ENAP RG, Department of Biomedical Engineering, Faculty of Engineering, Autonomous University of Queretaro, Queretaro 76144, Mexico.
ENAP RG, Department of Electromechanical Engineering, Faculty of Engineering, Autonomous University of Queretaro, San Juan del Rio, Queretaro 76807, Mexico.
Sensors (Basel). 2019 Dec 18;20(1):9. doi: 10.3390/s20010009.
Heart diseases are among the most common death causes in the population. Particularly, sudden cardiac death (SCD) is the cause of 10% of the deaths around the world. For this reason, it is necessary to develop new methodologies that can predict this event in the earliest possible stage. This work presents a novel methodology to predict when a person can develop an SCD episode before it occurs. It is based on the adroit combination of the empirical mode decomposition, nonlinear measurements, such as the Higuchi fractal and permutation entropy, and a neural network. The obtained results show that the proposed methodology is capable of detecting an SCD episode 25 min before it appears with a 94% accuracy. The main benefits of the proposal are: (1) an improved detection time of 25% compared with previously published works, (2) moderate computational complexity since only two features are used, and (3) it uses the raw ECG without any preprocessing stage, unlike recent previous works.
心脏病是人群中最常见的死亡原因之一。特别是,心源性猝死(SCD)是全球 10%的死亡原因。因此,有必要开发新的方法,以便能够在最早的阶段预测这种事件。这项工作提出了一种新的方法来预测一个人在发生 SCD 之前何时会发生 SCD 发作。它基于经验模态分解、非线性测量(如 Higuchi 分形和排列熵)和神经网络的巧妙组合。获得的结果表明,所提出的方法能够在 SCD 发作前 25 分钟检测到 SCD 发作,准确率为 94%。该建议的主要优点是:(1)与以前发表的工作相比,检测时间提高了 25%,(2)计算复杂度适中,因为仅使用了两个特征,(3)与最近的先前工作不同,它使用原始 ECG 而无需任何预处理阶段。