使用机器学习算法预测心脏病

S. Ravi, Dr.M. Sambath, Dr.J. Thangakumar, D. Kumar, Gorantla Naveen, Makka Bramiah
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引用次数: 0

摘要

随着大数据在医疗保健领域的普及,准确的医疗数据收集有利于心脏病的早期诊断、医院治疗和政府资源。然而,在缺乏医疗数据质量的地方,理解的准确性受到影响。因此,一些田间疾病在不同地区具有独特的特征,这可能使疾病更加困难。现在更难预测疫情的爆发。在本文中,我们自动机器学习算法用于细菌感染群体的有效流行病检测。我们使用安全有效的数据集对修改后的预测进行了测试。为了改善区域内数据丢失的情况,我们采用预测建模的方法来恢复不准确的数值。关注病人的症状,就可以怀疑是心脏病发作。模型是用机器学习技术建立的。因此,精度是精确的。Flask web界面用于构建应用程序。在本研究中,我们将使用机器学习方法进行实验。
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Prediction of Heart Disease Using Machine Learning Algorithms
As big data becomes more prevalent in the healthcare and medical sectors, accurate medical data collection benefits early diagnosis of heart disease, hospital treatment, and government resources. However, where medical data quality is lacking, understanding accuracy suffers. Consequently, some field diseases have unique features in different regions, which can make illness more difficult. It is now more hard to predict outbreaks. We automate machine learning algorithms for efficient epidemic detection in bacterial infection population in this paper. We put the modified forecasts to the test using securely and efficiently datasets. areas of the region to improve the situation of lost data, we use a predictive modeling approach to restore inaccurate value. Focused upon its patient's signs, a heart attack is suspected. Models were built using machine learning techniques. As a consequence, the accuracy is pinpoint accurate. The Flask web interface is used to build the Application. In this research, we shall conduct experiments using machine learning methods.
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来源期刊
Alinteri Journal of Agriculture Sciences
Alinteri Journal of Agriculture Sciences AGRICULTURE, MULTIDISCIPLINARY-
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