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Novel Real-Time Low-Complexity QRS Complex Detector Based on Adaptive Thresholding

  • University of Alcalá

Research output: Contribution to journalArticlepeer-review

Abstract

Over the years, several QRS complex detection algorithms have been proposed with different features, but the remaining problem is their implementation in low-cost portable platforms for real-time applications, where hardware resources are limited, still providing the accuracy level required for medical applications. The proposed algorithm copes at the same time with both requirements: 1) accuracy and 2) low resource consumption. In this paper, a real-time QRS complex detector is proposed. This algorithm is based on a differentiation at the pre-processing stage combined with a dynamic threshold to detect R peaks. The thresholding stage is based on a finite-state machine, which modifies the threshold value according to the evolution of the signal and the previously detected peak. It has been evaluated on several databases, including the standard ones, thus resulting sensitivities and positive predictivities better than 99.3%. In order to analyze the computational complexity of the algorithm, it has been compared with the well-known Pan and Tompkins' algorithm. As a result, the proposed detector achieves a reduction in processing time of almost 50% by using only the 25% of hardware resources (memory, adders, and multipliers).

Original languageEnglish
Article number7138573
Pages (from-to)6036-6043
Number of pages8
JournalIEEE Sensors Journal
Volume15
Issue number10
DOIs
Publication statusPublished - 1 Oct 2015

Keywords

  • ECG signal
  • real-time QRS complex detection
  • remote monitoring systems

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