performance metrics, including an accuracy of 90.16%, an Area Under the Curve (AUC) of 96.66%, precision of 90.02%, recall of 90.00%, F1-score of 90.00%, and a minimal log loss of 3.54. Our methodology not only surpasses previous methodologies through extensive comparative analysis but also addresses common constraints identified in existing literature. These limitations encompass insufficient feature representation, overfitting, and a lack of proactive intervention strategies. By amalgamating ICA with SVM, our model enhances feature extraction, mitigates overfitting, and facilitates proactive diagnosis and intervention in individuals suspected of having heart disease. This study underscores the importance of mitigating current literature limitations and underscores the potential of integrating contemporary machine-learning techniques to advance prediction models for heart disease.
利用独立成分分析和支持向量机优化心脏病预测
预测模型在心脏疾病的早期检测和干预中发挥着至关重要的作用。然而,由于当前方法的固有局限性,其有效性往往受到阻碍。本文提出了一种新方法,通过将独立分量分析(ICA)与支持向量机(SVM)技术相结合来应对这些挑战。利用克利夫兰综合数据集,我们的模型实现了显著的性能指标,包括 90.16% 的准确率、96.66% 的曲线下面积(AUC)、90.02% 的精确率、90.00% 的召回率、90.00% 的 F1 分数以及 3.54 的最小对数损失。通过广泛的比较分析,我们的方法不仅超越了以前的方法,而且还解决了现有文献中发现的常见限制。这些限制包括特征表示不足、过度拟合以及缺乏主动干预策略。通过将 ICA 与 SVM 相结合,我们的模型加强了特征提取,减轻了过度拟合,有助于对疑似心脏病患者进行主动诊断和干预。这项研究强调了缓解当前文献局限性的重要性,并突出了整合当代机器学习技术以推进心脏病预测模型的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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