Abstract

Extensive research has been performed on continuous and noninvasive cuff-less blood pressure (BP) measurement using artificial intelligence algorithms. This approach involves extracting certain features from physiological signals, such as ECG, PPG, ICG, and BCG, as independent variables and extracting features from arterial blood pressure (ABP) signals as dependent variables and then using machine-learning algorithms to develop a blood pressure estimation model based on these data. The greatest challenge of this field is the insufficient accuracy of estimation models. This paper proposes a novel blood pressure estimation method with a clustering step for accuracy improvement. The proposed method involves extracting pulse transit time (PTT), PPG intensity ratio (PIR), and heart rate (HR) features from electrocardiogram (ECG) and photoplethysmogram (PPG) signals as the inputs of clustering and regression, extracting systolic blood pressure (SBP) and diastolic blood pressure (DBP) features from ABP signals as dependent variables, and finally developing regression models by applying gradient boosting regression (GBR), random forest regression (RFR), and multilayer perceptron regression (MLP) on each cluster. The method was implemented using the MIMIC-II data set with the silhouette criterion used to determine the optimal number of clusters. The results showed that because of the inconsistency, high dispersion, and multitrend behavior of the extracted features vectors, the accuracy can be significantly improved by running a clustering algorithm and then developing a regression model on each cluster and finally weighted averaging of the results based on the error of each cluster. When implemented with 5 clusters and GBR, this approach yielded an MAE of 2.56 for SBP estimates and 2.23 for DBP estimates, which were significantly better than the best results without clustering (DBP: 6.27, SBP: 6.36).

Highlights

  • Blood pressure (BP) is one of the most important health indicators and can be used to diagnose various diseases

  • We introduce a new clustering-based method to achieve significant accuracy improvement in this area. is method starts with extracting pulse transit time (PTT), PPG intensity ratio (PIR), and heart rate (HR) features from ECG and PPG signals and extracting systolic blood pressure (SBP) and diastolic blood pressure (DBP) features from the corresponding arterial blood pressure (ABP) signal

  • Since the behavior of blood flow in vessels depends on various factors, PPG will be a good signal to improve the results of blood pressure (BP) estimation. is improvement can be made by combining PTT with several different features of PPG, one of which is the PPG intensity ratio (PIR)

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Summary

Introduction

Blood pressure (BP) is one of the most important health indicators and can be used to diagnose various diseases. While the invasive approach tends to provide more accurate BP readings, it has some drawbacks and limitations. E World Health Organization has issued reports on the subject that each year, 9.4 million people die from excessive blood pressure around the world (hypertension), and roughly 30% of all men and 25% of all women suffer from this condition [1]. Hypertension is the second leading cause of cardiovascular disease, but it tends to be asymptomatic, so it has been called the silent killer. As one of the vital signs, blood pressure needs to be regularly controlled. Most people with hypertension are unaware of their condition and how it harms their internal organs like the brain, eyes, and kidneys over time

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