利用数据挖掘技术诊断心脏病:影响因素和结果的系统回顾

Elahe Gozali, Sadrieh Hajesmaeel-Gohari, Kamal Khademvatani, Rahime Tajvidi Asr
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摘要

引言心脏病是一个重大的公共卫生问题,每年报告的死亡人数达数百万。近年来,数据挖掘技术作为一种辅助诊断和预测心脏病病例的工具备受关注。本系统综述研究了数据挖掘方法在心脏病诊断中的应用,以确定使用数据挖掘技术诊断的心脏相关疾病的具体类型以及最成功的数据挖掘方法:本研究对 2008 年至 2023 年 4 月期间的 IEEE、Science Direct、Google Scholar、Web of Science、Scopus 和 MEDLINE 数据库进行了系统回顾。纳入标准是将数据挖掘方法用于心脏病诊断的原创论文。非英文论文、没有全文的论文、动物研究以及其他类型的论文(会议摘要和信件)不在研究范围内。然后根据 PRISMA 对所有检索到的参考文献进行标题和摘要评估,之后分析相关文章的全文。最终样本包括 47 篇文章:在所研究的技术中,遗传神经网络数据挖掘方法的准确率最高。结果表明,预测心脏病是最常执行的任务。研究确定了人口统计学、生物临床、个人和运动相关属性,以及用于分类的其他特征。研究结果表明,数据挖掘方法在检测和预防个人及人群心脏病方面具有巨大潜力:结论:研究结果对心脏病的预防和治疗具有重要意义,尤其是对高危人群。数据挖掘方法可广泛应用于在人群范围内检测和预防心脏病,并支持为个体患者做出最合适的治疗决定,以防止死亡和降低治疗成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis of Heart Disease Using Data Mining Techniques: A Systematic Review of Influential Factors and Outcomes
Introduction: Heart disease is a major public health concern with millions of reported deaths annually. Data mining techniques have received attention in recent years as a tool aiding diagnosis and prediction of heart disease cases. This systematic review examines the application of data mining methods to cardiac disease diagnosis in order to identify specific types of heart-related disease that are diagnosed using data mining techniques as well as the most successful data mining methods.Material and Methods: This study involved a systematic review of IEEE, Science Direct, Google Scholar, Web of Science, Scopus and MEDLINE databases from 2008 until April 2023. Inclusion criteria were original papers that used data mining methods for heart disease diagnosis. Non-English papers, those without full text, studies conducted on animals, and other types of papers (conference abstracts and letters) were excluded from the study. All the retrieved references were then assessed by title and abstract according to PRISMA, after which full texts of relevant articles were analyzed. The final sample comprised of 47 articles.Results: Various classification methods have been utilized to diagnose heart-related disease using different mining tools, with genetic neural network data mining method having the highest accuracy among the studied techniques. Results show that predicting cardiac disease is the most commonly performed task. The demographic, bio-clinical, personal and exercise-related attributes, as well as other features used for classification were identified. The findings suggest that data mining methods hold great potential for detecting and preventing heart disease on both individual and population scales.Conclusion: The study findings have implications for the prevention and treatment of cardiac disease, especially in high-risk individuals. Data mining methods can be widely applied to detect and prevent heart disease on a population scale, as well as supporting decisions for the most suitable treatment for individual patients to prevent death and reduce treatment costs.
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