Apneic Events Detection Using Different Features of Airflow Signals

Fatma Zehra Gogus, G. Tezel
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引用次数: 1

Abstract

Apneic-event based sleep disorders are very common and affect greatly the daily life of people. However, diagnosis of these disorders by detecting apneic events are very difficult. Studies show that analyzes of airflow signals are effective in diagnosis of apneic-event based sleep disorders. According to these studies, diagnosis can be performed by detecting the apneic episodes of the airflow signals. This work deals with detection of apneic episodes on airflow signals belonging to Apnea-ECG (Electrocardiogram) and MIT (Massachusetts Institute of Technology) BIH (Bastons’s Beth Isreal Hospital) databases. In order to accomplish this task, three representative feature sets namely classic feature set, amplitude feature set and descriptive model feature set were created. The performance of these feature sets were evaluated individually and in combination with the aid of the random forest classifier to detect apneic episodes. Moreover, effective features were selected by OneR Attribute Eval Feature Selection Algorithm to obtain higher performance. Selected 28 features for Apnea-ECG database and 31 features for MITBIH database from 54 features were applied to classifier to compare achievements. As a result, the highest classification accuracies were obtained with the usage of effective features as 96.21% for Apnea-ECG database and 92.23% for MIT-BIH database. Kappa values are also quite good (91.80 and 81.96%) and support the classification accuracies for both databases, too. The results of the study are quite promising for determining apneic events on a minute-by-minute basis.
利用气流信号的不同特征检测呼吸暂停事件
以呼吸暂停事件为基础的睡眠障碍非常普遍,对人们的日常生活影响很大。然而,通过检测窒息事件来诊断这些疾病是非常困难的。研究表明,对气流信号的分析是诊断基于呼吸暂停事件的睡眠障碍的有效方法。根据这些研究,可以通过检测气流信号的窒息发作来进行诊断。这项工作涉及到呼吸暂停- ecg(心电图)和MIT(麻省理工学院)BIH(巴斯顿的贝斯以色列医院)数据库中气流信号的呼吸暂停发作检测。为了完成这一任务,创建了经典特征集、幅度特征集和描述性模型特征集三个具有代表性的特征集。这些特征集的性能被单独评估,并结合随机森林分类器的帮助来检测呼吸暂停发作。利用OneR属性评估特征选择算法选择有效特征,以获得更高的性能。从54个特征中选取呼吸暂停-心电图数据库中的28个特征和MITBIH数据库中的31个特征用于分类器,比较分类结果。结果表明,在使用有效特征的情况下,Apnea-ECG数据库的分类准确率最高,为96.21%,MIT-BIH数据库的分类准确率为92.23%。Kappa值也相当不错(分别为91.80和81.96%),也支持两个数据库的分类精度。这项研究的结果很有希望在每分钟的基础上确定呼吸暂停事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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