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Arrhythmia Classification Method Based on Feature Selection

A technology of arrhythmia and classification methods, applied in the field of pattern recognition, can solve problems such as increasing the amount of calculation, destroying the feature space, and high dimensionality, achieving the effect of reducing dimensionality and improving accuracy

Active Publication Date: 2019-10-15
TIANJIN UNIV
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AI Technical Summary

Problems solved by technology

[0005] The features extracted by the time-frequency method are often of high dimensionality, which not only increases the amount of calculation, but also has a negative impact on the classification performance.
The method of reducing the feature dimension is divided into two categories: feature extraction and feature selection. The feature extraction method destroys the original feature space and will reduce the classification effect.

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  • Arrhythmia Classification Method Based on Feature Selection
  • Arrhythmia Classification Method Based on Feature Selection
  • Arrhythmia Classification Method Based on Feature Selection

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Embodiment Construction

[0016] The present invention combines the respective advantages of morphological features and time-frequency features and forms complements in feature extraction. Although the time domain analysis cannot extract the hidden features of the signal, the morphological features are the main method for experts to judge the type of arrhythmia, so the time domain feature is an important and effective feature for identifying arrhythmia. Time-frequency features can extract local features of ECG signals that cannot be extracted by time-domain or frequency-domain methods, and can simultaneously represent the relationship between ECG time and frequency, revealing the hidden features of ECG signals. Therefore, two kinds of features, morphological feature and time-frequency feature, are extracted and formed into the original feature vector. Feature selection combines the advantages of Filter-style and Wrapper-style feature selection algorithms. That is, the filter-type feature selection is ...

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Abstract

The invention relates to a feature selection-based arrhythmia classification method. The method comprises the following steps: preprocessing an ECG (electrocardiograph) signal; extracting a morphological feature and a time-frequency feature according to a detected position R, and constructing an original feature vector; calculating feature weights, namely calculating the weight of each feature in the original feature vector by using a Relief algorithm; instructing a population to be initialized according to the feature weights, respectively performing selection, crossover and mutation operation according to a selection probability, a crossover probability and a mutation probability according to the adaptation degree of an individual to obtain a next generation, repeating the operation until the maximum number of iteration times termination condition is met, and then outputting the individual with the highest adaptation degree as an optimal feature; and enabling a plurality of di-classifiers to form an identification classifier through a multi-classification strategy to realize identification of various arrhythmias. According to the feature selection-based arrhythmia classification method, the dimensions of the features can be reduced and the accuracy of identification of the various arrhythmias can be improved.

Description

technical field [0001] The invention belongs to the field of pattern recognition, and particularly relates to the task of extracting electrocardiogram signal features and combining with feature selection to solve various arrhythmia recognition tasks. Background technique [0002] The long-term existence of arrhythmia will cause serious heart disease. The detection of cardiac arrhythmias becomes important due to the high mortality rate of cardiac disease. Experts detect arrhythmias by analyzing ECG, but analyzing ECG records for a long time is time-consuming and tedious, and it is difficult to accurately identify small morphological changes in ECG signals through human eyes, so experts may lose or mistake important information during diagnosis. Therefore, an efficient and accurate computer-aided diagnosis system is needed to assist doctors in detecting arrhythmia. The arrhythmia classification method includes four steps: preprocessing, feature extraction, feature dimensiona...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): A61B5/0402
CPCA61B5/7264A61B5/316A61B5/318
Inventor 吕卫邓为贤褚晶辉
Owner TIANJIN UNIV
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