利用机器学习技术建立基于网络的心脏病预测模型

Musa Abubakar, Abba Hamman Maidabara, Yusuf Musa Malgwi, Abdulrahman Mohammed
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引用次数: 0

摘要

心脏病的发病率正在快速上升,因此,提前预防和预测此类疾病非常重要。这种诊断是一项艰巨的任务,即必须精确有效地进行。本研究论文主要关注基于各种医疗属性的温氏心脏病预测技术。心脏病预测系统的准备工作是利用病人的病史来预测病人是否有可能被诊断出患有心脏病。我们使用了不同的机器学习算法,如逻辑回归和奈夫贝叶斯,对心脏病患者进行预测和分类。我们使用了一种非常有用的方法来规范如何使用该模型来提高任何个人心脏病发作预测的准确性。所建议模型的优势令人满意,它能够通过使用奈维贝叶斯和逻辑回归预测特定个体患有心脏病的证据,与之前使用的分类器(如奈维贝叶斯等)相比,显示出良好的准确性。因此,通过使用给定模型找到分类器正确、准确识别心脏病的概率,可以减轻很大的压力。给定的心脏病预测系统可以提高医疗水平并降低成本。这个项目为我们提供了重要的知识,可以帮助我们预测心脏病患者。关键词基于网络的 心脏病 预测模型 机器学习
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WEB BASED HEART DISEASE PREDICTION MODEL USING MACHINE LEARNING TECHNIQUE
The cases of heart diseases are increasing at a rapid rate and it’s very important to take precaution to predict any such diseases beforehand. This diagnosis is a difficult task i.e. it should be performed precisely and efficiently. The research paper mainly focuses on wen based heart disease prediction technique based on various medical attributes. Heart disease prediction system were prepared to predict whether the patient is likely to be diagnosed with a heart disease or not using the medical history of the patient. We used different algorithms of machine learning such as logistic regression and Naïve Bayes to predict and classify the patient with heart disease. A quite helpful approach was used to regulate how the model can be used to improve the accuracy of prediction of Heart Attack in any individual. The strength of the proposed model was quiet satisfying and was able to predict evidence of having a heart disease in a particular individual by using Naïve Bayes and Logistic Regression which showed a good accuracy in comparison to the previously used classifier such as naive bayes etc. So a quiet significant amount of pressure has been lift off by using the given model in finding the probability of the classifier to correctly and accurately identify the heart disease. The Given heart disease prediction system enhances medical care and reduces the cost. This project gives us significant knowledge that can help us predict the patients with heart disease. Keywords: Web Based, Heart, Disease, Prediction Model, Machine Learning.
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