An interactive framework for an analysis of ECG signals

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摘要

In this study, we introduce and discuss a development of a highly interactive and user-friendly environment for an ECG signal analysis. The underlying neural architecture being a crux of this environment comes in the form of a self-organizing map. This map helps discover a structure in a set of ECG patterns and visualize a topology of the data. The role of the designer is to choose from some already visualized regions of the self-organizing map characterized by a significant level of data homogeneity and substantial difference from other regions. In the sequel, the regions are described by means of information granules—fuzzy sets that are essential in the characterization of the main relationships existing in the ECG data. The study introduces an original method of constructing membership functions that incorporates class membership as an important factor affecting changes in membership grades. The study includes a comprehensive descriptive modeling of highly dimensional ECG data.

论文关键词:Information granulation,Fuzzy sets,User-interactive models of data,Self-organizing maps,Computerized ECG signal analysis and classification,Data mining,Noninvasive data analysis

论文评审过程:Received 13 June 2001, Revised 23 September 2001, Accepted 13 October 2001, Available online 6 December 2001.

论文官网地址:https://doi.org/10.1016/S0933-3657(01)00096-3