Abstract

Ambulatory blood pressure (BP) monitoring (ABPM) is vital for screening cardiovascular activity. The American College of Cardiology/American Heart Association guideline for the prevention, detection, evaluation, and management of BP in adults recommends measuring BP outside the office setting using daytime ABPM. The recommendation to use night–day BP measurements to confirm hypertension is consistent with the recommendation of several other guidelines. In recent studies, ABPM was used to measure BP at regular intervals, and it reduces the effect of the environment on BP. Out-of-office measurements are highly recommended by almost all hypertension organizations. However, traditional ABPM devices based on the oscillometric technique usually interrupt sleep. For all-day ABPM purposes, a photoplethysmography (PPG)-based wrist-type device has been developed as a convenient tool. This optical, noninvasive device estimates BP using morphological characteristics from PPG waveforms. As measurement can be affected by multiple variables, calibration is necessary to ensure that the calculated BP values are accurate. However, few studies focused on adaptive calibration. A novel adaptive calibration model, which is data-driven and embedded in a wearable device, was proposed. The features from a 15 s PPG waveform and personal information were input for estimation of BP values and our data-driven calibration model. The model had a feedback calibration process using the exponential Gaussian process regression method to calibrate BP values and avoid inter- and intra-subject variability, ensuring accuracy in long-term ABPM. The estimation error of BP (ΔBP = actual BP—estimated BP) of systolic BP was −0.1776 ± 4.7361 mmHg; ≤15 mmHg, 99.225%, and of diastolic BP was −0.3846 ± 6.3688 mmHg; ≤15 mmHg, 98.191%. The success rate was improved, and the results corresponded to the Association for the Advancement of Medical Instrumentation standard and British Hypertension Society Grading criteria for medical regulation. Using machine learning with a feedback calibration model could be used to assess ABPM for clinical purposes.

Highlights

  • Cardiovascular diseases (CVDs), a group of heart and blood vessel disorders, are the leading cause of death globally

  • The abnormal blood pressure (BP) levels were defined as hypertension (SBP/diastolic BP (DBP) ≥ 130/80 mmHg) and hypotension (SBP/DBP < 90/60 mmHg), either, according to the guidelines of ACC/American Heart Association (AHA) and National Health Service (NHS)

  • The method proposed was based on the nonlinear machine learning (ML) GPR model, which could estimate the regression between BP values and PPG features by grouping the age range of a user

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Summary

Introduction

Cardiovascular diseases (CVDs), a group of heart and blood vessel disorders, are the leading cause of death globally. Measurement at night causes insomnia in healthy people, leading to increased awakenings Such cuff-based methods are uncomfortable, discontinuous, and unsuitable for daily use. There is still another limitation regarding recording wrist-type ECG and PPG signals simultaneously, such as the minimum requirement of at least two electrodes that should be connected to both the right arm and left arm for standard lead I recording of the ECG signal. This results in the failure of the clinical application of ABPM. The electrode placed on the skin for long-term recording would cause irritation and degrade the ECG signal quality [17]

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