Heart disease, caused by low heart rate, is one of the most significant causes of mortality in the world today. Therefore, it is critical to monitor heart health by identifying the deviation in the heart rate very early, which makes it easier to detect and manage the heart’s function irregularities at a very early stage. The fast-growing use of advanced technology such as the Internet of Things (IoT), wearable monitoring systems and artificial intelligence (AI) in the healthcare systems has continued to play a vital role in the analysis of huge amounts of health-based data for early and accurate disease detection and diagnosis for personalized treatment and prognosis evaluation. It is then important to analyze the effectiveness of using dat...
Cardiovascular disease is difficult to detect due to several risk factors, including high blood pres...
Advances in technology have resulted in the use of sensors in a great variety of applications rangin...
Objective: To develop and optimize a machine learning prediction model for cardiovascular events dur...
Physiological time series are affected by many factors, making them highly nonlinear and nonstationa...
Physiological time series are affected by many factors, making them highly nonlinear and nonstationa...
Low heart rate causes a risk of death, heart disease, and cardiovascular diseases. Therefore, monito...
It has been recorded that in Singapore, an average of 17 deaths per day were due to Cardiovascular D...
Cardiovascular diseases are one of the primary causes of mortality worldwide. Paroxysmal atrial fibr...
Smartwatches have the potential to support health care in everyday life by supporting self-monitorin...
Cardiovascular diseases (CVDs) are a wide-reaching prominent cause of death all over the world. Ac...
According to the WHO, cardiovascular diseases (CVDs) are the number one cause of death globally, tak...
The relationship between physical activity (PA) and cardiovascular disease (CVD) is well established...
Heart rate variability (HRV) is the variation in time between successive heartbeats and can be used ...
Constructing statistical models using personal sensor data could allow for tracking health status ov...
Cardiovascular diseases (CVD) are often characterized by their multifactorial complexity. This makes...
Cardiovascular disease is difficult to detect due to several risk factors, including high blood pres...
Advances in technology have resulted in the use of sensors in a great variety of applications rangin...
Objective: To develop and optimize a machine learning prediction model for cardiovascular events dur...
Physiological time series are affected by many factors, making them highly nonlinear and nonstationa...
Physiological time series are affected by many factors, making them highly nonlinear and nonstationa...
Low heart rate causes a risk of death, heart disease, and cardiovascular diseases. Therefore, monito...
It has been recorded that in Singapore, an average of 17 deaths per day were due to Cardiovascular D...
Cardiovascular diseases are one of the primary causes of mortality worldwide. Paroxysmal atrial fibr...
Smartwatches have the potential to support health care in everyday life by supporting self-monitorin...
Cardiovascular diseases (CVDs) are a wide-reaching prominent cause of death all over the world. Ac...
According to the WHO, cardiovascular diseases (CVDs) are the number one cause of death globally, tak...
The relationship between physical activity (PA) and cardiovascular disease (CVD) is well established...
Heart rate variability (HRV) is the variation in time between successive heartbeats and can be used ...
Constructing statistical models using personal sensor data could allow for tracking health status ov...
Cardiovascular diseases (CVD) are often characterized by their multifactorial complexity. This makes...
Cardiovascular disease is difficult to detect due to several risk factors, including high blood pres...
Advances in technology have resulted in the use of sensors in a great variety of applications rangin...
Objective: To develop and optimize a machine learning prediction model for cardiovascular events dur...