Title Development of a Heart Rate Variability Prediction Equation Through Multiple Linear Regression Analysis Using Physical Characteristics and Heart Rate Variables.
Author Kim, Sung-Woo; Park, Hun-Young; Jung, Hoeryong; Park, Sin-Ae; Lim, Kiwon
Journal Inquiry Publication Year/Month 2023-Jan-Dec
PMID 37203144 PMCID PMC10201176
Affiliation + expend 1.Physical Activity and Performance Institute, Konkuk University, Seoul, Republic of Korea.

Heart rate variability (HRV) is an effective tool for objectively evaluating physiological stress indices in psychological states. This study aimed to develop multiple linear regression equations to predict HRV variables using physical characteristics, body composition, and heart rate (HR) variables (eg, sex, age, height, weight, body mass index, fat-free mass, percent body fat, resting HR, maximal HR, and HR reserve) in Korean adults. Six hundred eighty adults (male, n = 236, female, n = 444) participated in this study. HRV variable estimation multiple linear regression equations were developed using a stepwise technique. The regression equation\'s coefficient of determination for time-domain variables was significantly high (SDNN = adjusted R(2): 73.6%, P < .001; RMSSD = adjusted R(2): 84.0%, P < .001; NN50 = adjusted R(2): 98.0%, P < .001; pNN50 = adjusted R(2): 99.5%, P < .001). The coefficient of determination of the regression equation for the frequency-domain variables was high without VLF (TP = adjusted R(2): 75.0%, P < .001; LF = adjusted R(2): 77.6%, P < .001; VLF = adjusted R(2): 30.1%, P < .001; HF = adjusted R(2): 71.3%, P < .001). Healthcare professionals, researchers, and the general public can quickly evaluate their psychological conditions using the HRV variables prediction equation.

  • Copyright © 2023
    National Institute of Pathogen Biology, CAMS & PUMC, Bejing, China
    All rights reserved.