A Novel Cuff-less Measurement Method for Noninvasive Blood Pressure Prediction using Body Vital Signals

Shooka Shariat Mohreri, M. Moradi
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引用次数: 1

Abstract

Hypertension or the abnormal increase of blood pressure is a chronic disease which can damage the other parts of the body such as the kidneys, heart, and vessels. The high cost of treating the injuries caused by hypertension is undeniable. Various techniques exist for measuring the blood pressure. In recent years, machine learning models became more popular due to being non-invasive and their continuous supervision, remote use, and low cost. Several analyses were performed by the audio signals of cardiac palpitations, electrocardiograms, on photo plethysmogramy on software and hardware platforms. Researchers used machine learning techniques to present the alternative methods for aggressive and costly methods. Among the presented methods, regression algorithms, support vector machine (SVM), and neural network (NN) are highly popular. This study presented a method for analyzing ECG and PPG signals for diagnosing hypertension. The proposed method can improve the classification accuracy regardless of the classification algorithm by providing the combined features. In the conducted evaluation, the neural network algorithm was proposed for the data with continuous label while the C4.5 tree was proposed for the data with discrete label. In addition, the proposed generalized method was provided by calculating the cosine distance and optimizing the genetic algorithm for low data and noise conditions.
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一种利用身体生命信号进行无创血压预测的新型无袖带测量方法
高血压或血压异常升高是一种慢性疾病,它会损害身体的其他部位,如肾脏、心脏和血管。治疗高血压引起的损伤的高昂费用是不可否认的。测量血压的方法多种多样。近年来,机器学习模型因其非侵入性、持续监督、远程使用和低成本而越来越受欢迎。在软件和硬件平台上对心悸的音频信号、心电图、照片容积图进行了分析。研究人员使用机器学习技术为激进和昂贵的方法提供了替代方法。在这些方法中,回归算法、支持向量机(SVM)和神经网络(NN)是最受欢迎的。本研究提出了一种分析心电图和PPG信号诊断高血压的方法。该方法通过提供组合特征,无论采用何种分类算法,都能提高分类精度。在进行的评价中,对于连续标签的数据提出了神经网络算法,对于离散标签的数据提出了C4.5树算法。此外,在低数据和低噪声条件下,通过计算余弦距离和优化遗传算法,给出了提出的广义方法。
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