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心电图分析中基于多分量的互相关搏动检测

Multi-component based cross correlation beat detection in electrocardiogram analysis.

作者信息

Last Thorsten, Nugent Chris D, Owens Frank J

机构信息

School of Computing and Mathematics, Faculty of Engineering, University of Ulster at Jordanstown, Northern Ireland.

出版信息

Biomed Eng Online. 2004 Jul 23;3(1):26. doi: 10.1186/1475-925X-3-26.

Abstract

BACKGROUND

The first stage in computerised processing of the electrocardiogram is beat detection. This involves identifying all cardiac cycles and locating the position of the beginning and end of each of the identifiable waveform components. The accuracy at which beat detection is performed has significant impact on the overall classification performance, hence efforts are still being made to improve this process.

METHODS

A new beat detection approach is proposed based on the fundamentals of cross correlation and compared with two benchmarking approaches of non-syntactic and cross correlation beat detection. The new approach can be considered to be a multi-component based variant of traditional cross correlation where each of the individual inter-wave components are sought in isolation as opposed to being sought in one complete process. Each of three techniques were compared based on their performance in detecting the P wave, QRS complex and T wave in addition to onset and offset markers for 3000 cardiac cycles.

RESULTS

Results indicated that the approach of multi-component based cross correlation exceeded the performance of the two benchmarking techniques by firstly correctly detecting more cardiac cycles and secondly provided the most accurate marker insertion in 7 out of the 8 categories tested.

CONCLUSION

The main benefit of the multi-component based cross correlation algorithm is seen to be firstly its ability to successfully detect cardiac cycles and secondly the accurate insertion of the beat markers based on pre-defined values as opposed to performing individual gradient searches for wave onsets and offsets following fiducial point location.

摘要

背景

心电图的计算机处理的第一阶段是心搏检测。这涉及识别所有心动周期并确定每个可识别波形成分的起始和结束位置。心搏检测的准确性对整体分类性能有重大影响,因此仍在努力改进这一过程。

方法

基于互相关原理提出了一种新的心搏检测方法,并与非句法和互相关心搏检测这两种基准方法进行比较。新方法可被视为传统互相关的基于多成分的变体,其中各个波间成分是单独寻找的,而不是在一个完整过程中寻找。除了对3000个心动周期的P波、QRS复合波和T波以及起始和结束标记进行检测外,还基于三种技术的性能对它们进行了比较。

结果

结果表明,基于多成分的互相关方法在性能上超过了两种基准技术,首先正确检测到更多的心动周期,其次在测试的8个类别中的7个类别中提供了最准确的标记插入。

结论

基于多成分的互相关算法的主要优点首先在于其成功检测心动周期的能力,其次在于基于预定义值准确插入心搏标记,而不是在基准点定位后对波的起始和结束进行单独的梯度搜索。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2907/497048/48e962bc86df/1475-925X-3-26-1.jpg

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