一种基于心电信号非线性特征提取的心源性猝死早期预测方法。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Fatemeh Danesh Jablo, Hamed Danandeh Hesar
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引用次数: 0

摘要

心源性猝死(SCD)是一种严重的心血管疾病,每年影响全球约300万人,通常在没有明显症状的情况下发生。虽然SCD的确切病因仍然难以捉摸,但心室颤动被认为在其病理生理中起着关键作用。鉴于症状通常在事件发生前一小时才出现,及时预测对有效的心脏复苏至关重要。本研究旨在利用心电信号的时频分析来预测SCD。我们使用了两个在线数据集:心源性猝死动态心电图数据集和MIT-BIH正常窦性心律数据集。我们提出的方法包括将心室颤动前60分钟的间隔分割为1分钟的片段,然后使用经验模式分解(EMD)将其分解为时间-频率子带。从这些分解的信号中提取非线性特征,然后使用支持向量机(SVM)和k近邻(KNN)算法进行分类。为了提高分类精度,我们采用了两种统计特征选择技术:t检验和方差分析。结果表明,ANOVA特征选择方法结合SVM和KNN算法对SCD的预测具有较高的准确性。具体来说,ANOVA-SVM和ANOVA-KNN对SCD前60分钟的平均准确率分别为93.51%和93%。通过t检验特征选择,SVM的平均准确率为93.29%,KNN的平均准确率为93.41%。这些发现证明了我们提出的方法在预测SCD方面有希望的表现,可能有助于改善早期干预策略和患者预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel method for early prediction of sudden cardiac death through nonlinear feature extraction from ECG signals.

Sudden cardiac death (SCD) is a critical cardiovascular issue affecting approximately 3 million individuals globally each year, often occurring without prior noticeable symptoms. While the precise etiology of SCD remains elusive, ventricular fibrillation is believed to play a pivotal role in its pathophysiology. Given that symptoms typically manifest only an hour before the event, timely prediction is crucial for effective cardiac resuscitation. This study aims to predict SCD using time-frequency analysis of ECG signals. We utilized two online datasets: the Sudden Cardiac Death Holter dataset and the MIT-BIH Normal Sinus Rhythm dataset. Our proposed method involves segmenting the 60-min interval preceding ventricular fibrillation into one-minute segments, which are then decomposed into time-frequency sub-bands using empirical mode decomposition (EMD). Nonlinear features are extracted from these decomposed signals, followed by classification using support vector machines (SVM) and K-nearest neighbors (KNN) algorithms. To enhance classification accuracy, we employed two statistical feature selection techniques: T-test and ANOVA. Results indicate that using the ANOVA feature selection method in conjunction with SVM and KNN algorithms achieves high accuracy in predicting SCD. Specifically, the average accuracy rates for the 60 min preceding SCD were 93.51% for ANOVA-SVM and 93% for ANOVA-KNN. With T-test feature selection, the average accuracy rates were 93.29% for SVM and 93.41% for KNN. These findings demonstrate the promising performance of our proposed approach in predicting SCD, potentially contributing to improved early intervention strategies and patient outcomes.

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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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