基于神经-模糊混合网络的心源性猝死风险检测

A.Z.H. Gerardo, R. Antonio
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引用次数: 11

摘要

在工业化国家,心血管疾病是导致死亡的主要原因。在我们这个时代,提高诊断和治疗的努力是高度发达的。一种无创技术是分析心率变异性(HRV),通常来自24小时的心电图记录(ECG)。HRV是测量两个连续QRS复合物R峰之间的间隔(RR间隔)。采用自适应滤波器消除肌肉源噪声信号和皮肤电极运动信号。最后,计算功率谱密度(PSD),滤波表征HRV的三个频段的信号:高频(HF)、低频(LF)和极低频(VLF)。该模型包括时域和频域输入。我们提出将神经网络与模糊逻辑系统相结合的应用,允许量化和表征HRV,帮助识别患有心脏问题的低概率和高概率(风险)患者。培训程序,其参数和应用的细节已经制定。结果表明,这种混合网络适合于心脏高/低风险患者的识别。仿真环境可以被认为是生物医学工程特别是心脏病学开发方法的有力工具
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cardiac Sudden Death Risk Detection Using Hybrid Neuronal-Fuzzy Networks
The cardiovascular diseases are the main cause of mortality in the industrialized world. The efforts to improve the diagnosis and the therapy in our days are highly developed. A noninvasive technique is the analysis of HRV (Heart Rate Variability) often from electrocardiography records (ECG) of 24 hours. HRV is the measurement of the interval between R peaks of two consecutive QRS complexes (RR intervals). An adaptive filter is used to eliminate the noise signals from muscular origin and signals from movements of the electrodes on the skin. Finally, power spectral density (PSD) are computed, filtering the signals in the three bands that characterize the HRV: high frequencies (HF), low frequencies (LF) and the very low frequencies (VLF). The model includes inputs from the time and frequency domain. We propose the application of combined neuronal networks with fuzzy logic systems that allow the quantification and characterization of the HRV, helping the identification of patients with low and high probability (risk) of undergoing a cardiac problem. The training procedure, its parameters and details of the application have been developed. The results suggest that this kind of hybrid network is suitable for the identification of patients with high/low cardiac risk. The simulation environment can be considered as a powerful tool for development methods in biomedical engineering particularly in cardiology
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