Department of Computational Science, National Institute of Astrophysics, Optics, and Electronics, Santa Maria Tonantzintla, Puebla 72840, Mexico.
Department of Electronics, National Institute of Astrophysics, Optics, and Electronics, Santa Maria Tonantzintla, Puebla 72840, Mexico.
Sensors (Basel). 2021 Nov 18;21(22):7666. doi: 10.3390/s21227666.
Sudden Cardiac Death (SCD) is an unexpected sudden death due to a loss of heart function and represents more than 50% of the deaths from cardiovascular diseases. Since cardiovascular problems change the features in the electrical signal of the heart, if significant changes are found with respect to a reference signal (healthy), then it is possible to indicate in advance a possible SCD occurrence. This work proposes SCD identification using Electrocardiogram (ECG) signals and a sparse representation technique. Moreover, the use of fixed feature ranking is avoided by considering a dictionary as a flexible set of features where each sparse representation could be seen as a dynamic feature extraction process. In this way, the involved features may differ within the dictionary's margin of similarity, which is better-suited to the large number of variations that an ECG signal contains. The experiments were carried out using the ECG signals from the MIT/BIH-SCDH and the MIT/BIH-NSR databases. The results show that it is possible to achieve a detection 30 min before the SCD event occurs, reaching an an accuracy of 95.3% under the common scheme, and 80.5% under the proposed multi-class scheme, thus being suitable for detecting a SCD episode in advance.
心源性猝死(Sudden Cardiac Death,SCD)是指由于心脏功能丧失而导致的意外突然死亡,占心血管疾病死亡人数的 50%以上。由于心血管问题会改变心脏电信号的特征,如果相对于参考信号(健康)发现显著变化,则有可能提前指示可能发生 SCD。本工作使用心电图(ECG)信号和稀疏表示技术来识别 SCD。此外,通过将字典视为一组灵活的特征集,可以避免使用固定的特征排序,其中每个稀疏表示都可以看作是一个动态的特征提取过程。通过这种方式,涉及的特征在字典的相似性范围内可能会有所不同,这更适合 ECG 信号中包含的大量变化。实验使用了来自 MIT/BIH-SCDH 和 MIT/BIH-NSR 数据库的 ECG 信号。结果表明,有可能在 SCD 事件发生前 30 分钟进行检测,在常见方案下达到 95.3%的准确率,在提出的多类方案下达到 80.5%的准确率,因此适用于提前检测 SCD 发作。