scholarly journals Capturing population differences in rates of vascular aging using a deep learning electrocardiogram algorithm: a cross-sectional study

Author(s):  
Ernest Diez Benavente ◽  
Francisco Lopez-Jimenez ◽  
Olena Iakunchykova ◽  
Sofia Malyutina ◽  
Alexander Kudryavstev ◽  
...  

Background: Cardiovascular event rates increase with age in all populations. This is thought to be the result of multiple underlying molecular and cellular processes that lead to cumulative vascular damage. Apart from arterial stiffness based on pulse wave velocity there are few other non-invasive measures of this process of vascular aging. We have developed a potential biomarker of vascular aging using deep-learning to predict age from a standard 12-lead electrocardiogram (ECG). The difference between ECG predicted and chronological age (δ-age) can be interpreted as a measure of vascular aging. <br />Methods: We use data collected in two cross-sectional studies of adults aged 40-69 years in Norway and Russia to test the hypothesis that mean levels of δ-age, derived from a deep-learning model trained on a US population, correspond to the known large differences in cardiovascular mortality between the two countries. <br />Findings: Substantial differences were found in mean δ-age between populations: Russia-USA (+5·2 years; 0·7, 10 IQR) and Norway-USA (-2·6 years; -7, 2 IQR). These differences were only marginally explained when accounting for differences in established cardiovascular disease risk factors. <br />Interpretation: δ-age may be an important biomarker of fundamental differences in cardiovascular disease risk between populations as well as between individuals.

PLoS Medicine ◽  
2016 ◽  
Vol 13 (11) ◽  
pp. e1002188 ◽  
Author(s):  
David H. Rehkopf ◽  
Belinda L. Needham ◽  
Jue Lin ◽  
Elizabeth H. Blackburn ◽  
Ami R. Zota ◽  
...  

2020 ◽  
Vol 42 (12) ◽  
pp. 1031-1041 ◽  
Author(s):  
Beverly M. Hittle ◽  
Claire C. Caruso ◽  
Holly J. Jones ◽  
Amit Bhattacharya ◽  
Joshua Lambert ◽  
...  

Extreme chronotype and circadian disrupting work hours may increase nurse disease risks. This national, cross-sectional study of nurses ( N = 527) had three hypotheses. When chronotype and shift times are incongruent, nurses will experience increased likelihood of (1) obesity, (2) cardiovascular disease/risk factors, and (3) obesity or cardiovascular disease/risk factors when theoretically linked variables exist. Chronotype mismatched nurses’ ( n = 206) average sleep (6.1 hours, SD = 1.2) fell below 7–9 hours/24-hours sleep recommendations. Proportion of male nurses was significantly higher chronotype mismatched (12.3%) than matched (6.3%). Analyses found no direct relationship between chronotype match/mismatch with outcome variables. Exploratory interaction analysis demonstrated nurses with mismatched chronotype and above average sleep quality had an estimated 3.51 times the adjusted odds (95% CI 1.52,8.17; p = .003) of being obese. Although mechanism is unclear, this suggests sleep quality may be intricately associated with obesity. Further research is needed to inform nurses on health risks from disrupted sleep, chronotypes, and shift work.


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