A resource-efficient 1D-CNN-based AF detection method using RR interval and P-wave features achieved an overall accuracy of 99.44%, sensitivity of 98.76%, and specificity of 99.81%.
Does a resource-efficient 1D-CNN using P-wave and RR interval features improve atrial fibrillation detection accuracy and energy efficiency for wearable devices?
A resource-efficient 1D-CNN model using P-wave and RR interval features provides highly accurate and energy-efficient real-time atrial fibrillation detection suitable for wearable edge-AI devices.
Atrial fibrillation (AF) is a cardiac arrhythmia which leads to ischemic stroke. This paper presents a real-time AF detection method with reduction in energy consumption and false alarms for wearable devices. The method is designed with a 1D-convolutional neural network (CNN), RR interval, and P-wave features. The training dataset contains the Fourier magnitude spectrum and RR intervals of 10-second electrocardiogram (ECG) segments from five benchmark ECG databases (1-lead, 2-lead, and 12-lead). The 1D-CNN-based AF detection methods are tested with two untrained datasets (2-lead and 12-lead) and 20% of the trained dataset. The optimal trade-off between performance and computational complexity is achieved using 5-layer CNN model (activation function: exponential linear unit and kernel size: 4×1) with a model size of 4.33MB and processing time of 0.100ms. The CNN-RRI-FMS based AF detection method has an overall accuracy, sensitivity, and specificity of 99.44%, 98.76%, and 99.81%, respectively. The method is validated on Raspberry-Pi. The method has an average latency and energy consumption of 3.52ms and 10.76mJ for a 10-second ECG segment on Raspberry Pi. Comparative analysis with prior studies and existing deep-learning networks signifies the superiority of the method in terms of performance, computational complexity, and energy efficiency. The experimental results emphasize its suitability for real-time implementations in cardiac health monitoring devices.
Phukan et al. (Wed,) conducted a other in Atrial fibrillation. 1D-CNN-based AF detection method using P-wave and RR interval features vs. prior studies and existing deep-learning networks was evaluated on overall accuracy. A resource-efficient 1D-CNN-based AF detection method using RR interval and P-wave features achieved an overall accuracy of 99.44%, sensitivity of 98.76%, and specificity of 99.81%.