Abstract

BackgroundBlood pressure diseases have increasingly been identified as among the main factors threatening human health. How to accurately and conveniently measure blood pressure is the key to the implementation of effective prevention and control measures for blood pressure diseases. Traditional blood pressure measurement methods exhibit many inherent disadvantages, for example, the time needed for each measurement is difficult to determine, continuous measurement causes discomfort, and the measurement process is relatively cumbersome. Wearable devices that enable continuous measurement of blood pressure provide new opportunities and hopes. Although machine learning methods for blood pressure prediction have been studied, the accuracy of the results does not satisfy the needs of practical applications.ResultsThis paper proposes an efficient blood pressure prediction method based on the support vector machine regression (SVR) algorithm to solve the key gap between the need for continuous measurement for prophylaxis and the lack of an effective method for continuous measurement. The results of the algorithm were compared with those obtained from two classical machine learning algorithms, i.e., linear regression (LinearR), back propagation neural network (BP), with respect to six evaluation indexes (accuracy, pass rate, mean absolute percentage error (MAPE), mean absolute error (MAE), R-squared coefficient of determination (R2) and Spearman’s rank correlation coefficient). The experimental results showed that the SVR model can accurately and effectively predict blood pressure.ConclusionThe multi-feature joint training and predicting techniques in machine learning can potentially complement and greatly improve the accuracy of traditional blood pressure measurement, resulting in better disease classification and more accurate clinical judgements.

Highlights

  • Blood pressure diseases have increasingly been identified as among the main factors threatening human health

  • The results show that the prediction of blood pressure by the support vector machine regression (SVR) model is the best

  • Data set analysis The 15628501 human physiological index data contain the characteristic data of the human body in different states during rest and under different exercise loads

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Summary

Introduction

Blood pressure diseases have increasingly been identified as among the main factors threatening human health. Traditional blood pressure measurement methods exhibit many inherent disadvantages, for example, the time needed for each measurement is difficult to determine, continuous measurement causes discomfort, and the measurement process is relatively cumbersome. Wearable devices that enable continuous measurement of blood pressure provide new opportunities and hopes. Blood pressure is an important physiological parameter that reflects the state of the cardiovascular system and is playing an increasingly important role in clinical work. Two methods are used clinically to measure blood pressure, i.e., the direct approach and indirect approach. The indirect measurement has become increasingly accurate and is widely used in clinical practice. Auscultation and oscillometry are commonly used indirect and intermittent blood pressure measurement methods.

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