Department of Computer Science and Software Engineering, International Islamic University Islamabad, Pakistan.
Division of Computer Science, Mathematics and Science, Collins College of Professional Studies, St. Johns University, New York 11439, NY, USA.
Comput Intell Neurosci. 2022 Aug 4;2022:1672677. doi: 10.1155/2022/1672677. eCollection 2022.
Hypertension is the main cause of blood pressure (BP), which further causes various cardiovascular diseases (CVDs). The recent COVID-19 pandemic raised the burden on the healthcare system and also limits the resources to these patients only. The treatment of chronic patients, especially those who suffer from CVD, has fallen behind, resulting in increased deaths from CVD around the world. Regular monitoring of BP is crucial to prevent CVDs as it can be controlled and diagnosed through constant monitoring. To find an effective and convenient procedure for the early diagnosis of CVDs, photoplethysmography (PPG) is recognized as a low-cost technology. Through PPG technology, various cardiovascular parameters, including blood pressure, heart rate, blood oxygen saturation, etc., are detected. Merging the healthcare domain with information technology (IT) is a demanding area to reduce the rehospitalization of CVD patients. In the proposed model, PPG signals from the Internet of things (IoT)-enabled wearable patient monitoring (WPM) devices are used to monitor the heart rate (HR), etc., of the patients remotely. This article investigates various machine learning techniques such as decision tree (DT), naïve Bayes (NB), and support vector machine (SVM) and the deep learning model one-dimensional convolutional neural network-long short-term memory (1D CNN-LSTM) to develop a system that assists physicians during continuous monitoring, which achieved an accuracy of 99.5% using PPG-BP data set. The proposed system provides cost-effective, efficient, and fully connected monitoring systems for cardiac patients.
高血压是血压(BP)的主要原因,进一步导致各种心血管疾病(CVDs)。最近的 COVID-19 大流行增加了医疗系统的负担,也限制了对这些患者的资源供应。慢性患者的治疗,尤其是那些患有 CVD 的患者,已经落后了,导致全球 CVD 死亡人数增加。定期监测血压对于预防 CVD 至关重要,因为通过持续监测可以控制和诊断血压。为了寻找一种有效和方便的 CVD 早期诊断程序,光电容积脉搏波(PPG)被认为是一种低成本技术。通过 PPG 技术,可以检测到各种心血管参数,包括血压、心率、血氧饱和度等。将医疗保健领域与信息技术(IT)融合是一个要求很高的领域,可以减少 CVD 患者的再住院率。在提出的模型中,使用物联网(IoT)启用的可穿戴患者监测(WPM)设备的 PPG 信号远程监测患者的心率(HR)等。本文研究了各种机器学习技术,如决策树(DT)、朴素贝叶斯(NB)和支持向量机(SVM)以及深度学习模型一维卷积神经网络-长短期记忆(1D CNN-LSTM),以开发一种在连续监测期间协助医生的系统,该系统使用 PPG-BP 数据集实现了 99.5%的准确率。所提出的系统为心脏患者提供了具有成本效益、高效和全连接的监测系统。