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Application of machine learning techniques to analyse the effects of physical exercise in ventricular fibrillation

机译:机器学习技术在体育锻炼对心室纤颤影响分析中的应用

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摘要

This work presents the application of machine learning techniques to analyse the influence of physical exercise in the physiological properties of the heart, during ventricular fibrillation. To this end, different kinds of classifiers (linear and neural models) are used to classify between trained and sedentary rabbit hearts. The use of those classifiers in combination with a wrapper feature selection algorithm allows to extract knowledge about the most relevant features in the problem. The obtained results show that neural models outperform linear classifiers (better performance indices and a better dimensionality reduction). The most relevant features to describe the benefits of physical exercise are those related to myocardial heterogeneity, mean activation rate and activation complexity.
机译:这项工作提出了机器学习技术的应用,以分析心室纤颤期间体育锻炼对心脏生理特性的影响。为此,使用了不同种类的分类器(线性模型和神经模型)对经过训练的和久坐的兔子心脏进行分类。这些分类器与包装器特征选择算法结合使用,可以提取有关问题中最相关特征的知识。获得的结果表明,神经模型优于线性分类器(更好的性能指标和更好的降维效果)。描述体育锻炼益处的最相关特征是那些与心肌异质性,平均激活率和激活复杂性有关的特征。

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