Cardiovascular Disease Detection using Ensemble Learning.
Abdullah AlqahtaniShtwai AlsubaiMohemmed ShaLucia VilcekovaTalha JavedPublished in: Computational intelligence and neuroscience (2022)
One of the most challenging tasks for clinicians is detecting symptoms of cardiovascular disease as earlier as possible. Many individuals worldwide die each year from cardiovascular disease. Since heart disease is a major concern, it must be dealt with timely. Multiple variables affecting health, such as excessive blood pressure, elevated cholesterol, an irregular pulse rate, and many more, make it challenging to diagnose cardiac disease. Thus, artificial intelligence can be useful in identifying and treating diseases early on. This paper proposes an ensemble-based approach that uses machine learning (ML) and deep learning (DL) models to predict a person's likelihood of developing cardiovascular disease. We employ six classification algorithms to predict cardiovascular disease. Models are trained using a publicly available dataset of cardiovascular disease cases. We use random forest (RF) to extract important cardiovascular disease features. The experiment results demonstrate that the ML ensemble model achieves the best disease prediction accuracy of 88.70%.
Keyphrases
- cardiovascular disease
- machine learning
- deep learning
- artificial intelligence
- blood pressure
- type diabetes
- convolutional neural network
- cardiovascular events
- cardiovascular risk factors
- big data
- healthcare
- pulmonary hypertension
- heart failure
- oxidative stress
- risk assessment
- metabolic syndrome
- neural network
- body composition
- weight gain
- high intensity
- atrial fibrillation