基于知识的LabVIEW心脏信号分析方法

K. Narayana, A. Rao
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引用次数: 4

摘要

基于虚拟仪器技术的各种心脏/换能器信号的数据采集和分析越来越受到重视。本文介绍了一种利用心电图分析信息开发的专家系统来实现心脏疾病自动诊断的新方法,并提供了对心脏病患者的在线监测。心脏病专家使用心电图作为人类心脏状况的明确指标,使用某些明确的规则和他们自己的经验来诊断患者的病情。决策过程通过开发一种可视化工具,使用经过验证的算法来处理典型心电图中包含的信息,从而使决策过程系统化。这些信息对全科医生有很大的帮助,可以确定具体的问题并立即开始治疗。该系统提供了一个快速有效的问题诊断。通过对专家知识进行编码,并将其与实时心电图连接起来,这已经成为可能。该系统具有快速更新功能,可以跟踪任何快速恶化,如果发生,因此有助于监测ICU患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A knowledge-based approach to cardiac signal analysis using LabVIEW
Data acquisition and analysis of various cardiac /transducer signals based on virtual instrument technology is gaining importance. This paper introduces a novel way of automating the diagnosis of cardiac disorders using an expert system developed on the basis of information derived from the analysis of Electrocardiogram (ECG) and also provides the online monitoring of cardiac patient. Cardiologists use ECG as a definitive indicator of the condition of the human heart using certain well-defined rules and their own experience to diagnose the condition of patient. The decision process is made systematic by developing a visualization tool using proven algorithm for processing the information contained in the typical ECG. The information can be of great help to a general practitioner, to identify the specific problem and start treatment without any delay. The proposed system provides a fast and effective diagnosis of the problem. This has been possible by encoding the expert knowledge and interfacing it with real time ECG available. The system has fast updating facility to track any rapid deterioration, if it occurs and is thus helpful to monitor patients in ICU.
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