使用数据挖掘技术分析血压

Soumyalatha Naveen, Nayana Anil, Prerana M, Shalen Janet S, Yashasvi V
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引用次数: 0

摘要

高血压是一个严重的公共卫生问题。与高血压(BP)相关的心血管疾病(cvd)已成为危害人类健康的主要疾病之一。高血压引起的心血管疾病是一种广泛存在的慢性疾病。监测血压(BP)是心血管系统的生理指标,是预防心血管疾病的有效策略。一种有助于早期管理和预防高血压的干预措施是风险预测。有效的事故预防已被证明需要连续的血压测量。与测量精度差或需要大量训练的传统预测模型相比,在连续测量中使用非侵入式血压监测似乎很有希望。因此,本研究建议并使用线性回归来解决这个问题。目标是建立预测模型,比如线性回归——一种机器学习技术,可以在没有侵入性临床程序的情况下识别出患高血压的高风险人群。在一个或多个自变量的帮助下,利用线性回归的建模技术预测因变量。在这篇文章中,血压是通过考虑年龄、体重、压力和脉搏来分析的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Blood Pressure using Data Mining Techniques
Hypertension is a serious public health concern. Diseases related to high blood pressure (BP) such as cardiovascular disease (CVDs) have emerged as one of the main dangers to human health. Cardiovascular disease caused due to hypertension is a widespread chronic disease. Monitoring blood pressure (BP), a physiological indication for cardiovascular systems is a useful strategy for preventing CVDs. An intervention that helps in the early management and prevention of hypertension is risk prediction. Effective incident prevention has been shown to need continuous BP measurement. The use of non-intrusive blood pressure monitoring in continuous measurement appears promising in contrast to conventional prediction models that have poor measurement accuracy or require extensive training. As a result, linear regression is suggested and used to address the issue in this study. The goal is to build predictive models, such as linear regression - a machine learning technique that can identify people at a high risk of developing hypertension without invasive clinical procedures. With the help of one or more independent variables, a dependent variable is predicted using the Modelling technique of linear regression. In this article, blood pressure is analyzed by considering age, weight, stress, and pulse.
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