Research on the ICU Heart Rate Monitoring Based on the Markov Model

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Abstract:

Every minute heartbeat cycle number is vital important signals, the vital signs of ICU patient are an important reference index that is diagnose and treated by doctor, and heart rate monitoring is very important work in ECG monitoring. First of all, the generation and development of the Markov model are introduced, and the analysis of ICU heart rate monitoring, on this basis, to build intensive care heart rate monitoring analysis model based on the Markov model, so as to get scientific heart rate estimation and to provide data support for physicians comprehensive analysis, and to a certain extent, to provide a theoretical support and practical new method for this field research.

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474-478

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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