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Meta Learning Ensemble Technique for Diagnosis of Cardiac Autonomic Neuropathy Based on Heart Rate Variability Features

机译:基于心率变异特征的META学习合奏诊断心脏自主神经病变的诊断技术

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Heart Rate Variability (HRV) attributes form an important set of tests, usually collected for patients with different kinds of pathology such as diabetes, kidney disease and cardiovascular disease. The aim of this study was to examine the role of HRV attributes for improving the diagnosis of Cardiac Autonomic Neuropathy (CAN). We investigated the performance of various base classifiers for the most essentials features for CAN combined with the HRV attributes. To get the optimal subset of features, we used a feature selection method based on mean decrease accuracy (MDA), which is implemented in the Random Forest classifier. Random Forest consistently outperformed all other base classifiers. A number of ensemble classifiers have also been investigated using Random Forest to enhance the diagnosis of CAN when Ewing battery tests were combined with HRV attributes. The results improved classification accuracy compared to existing classifiers with the best results obtained by AdaBoostM and MultBoost ensembles.
机译:心率变异性(HRV)属性形成了一系列重要的测试,通常为糖尿病,肾病和心血管疾病等不同种类病理学的患者收集。本研究的目的是探讨HRV属性的作用,以改善心脏自主神经病变(CAN)的诊断。我们调查了各种基本分类器的性能,以满足最重要的功能,可以与HRV属性相结合。为了获得最佳特征子集,我们使用了基于平均值的特征选择方法来降低精度(MDA),该方法在随机林分类器中实现。随机森林始终如一地优于所有其他基本分类器。还使用随机森林研究了许多集成分类剂,以增强电池测试与HRV属性相结合时可以的诊断。结果改善了与现有分类器相比的分类准确性,具有由Adaboostm和Multiboost集合获得的最佳结果。

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