Instantaneous Heart Rate-based Automated Monitoring of Hypertension using Machine Learning

Prabodh Panindre, Vijay Gandhi, Sunil Kumar
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引用次数: 4

Abstract

Hypertension is a serious underlying health condition that can cause a number of severe diseases (such as sudden cardiac events, strokes, etc.) if left untreated or not detected. Wireless watch-style health trackers continuously monitor physiological data and activity that can assist in developing predictive and diagnosis systems to inform vulnerable individuals in real-time. Artificial Intelligence techniques can be extremely beneficial in learning from the existing medical data of hypertensive patients and creating implicit relationships between various relevant physiological parameters for preliminary early diagnosis of hypertension. This study investigates and compares the efficacy of various machine learning techniques for detecting hypertension condition using Instantaneous Heart Rates (IHR). The CNN-LSTM and Bi-LSTM architecture demonstrated better performance for classifying hypertension based on IHR values. The models developed in this study can be incorporated into mHealth or telemedicine applications to detect hypertension and alert the users.
使用机器学习的基于瞬时心率的高血压自动监测
高血压是一种严重的潜在健康状况,如果不及时治疗或不及时发现,可导致许多严重疾病(如突发心脏事件、中风等)。无线手表式健康追踪器持续监测生理数据和活动,有助于开发预测和诊断系统,实时通知弱势群体。人工智能技术在学习高血压患者现有的医学数据,建立各种相关生理参数之间的隐含关系,对高血压进行初步早期诊断方面非常有益。本研究调查并比较了使用瞬时心率(IHR)检测高血压状况的各种机器学习技术的有效性。CNN-LSTM和Bi-LSTM架构在基于IHR值的高血压分类中表现出更好的性能。本研究中开发的模型可以整合到移动健康或远程医疗应用中,以检测高血压并提醒用户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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