An Approach for Cardiac Coronary Detection of Heart Signal Based on Harris Hawks Optimization and Multichannel Deep Convolutional Learning.
Haedar AlsafiJorge MunillaJavad RahebiPublished in: Computational intelligence and neuroscience (2022)
Automatic diagnosis of arrhythmia by electrocardiogram has a significant role to play in preventing and detecting cardiovascular disease at an early stage. In this study, a deep neural network model based on Harris hawks optimization is presented to arrive at a temporal and spatial fusion of information from ECG signals. Compared with the initial model of the multichannel deep neural network mechanism, the proposed model of this research has a flexible input length; the number of parameters is halved and it has a more than 50% reduction in computations in real-time processing. The results of the simulation demonstrate that the approach proposed in this research had a rate of 96.04%, 93.94%, and 95.00% for sensitivity, specificity, and accuracy. Furthermore, the proposed approach has a practical advantage over other similar previous methods.
Keyphrases
- neural network
- early stage
- cardiovascular disease
- heart failure
- coronary artery
- healthcare
- coronary artery disease
- type diabetes
- radiation therapy
- left ventricular
- metabolic syndrome
- blood pressure
- heart rate
- aortic valve
- lymph node
- cardiovascular risk factors
- sentinel lymph node
- aortic stenosis
- structural basis
- transcatheter aortic valve replacement
- sensitive detection
- label free