Cardiovascular Signal Entropy Predicts All-Cause Mortality: Evidence from The Irish Longitudinal Study on Ageing (TILDA).
Silvin Paul KnightMark WardLouise NewmanJames R C DavisEoin DugganRose Anne KennyRomán Romero OrtuñoPublished in: Entropy (Basel, Switzerland) (2022)
In this study, the relationship between cardiovascular signal entropy and the risk of seven-year all-cause mortality was explored in a large sample of community-dwelling older adults from The Irish Longitudinal Study on Ageing (TILDA). The hypothesis under investigation was that physiological dysregulation might be quantifiable by the level of sample entropy (SampEn) in continuously noninvasively measured resting-state systolic (sBP) and diastolic (dBP) blood pressure (BP) data, and that this SampEn measure might be independently predictive of mortality. Participants' date of death up to 2017 was identified from official death registration data and linked to their TILDA baseline survey and health assessment data (2010). BP was continuously monitored during supine rest at baseline, and SampEn values were calculated for one-minute and five-minute sections of this data. In total, 4543 participants were included (mean (SD) age: 61.9 (8.4) years; 54.1% female), of whom 214 died. Cox proportional hazards regression models were used to estimate the hazard ratios (HRs) with 95% confidence intervals (CIs) for the associations between BP SampEn and all-cause mortality. Results revealed that higher SampEn in BP signals was significantly predictive of mortality risk, with an increase of one standard deviation in sBP SampEn and dBP SampEn corresponding to HRs of 1.19 and 1.17, respectively, in models comprehensively controlled for potential confounders. The quantification of SampEn in short length BP signals could provide a novel and clinically useful predictor of mortality risk in older adults.
Keyphrases
- blood pressure
- electronic health record
- resting state
- functional connectivity
- big data
- healthcare
- left ventricular
- heart failure
- public health
- mental health
- type diabetes
- physical activity
- cardiovascular disease
- cross sectional
- data analysis
- risk factors
- heart rate
- metabolic syndrome
- primary care
- artificial intelligence
- cardiovascular events
- social media
- health information
- single cell
- deep learning
- blood glucose