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Evaluation of Level-Crossing ADCs for Event-Driven ECG Classification

Saeed, M. (Maryam), Wang, Q. (Qingyuan), Martens, O. (Olev), Larras, B. (Benoit), Frappé, A. (Antoine), Cardiff, B. (Barry), Deepu, J. (John)

2021LillOA (Université de Lille (University Of Lille))32 citationsOpen Access PDF

Abstract

In this paper, a new methodology for choosing design parameters of level-crossing analog-to-digital converters (LC-ADCs) is presented that improves sampling accuracy and reduces the data stream rate. Using the MIT-BIH Arrhythmia dataset, several LC-ADC models are designed, simulated and then evaluated in terms of compression and signal-to-distortion ratio. A new one-dimensional convolutional neural network (1D-CNN) based classifier is presented. The 1D-CNN is used to evaluate the event-driven data from several LC-ADC models. With uniformly sampled data, the 1D-CNN has 99.49%, 92.4% and 94.78% overall accuracy, sensitivity and specificity, respectively. In comparison, a 7-bit LC-ADC with 2385Hz clock frequency and 6-bit clock resolution offers 99.2%, 89.98% and 91.64% overall accuracy, sensitivity and specificity, respectively. It also offers 3x data compression while maintaining a signal-to-distortion ratio of 21.19dB. Furthermore, it only requires 49% floating-point operations per second (FLOPS) for cardiac arrhythmia classification in comparison with the uniformly sampled ADC. Finally, an open-source event-driven arrhythmia database is presented.

Topics & Concepts

Convolutional neural networkComputer scienceSensitivity (control systems)Artificial intelligenceConvertersPattern recognition (psychology)Electronic engineeringEngineeringVoltageElectrical engineeringAnalog and Mixed-Signal Circuit DesignECG Monitoring and AnalysisCardiac electrophysiology and arrhythmias