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Single-Feature Method for Fast Atrial Fibrillation Detection in ECG Signals

机译:心电图信号中快速心房颤动检测的单一特征方法

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Atrial fibrillation (AF) is the most common arrhythmia in adults and is associated with a higher risk of heart failure or death. Here, we introduce simple and efficient method for automatic AF detection based on symbolic dynamics and Shannon entropy. This method comprises of three parts. Firstly, QRS complex detection is provided, than the raw RR sequence is transformed into a sequence of specific symbols and subsequently into a word sequence and finally, Shannon entropy of the word sequence is calculated. According to the value of Shannon entropy, it is decided, whether AF is present in the current cardiac beat. We achieved sensitivity Se=96.32% and specificity Sp=98.61% on MIT-BIH Atrial Fibrillation database, Se=91.30% and Sp=90.8% on MIT-BIH Arrhythmia database, Se=95.6% and Sp=80.27% for Long Term Atrial Fibrillation database and Se=93.04% and Sp=87.30% for CinC Challenge database 2020. The achieved results of our one-feature method are comparable with other authors of more complicated and computationally expensive methods. Our ECG experts found that public databases contain errors in annotations (in sense of AF). It means that results are affected by errors in annotations. Many errors were found in Long-Term AF database, several also in MIT-BIH AF database and MIT-BIH Arrhythmia database. Testing algorithms on poorly annotated databases cannot bring reliable results and algorithms useful in real medical practice. The examples of such annotations are reported in this study.
机译:心房颤动(AF)是成人中最常见的心律失常,与心力衰竭或死亡的风险更高。在这里,我们介绍了基于符号动态和香农熵的自动AF检测简单有效的方法。该方法包括三个部分。首先,提供QRS复杂检测,而不是将原始RR序列转换为特定符号的序列,随后进入单词序列,最后,计算单词序列的Shannon熵。根据香农熵的价值,决定,无论AF是否存在于目前的心跳中。我们在MIT-BIH心房颤动数据库中达到敏感性SE = 96.32%和98.61%,SE = 91.30%,SP = 91.30%,SE = 90.8%,SE = 95.6%和SP = 80.27%的长期心房纤维化数据库和SE = 93.04%和SP = CINC挑战数据库2020的SP = 87.30%。我们的一个特征方法的达到结果与其他作者相当的更复杂和计算昂贵的方法。我们的ECG专家发现,公共数据库包含注释中的错误(在AF)中。这意味着结果受到注释中的错误的影响。在MIT-BIH AF数据库和MIT-BIH心律失常数据库中,在长期AF数据库中发现了许多错误。在不良注释的数据库上的测试算法不能带来可靠的结果和算法在实际医疗实践中。本研究报告了这种注释的实例。

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