The Impact of Ontology on the Prediction of Cardiovascular Disease Compared to Machine Learning Algorithms

Hakim El Massari, Noreddine Gherabi, Sajida Mhammedi, Hamza Ghandi, M. Bahaj, Muhammad Raza Naqvi
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引用次数: 1

Abstract

Cardiovascular disease is one of the chronic diseases that is on the rise. The complications occur when cardiovascular disease is not discovered early and correctly diagnosed at the right time. Various machine learning approaches, including ontology-based Machine Learning techniques, have lately played an essential role in medical science by building an automated system that can identify heart illness. This paper compares and reviews the most prominent machine learning algorithms, as well as ontology-based Machine Learning classification. Random Forest, Logistic regression, Decision Tree, Naive Bayes, k-Nearest Neighbours, Artificial Neural Network, and Support Vector Machine were among the classification methods explored. The dataset used consists of 70000 instances and can be downloaded from the Kaggle website. The findings are assessed using performance measures generated from the confusion matrix, such as F-Measure, Accuracy, Recall, and Precision. The results showed that the ontology outperformed all the machine learning algorithms.
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本体与机器学习算法对心血管疾病预测的影响
心血管疾病是一种正在上升的慢性疾病。当心血管疾病没有得到早期发现和正确诊断时,并发症就会发生。最近,各种机器学习方法,包括基于本体的机器学习技术,通过构建可以识别心脏病的自动化系统,在医学科学中发挥了重要作用。本文比较和回顾了最突出的机器学习算法,以及基于本体的机器学习分类。随机森林、逻辑回归、决策树、朴素贝叶斯、k近邻、人工神经网络和支持向量机是探索的分类方法之一。使用的数据集由70,000个实例组成,可以从Kaggle网站下载。使用从混淆矩阵产生的性能度量来评估结果,例如F-Measure、准确性、召回率和精度。结果表明,本体优于所有的机器学习算法。
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