心脏病预测的集成模型

Ahmad Bamanga Mahmud, Ahmadu Asabe Sandra, Musa Yusuf Malgwi, D. I. Sajoh
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引用次数: 3

摘要

为了识别和预测不同的疾病,机器学习技术通常用于临床决策支持系统。因为心脏病是全世界男性和女性死亡的主要原因。心脏是人体的重要组成部分之一,一直是医学领域关注的焦点之一,一些研究人员开发了智能医疗设备来支持心脏系统,进一步提高心脏疾病的诊断和预测能力。然而,很少有研究着眼于集成方法在开发心脏病检测和预测模型中的能力。在本研究中,研究人员评估了如何使用集成模型,它比使用基础学习算法提供了更稳定的性能,并且这些导致比其他心脏病预测模型更好的结果。加州大学欧文分校(UCI)机器学习存储库档案用于提取患者心脏病数据记录。为了达到本研究的目的,研究者开发了元算法。实验结果表明,集成模型具有较高的预测精度和诊断输出可靠性。在这项工作中,还提出了一个集成心脏病预测模型,作为一个有价值的,具有成本效益的,及时的预测选项,具有用户友好的图形用户界面,可扩展和扩展。从这一发现,研究者认为Bagging是最好的集成分类器,作为心脏病预测实现中预测概率得分高的扩展算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble model for Heart Disease Prediction
For the identification and prediction of different diseases, machine learning techniques are commonly used in clinical decision support systems. Since heart disease is the leading cause of death for both men and women around the world. Heart is one of the essential parts of human body, therefore, it is one of the most critical concerns in the medical domain, and several researchers have developed intelligent medical devices to support the systems and further to enhance the ability to diagnose and predict heart diseases. However, there are few studies that look at the capabilities of ensemble methods in developing a heart disease detection and prediction model. In this study, the researchers assessed that how to use ensemble model, which proposes a more stable performance than the use of base learning algorithm and these leads to better results than other heart disease prediction models. The University of California, Irvine (UCI) Machine Learning Repository archive was used to extract patient heart disease data records. To achieve the aim of this study, the researcher developed the meta-algorithm. The ensemble model is a superior solution in terms of high predictive accuracy and diagnostics output reliability, as per the results of the experiments. An ensemble heart disease prediction model is also presented in this work as a valuable, cost-effective, and timely predictive option with a user-friendly graphical user interface that is scalable and expandable. From the finding, the researcher suggests that Bagging is the best ensemble classifier to be adopted as the extended algorithm that has the high prediction probability score in the implementation of heart disease prediction.
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