用于心电统计特征分析的抗噪声心电复合体分类算法

I. Kondratyeva, A. Krasichkov, F. Shikama, E. Nifontov
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引用次数: 0

摘要

据世界卫生组织称,心血管疾病是世界范围内导致死亡的主要原因,因此准确及时地诊断心血管疾病是一项重要任务。诊断心血管疾病最常见和最有效的方法之一是使用动态心电图监测记录心电图。为了显著减少解密ECS记录所需的时间,心脏病专家需要特殊的程序来自动分析心电图。这对于长期监测任务尤其重要。起搏器的自动分析程序应该执行心脏复合体的聚类,从而将心电图划分为单个心脏复合体的组。只有从每个这样的组中统计平均得到的参考心脏复合体才进行进一步的分析。在登记心电图时,会出现各种物理来源的干扰,使ECS分析显着复杂化的伪影,因此,自动化分析程序也必须对心电图进行初步处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise-Resistant Algorithm for Sorting Cardio Complexes for the Task of Analyzing Statistical Characteristics of ECG
According to the WHO, cardiovascular diseases are the leading cause of death worldwide, so an accurate and timely diagnosis of cardiovascular diseases is an important task. One of the most common and effective methods for diagnosing CVD is to record an electrocardiogram using Holter monitoring. In order to significantly reduce the time required to decrypt the recording of ECS, cardiologists need special programs for automated analysis of the electrocardiogram. This is especially important for the long-term monitoring task. The program for the automated analysis of pacemakers should perform the clustering of cardiac complexes, thus dividing the electrocardiogram into groups of individual cardiac complexes. Only reference cardiocomplexes obtained by statistical averaging from each such group are subjected to further analysis. When registering an electrocardiogram, interference of various physical origins arises, artifacts that significantly complicate the analysis of ECS, therefore, automated analysis programs must also carry out preliminary processing of the electrocardiogram.
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