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A new approach of QRS complex detection based on matched filtering and triangle character analysis

机译:基于匹配滤波和三角特征分析的QRS复杂检测新方法

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摘要

QRS complex detection usually provides the fundamentals to automated electrocardiogram (ECG) analysis. In this paper, a new approach of QRS complex detection without the stage of noise suppression was developed and evaluated, which was based on the combination of two techniques: matched filtering and triangle character analysis. Firstly, a template of QRS complex was selected automatically by the triangle character in ECG, and then it was time-reversed after removing its direct current component. Secondly, matched filtering was implemented at low computational cost by finite impulse response, which further enhanced QRS complex and attenuated non-QRS regions containing P-wave, T-wave and various noise components. Subsequently, triangle structure-based threshold decision was processed to detect QRS complexes. And RR intervals and triangle structures were further analyzed for the reduction of false-positive and false-negative detections. Finally, the performance of the proposed algorithm was tested on all 48 records of the MIT-BIH Arrhythmia Database. The results demonstrated that the detection rate reached 99.62 %, the sensitivity got 99.78 %, and the positive prediction was 99.85 %. In addition, the proposed method was able to identify QRS complexes reliably even under the condition of poor signal quality.
机译:QRS复杂检测通常为自动心电图(ECG)分析提供基础。本文基于匹配滤波和三角特征分析两种技术的结合,开发并评估了一种无噪声抑制阶段的QRS复杂检测新方法。首先,由ECG中的三角形字符自动选择QRS复合体的模板,然后在去除其直流分量后对其进行时间反转。其次,通过有限的脉冲响应以较低的计算量实现了匹配滤波,从而进一步增强了QRS复杂度并衰减了包含P波,T波和各种噪声分量的非QRS区域。随后,对基于三角形结构的阈值决策进行处理以检测QRS络合物。并进一步分析了RR间隔和三角形结构,以减少假阳性和假阴性检测。最后,在MIT-BIH心律失常数据库的所有48条记录上测试了该算法的性能。结果表明,检出率达到99.62%,灵敏度达到99.78%,阳性预测值为99.85%。此外,即使在信号质量较差的情况下,该方法也能够可靠地识别QRS络合物。

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