Title | Redundancy among risk predictors derived from heart rate variability and dynamics: ALLSTAR big data analysis. | ||
Author | Yuda, Emi; Ueda, Norihiro; Kisohara, Masaya; Hayano, Junichiro | ||
Journal | Ann Noninvasive Electrocardiol | Publication Year/Month | 2021-Jan |
PMID | 33263196 | PMCID | PMC7816809 |
Affiliation + expend | 1.Tohoku University Graduate School of Engineering, Sendai, Japan. |
BACKGROUND: Many indices of heart rate variability (HRV) and heart rate dynamics have been proposed as cardiovascular mortality risk predictors, but the redundancy between their predictive powers is unknown. METHODS: From the Allostatic State Mapping by Ambulatory ECG Repository project database, 24-hr ECG data showing continuous sinus rhythm were extracted and SD of normal-to-normal R-R interval (SDNN), very-low-frequency power (VLF), scaling exponent alpha(1) , deceleration capacity (DC), and non-Gaussianity lambda(25s) were calculated. The values were dichotomized into high-risk and low-risk values using the cutoffs reported in previous studies to predict mortality after acute myocardial infarction. The rate of multiple high-risk predictors accumulating in the same person was examined and was compared with the rate expected under the assumption that these predictors are independent of each other. RESULTS: Among 265,291 ECG data from the ALLSTAR database, the rates of subjects with high-risk SDNN, DC, VLF, alpha(1) , and lambda(25s) values were 2.95, 2.75, 5.89, 15.75, and 18.82%, respectively. The observed rate of subjects without any high-risk value was 66.68%, which was 1.10 times the expected rate (60.74%). The ratios of observed rate to the expected rate at which one, two, three, four, and five high-risk values accumulate in the same person were 0.73 times (24.10 and 32.82%), 1.10 times (6.56 and 5.99%), 4.26 times (1.87 and 0.44%), 47.66 times (0.63 and 0.013%), and 1,140.66 times (0.16 and 0.00014%), respectively. CONCLUSIONS: High-risk predictors of HRV and heart rate dynamics tend to cluster in the same person, indicating a high degree of redundancy between them.