机器学习系统使用社会人口统计学和危险因素预测心脏病的准确性的有效性-各种模型的比较分析

N. Panda, K. L. Mahanta, Jitendra kumar Pati, Ruchi Bhuyan, Soumya subhashree Satapathy
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引用次数: 0

摘要

背景:心脏病专家可以通过准确的诊断和预后更恰当地对患者的心血管疾病进行分类,使他们能够实施最适当的护理。由于机器学习识别数据模式的能力,它在医疗领域的应用已经增长。通过使用机器学习对心血管疾病的发病率进行分类,诊断医生可以避免犯错误。为了降低心血管疾病带来的死亡率,我们的研究开发了一个可以正确预测这些疾病的模型。方法:本研究强调建立正确预测心血管疾病的模型,以降低心血管疾病带来的死亡率。我们部署了四种著名的分类机器学习算法,如K近邻、逻辑回归、人工神经网络和决策树。结果:采用性能矩阵对所提模型进行评价。然而,逻辑回归在AUC(0.955)和95% CI(0.872-0.965)方面具有较高的准确性,其次是人工神经网络。Auc (0.864), 95% ci(0.826-0.912)。结论:使用机器学习可以预测个体发生心脏事件的风险,并且可以识别出风险最大的人。可以通过机器学习开发预测模型,以确定哪些人有很高的心脏病发作几率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effectiveness of Machine Learning Systems' Accuracy in Predicting Heart Stroke Using Socio-Demographic and Risk Factors - A Comparative Analysis of Various Models
Background: Cardiologists can more appropriately classify patients' cardiovascular diseases by executing accurate diagnoses and prognoses, enabling them to administer the most appropriate care. Due to machine learning's ability to identify patterns in data, its applications in the medical sector have grown. Diagnosticians can avoid making mistakes by classifying the incidence of cardiovascular illness using machine learning. To lower the fatality rate brought on by cardiovascular disorders, our research developed a model that can correctly forecast these conditions. Methods: This study emphasized a model that can correctly forecast cardiovascular illnesses to lower the death rate brought on by these conditions. We deployed four well-known classification machine learning algorithms like K nearest Neighbour, Logistic Regression, Artificial Neural network, and Decision tree. Results: The proposed models were evaluated by their performance matrices. However logistic regression performed high accuracy concerning AUC (0.955) 95% CI (0.872-0.965) followed by the artificial neural network. AUC (0.864) 95% CI (0.826-0.912). Conclusion: Individuals' risk of having a cardiac event may be predicted using machine learning, and those who are most at risk can be identified. Predictive models may be developed via machine learning to pinpoint those who have a high chance of suffering a heart attack.
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