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A lightweight QRS detector for single lead ECG signals using a max-min difference algorithm

机译:轻量级QRS检测器,采用最大-最小差异算法处理单导联ECG信号

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摘要

Background and objectives - Detection of the R-peak pertaining to the QRS complex of an ECG signal plays an important role for the diagnosis of a patient's heart condition. To accurately identify the QRS locations from the acquired raw ECG signals, we need to handle a number of challenges, which include noise, baseline wander, varying peak amplitudes, and signal abnormality. This research aims to address these challenges by developing an efficient lightweight algorithm for QRS (i.e., R-peak) detection from raw ECG signals.\ud\udMethods - A lightweight real-time sliding window-based Max-Min Difference (MMD) algorithm for QRS detection from Lead II ECG signals is proposed. Targeting to achieve the best trade-off between computational efficiency and detection accuracy, the proposed algorithm consists of five key steps for QRS detection, namely, baseline correction, MMD curve generation, dynamic threshold computation, R-peak detection, and error correction. Five annotated databases from Physionet are used for evaluating the proposed algorithm in R-peak detection. Integrated with a feature extraction technique and a neural network classifier, the proposed ORS detection algorithm has also been extended to undertake normal and abnormal heartbeat detection from ECG signals.\ud\udResults - The proposed algorithm exhibits a high degree of robustness in QRS detection and achieves an average sensitivity of 99.62% and an average positive predictivity of 99.67%. Its performance compares favorably with those from the existing state-of-the-art models reported in the literature. In regards to normal and abnormal heartbeat detection, the proposed QRS detection algorithm in combination with the feature extraction technique and neural network classifier achieves an overall accuracy rate of 93.44% based on an empirical evaluation using the MIT-BIH Arrhythmia data set with 10-fold cross validation.\ud\udConclusions - In comparison with other related studies, the proposed algorithm offers a lightweight adaptive alternative for R-peak detection with good computational efficiency. The empirical results indicate that it not only yields a high accuracy rate in QRS detection, but also exhibits efficient computational complexity at the order of O(n), where n is the length of an ECG signal.
机译:背景和目的-检测与ECG信号QRS复杂度有关的R峰对于诊断患者的心脏状况起着重要作用。为了从采集到的原始ECG信号中准确识别QRS位置,我们需要应对许多挑战,包括噪声,基线漂移,变化的峰幅度和信号异常。这项研究旨在通过开发一种有效的轻量级算法来从原始ECG信号中检测QRS(即R峰)来应对这些挑战。\ ud \ udMethods-一种基于轻量级实时滑动窗口的最大-最小差异(MMD)算法建议从Lead II ECG信号进行QRS检测。为了在计算效率和检测精度之间取得最佳平衡,该算法包括用于QRS检测的五个关键步骤,即基线校正,MMD曲线生成,动态阈值计算,R峰检测和错误校正。来自Physionet的五个带注释的数据库用于评估R峰检测中提出的算法。与特征提取技术和神经网络分类器集成在一起,该提议的ORS检测算法也已扩展为可以从ECG信号进行正常和异常心跳检测。\ ud \ ud结果-该算法在QRS检测和检测方面表现出很高的鲁棒性达到99.62%的平均灵敏度和99.67%的平均阳性预测率。其性能与文献中报道的现有最新模型的性能相比具有优势。在正常和异常心跳检测方面,基于使用MIT-BIH心律失常数据集进行10倍的经验评估,提出的QRS检测算法与特征提取技术和神经网络分类器相结合,实现了93.44%的总体准确率交叉验证。\ ud \ ud结论-与其他相关研究相比,该算法为R峰检测提供了一种轻量级的自适应替代方案,具有良好的计算效率。实验结果表明,它不仅在QRS检测中产生了很高的准确率,而且还表现出了O(n)量级的高效计算复杂性,其中n是ECG信号的长度。

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