IntroductionAging is accompanied by physiological changes in cardiovascular regulation that can be evaluated using a variety of metrics. In this study, we employ machine learning on autonomic cardiovascular indices in order to estimate participants’ age.MethodsWe analyzed a database including resting state electrocardiogram and continuous blood pressure recordings of healthy volunteers. A total of 884 data sets met the inclusion criteria. Data of 72 other participants with an BMI indicating obesity (>30 kg/m²) were withheld as an evaluation sample. For all participants, 29 different cardiovascular indices were calculated including heart rate variability, blood pressure variability, baroreflex function, pulse wave dynamics, and QT interval c...
This research is an application of machine learning in medical sciences. The purpose of this researc...
In recent years, different machine learning algorithms have been developed for the estimation of Bio...
Vascular ageing biomarkers have been found to be predictive of cardiovascular risk independently of ...
International audienceAttaining personalized healthy aging requires accurate monitoring of physiolog...
ObjectiveThe aim of the present study was to develop a neural network to characterize the effect of ...
Cardiovascular disease is difficult to detect due to several risk factors, including high blood pres...
Physical activity improves quality of life and protects against age-related diseases. With age, phys...
Electrocardiography (ECG) is a non-invasive method used in medicine to track the electrical pulses s...
We developed a novel interpretable biological heart age estimation model using cardiovascular magnet...
Abstract: Knowledge of a patient’s cardiac age, or “heart age”, could prove useful to both patients ...
Heart rate variability (HRV) is the time variation between adjacent heartbeats. This variation is re...
Electrocardiographic (ECG) Heart Age conveying cardiovascular risk has been estimated by both Bayesi...
Objectives: Predictive models for the onset of metabolic syndrome (MS) for people in their 30s are s...
Cardiovascular Disease (CVD) is a leading cause of death worldwide, with the potential to cause seri...
Cardiovascular disease (CVD) is the leading cause of deaths worldwide. In 2017, CVD contributed to 1...
This research is an application of machine learning in medical sciences. The purpose of this researc...
In recent years, different machine learning algorithms have been developed for the estimation of Bio...
Vascular ageing biomarkers have been found to be predictive of cardiovascular risk independently of ...
International audienceAttaining personalized healthy aging requires accurate monitoring of physiolog...
ObjectiveThe aim of the present study was to develop a neural network to characterize the effect of ...
Cardiovascular disease is difficult to detect due to several risk factors, including high blood pres...
Physical activity improves quality of life and protects against age-related diseases. With age, phys...
Electrocardiography (ECG) is a non-invasive method used in medicine to track the electrical pulses s...
We developed a novel interpretable biological heart age estimation model using cardiovascular magnet...
Abstract: Knowledge of a patient’s cardiac age, or “heart age”, could prove useful to both patients ...
Heart rate variability (HRV) is the time variation between adjacent heartbeats. This variation is re...
Electrocardiographic (ECG) Heart Age conveying cardiovascular risk has been estimated by both Bayesi...
Objectives: Predictive models for the onset of metabolic syndrome (MS) for people in their 30s are s...
Cardiovascular Disease (CVD) is a leading cause of death worldwide, with the potential to cause seri...
Cardiovascular disease (CVD) is the leading cause of deaths worldwide. In 2017, CVD contributed to 1...
This research is an application of machine learning in medical sciences. The purpose of this researc...
In recent years, different machine learning algorithms have been developed for the estimation of Bio...
Vascular ageing biomarkers have been found to be predictive of cardiovascular risk independently of ...