使用机器学习技术预测心力衰竭

P. K. Sahoo, Pravalika Jeripothula
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引用次数: 9

摘要

在这个现代时代,人们很忙,为了满足他们的物质需求而努力工作,没有时间给自己,这导致了身体压力和精神障碍。还有报道称,由于全球大流行的冠状病毒,心脏也受到了影响。心肌炎症可由冠状病毒引起。因此,由于冠状病毒造成的过度精神压力,心脏病现在非常常见,尤其是在城市地区。因此,在所谓的物质世界中,心脏病已成为导致男女死亡的最重要因素之一。它已成为影响城乡人口的头号杀手。冠心病(冠状动脉疾病)是最常见的心脏病之一。在医学领域,预测心脏病已经成为一项非常复杂和具有挑战性的任务,需要患者以前的健康记录,在某些情况下甚至需要遗传信息。因此,在这种现代生活方式下,迫切需要一种能够准确预测患心脏病可能性的系统。在早期阶段预测心脏病将挽救许多人的生命。目前已有许多心脏病预测系统,作者对其进行了深入的研究,提出了不同的分类和预测算法,但每种算法都有其局限性。本文的主要目标是克服这些限制,设计一个有效的鲁棒系统,并能够准确地预测心力衰竭的可能性。本文使用来自UCI存储库的数据集,并具有13个重要属性。这项工作使用了许多算法,如支持向量机,朴素贝叶斯,逻辑回归,决策树和KNN。结果表明,支持向量机的准确率最高,达到85.2%。在本文的实现部分还对所有算法进行了比较。本研究还利用模型验证技术设计了一个最适合当前场景的模型拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heart Failure Prediction Using Machine Learning Techniques
In this modern era people are very busy and working hard in order to satisfying their materialistic needs and not able to spend time for themselves which leads to physical stress and mental disorder. There are also reports that heart suffer because of global pandemic corona virus. Inflammation of the heart muscle can be caused by corona virus. Thus heart disease is very common now a day’s particularly in urban areas because of excess mental stress due to corona virus. As a result Heart disease has become one of the most important factors for death of men and women in the so called material world. It has emerged as the top killer that has affected both urban and rural population. CAD (Coronary artery disease) is one of the most common types of heart disease. In the medical field predicting the heart disease has become a very complicated and challenging task, requires patient previous health records and in some cases they even need Genetic information as well. So, in this contemporary life style there is an urgent need of a system which will predict accurately the possibility getting heart disease. Predicting a Heart Disease in early stage will save many people’s Life. There were many heart disease prediction systems available at present, the Authors have been researched well and proposed different Classification and prediction algorithms but each one has its own limitations. The main objective of this paper is to overcome the limitations and to design a robust system which works efficiently and will able to predict the possibility of heart failure accurately. This paper uses the data set from the UCI repository and having 13 important attributes. This work is implemented using many algorithms such as SVM, Naive Bayes, Logistic Regression, Decision Tree and KNN. It is found that SVM gave the best result with accuracy up to 85.2%. A comparative statement of all the algorithms also presented in the implementation part of the paper. This research also uses model validation technique to design a best suitable model fitting in the current scenario.
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