心电信号处理子系统中房颤体征确定神经网络模型的建立

Y. Chelebaeva
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引用次数: 1

摘要

实时心律分析的任务是发现早期心律失常,以便治疗和预防危及生命的心律失常。为了解决基于心律图处理的心律特征分类问题,可以使用人工神经网络装置。房颤是最危险的心律失常之一。因此,为处理心电信号的子系统开发一种确定心房颤动特征的神经网络模型,适合在可编程逻辑基础上实现,是一项紧迫的任务。目的:开发一种神经网络模型,用于在可编程逻辑的基础上为具有高可靠性和实现可能性的信号处理子系统确定房颤特征。建立了一种用于房颤特征确定的神经网络模型,该模型在现场可编程门阵列(FPGA)上实现时具有高可靠性和低硬件成本的特点。对心房颤动体征确定的神经网络模型进行了程序建模。基于FPGA实现了基于硬件描述语言VHDL的心房颤动特征识别神经网络模型,并应用于心电信号处理子系统。研究结果表明,该模型可用于构建实时心律控制系统,既可用于监测已诊断的心血管疾病,特别是重症监护病房,也可用于高危人群心律失常的预防和早期诊断。
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Development of neural network model for signs determination of atrial fibrillation for subsystem of cardiorhythmogram signals processing
Task of the analysis of a cardio rhythm in real time is detection of early arrhythmias for the purpose of their treatment and prevention of life-endangering arrhythmias. In order to solve the problem of classification of heart rhythm features based on cardiorhythmogram processing, an apparatus of artificial neural networks can be used. One of the most dangerous arrhythmias is atrial fibrillation. Therefore, the development of a neural network model for determining atrial fibrillation features, suitable for implementation on the programmable logic basis, for a subsystem for processing cardiorhythmogram signals is an urgent task. Purpose – development of a neural network model for determining atrial fibrillation features for a signal processing subsystem characterized by high reliability and the implementation possibility on the basis of programmable logic. A neural network model for features determining of atrial fibrillation has been developed, characterized by high reliability and insignificant hardware costs when implemented on field programmable gate arrays (FPGA). Program modeling of neural network model for signs determination of atrial fibrillation is performed. A neural network model for characteristics determining of atrial fibrillation on hardware description language VHDL for use in the signal processing subsystem of a cardiorhythmogram based on FPGA was implemented. The findings suggest that the proposed model can be used in the construction of real-time heart rhythm control systems both for monitoring already diagnosed cardiovascular diseases, especially in intensive care wards, and for the prevention and early diagnosis of arrhythmias in individuals at high myocardial risk.
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