An integrated intelligent computing method for the detection and interpretation of ECG based cardiac diseases

Babita Pandey, R. B. Mishra
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引用次数: 12

Abstract

Intelligent computing system and knowledge-based system have been widely used in the diagnosis and classification of ECG based diseases. Several detection methods of ECG parameters for a particular disease have also been reported in the literature. But little effort has been made by researchers to combine both. In this work, an integrated model of rule base system for generating cases and ANN methods for matching cases in the case base reasoning model for the interpretation and diagnosis of sinus disturbances (SD) is developed. The SD is hierarchically structured in terms of their physio-psycho parameters and ECG based parameters. Cumulative confidence factor (CCF) is computed at different nodes of hierarchy. The SD considered are sinus arrest, sinus bradycardia, sinus tachycardia and sinus arrhythmia. MIT/BIH ECG database is used in the simulation study. The basic objective of this work is to enhance the computational effort with certain level of efficiency and accuracy.
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一种基于ECG的心脏疾病检测与解释的集成智能计算方法
智能计算系统和基于知识的系统已广泛应用于心电疾病的诊断和分类。几种检测方法的心电图参数的特定疾病也已报道在文献中。但研究人员很少努力将两者结合起来。在这项工作中,开发了一个用于生成案例的规则库系统模型和用于匹配案例的人工神经网络方法的案例库推理模型,用于解释和诊断窦性紊乱(SD)。根据他们的生理-心理参数和基于ECG的参数,SD是分层结构的。在不同的层次节点上计算累积置信因子(CCF)。考虑的SD包括窦性骤停、窦性心动过缓、窦性心动过速和窦性心律失常。仿真研究采用MIT/BIH心电数据库。本工作的基本目标是在一定的效率和精度下提高计算量。
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