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A comparative study of various classifiers for automated sleep apnea screening based on single-lead electrocardiogram

机译:基于单引灯心电图的自动睡眠呼吸暂停筛选的各种分类器的比较研究

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Computerized sleep apnea detection is necessary to alleviate the onus of physicians of analyzing a high volume of data. The overall performance of an automated apnea detection scheme greatly depends of the choice of classifier. Most of the existing works focus on the feature extraction part. The effect of various classification models is poorly studied. In the present work, we employ statistical moment based features and Empirical Mode Decomposition to devise a feature extraction scheme. Furthermore, we study the performance of nine well-know classifiers for this feature extraction scheme- naive bayes, kNN, neural network, AdaBoost, Bagging, random forest, extreme learning machine (ELM), discriminant analysis and restricted boltzmann machine. The optimal choice of parameters of each of the classifiers is also studied. This study suggests that ELM is a promising classification model for automated sleep apnea detection.
机译:计算机化睡眠呼吸暂停检测是为了缓解分析大量数据的医生的责任。自动呼吸暂停检测方案的整体性能大大取决于分类器的选择。大多数现有的工作都侧重于特征提取部分。各种分类模型的效果尚未研究。在本作本作中,我们采用基于统计时刻的特征和经验模式分解来设计特征提取方案。此外,我们研究了这一特征提取方案的九分类器的性能 - 朴素的贝叶斯,KNN,神经网络,ADABOOST,袋装,随机森林,极端学习机(ELM),判别分析和限制Boldzmann机器。还研究了每个分类器的最佳选择。本研究表明,ELM是一个有望的自动睡眠呼吸暂停检测的分类模型。

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