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On-Line Detection of Apnea/Hypopnea Events Using SpO$_{bf 2}$ Signal: A Rule-Based Approach Employing Binary Classifier Models

机译:使用SpO $ _ {bf 2} $信号进行的呼吸暂停/呼吸不足事件在线检测:采用二元分类器模型的基于规则的方法

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摘要

This paper presents an online method for automatic detection of apnea/hypopnea events, with the help of oxygen saturation (SpO$_{2}$) signal, measured at fingertip by Bluetooth nocturnal pulse oximeter. Event detection is performed by identifying abnormal data segments from the recorded SpO$_{2}$ signal, employing a binary classifier model based on a support vector machine (SVM). Thereafter the abnormal segment is further analyzed to detect different states within the segment, i.e., steady, desaturation, and resaturation, with the help of another SVM-based binary ensemble classifier model. Finally, a heuristically obtained rule-based system is used to identify the apnea/hypopnea events from the time-sequenced decisions of these classifier models. In the developmental phase, a set of 34 time domain-based features was extracted from the segmented SpO$_{2}$ signal using an overlapped windowing technique. Later, an optimal set of features was selected on the basis of recursive feature elimination technique. A total of 34 subjects were included in the study. The results show average event detection accuracies of 96.7% and 93.8% for the offline and the online tests, respectively. The proposed system provides direct estimation of the apnea/hypopnea index with the help of a relatively inexpensive and widely available pulse oximeter. Moreover, the system can be monitored and accessed by physicians through LAN/WAN/Internet and can be extended to deploy in Bluetooth-enabled mobile phones.
机译:本文介绍了一种在线检测呼吸暂停/呼吸不足事件的在线方法,该方法借助氧饱和度(SpO $ _ {2} $)信号(通过蓝牙夜间脉搏血氧仪在指尖测量)。通过使用基于支持向量机(SVM)的二进制分类器模型从记录的SpO $ _ {2} $信号中识别异常数据段来执行事件检测。此后,借助于另一个基于SVM的二元集成分类器模型,进一步分析异常段以检测段内的不同状态,即稳定,去饱和和重新饱和。最后,使用启发式获得的基于规则的系统从这些分类器模型的时间顺序决策中识别呼吸暂停/呼吸不足事件。在开发阶段,使用重叠窗口技术从分段的SpO $ _ {2} $信号中提取了一组34个基于时域的特征。后来,基于递归特征消除技术选择了一组最佳特征。该研究总共包括34名受试者。结果显示,离线测试和在线测试的平均事件检测准确度分别为96.7%和93.8%。所提出的系统借助于相对便宜且广泛可用的脉搏血氧仪来直接估计呼吸暂停/呼吸不足指数。此外,该系统可以由医生通过LAN / WAN / Internet进行监视和访问,并且可以扩展为部署在支持蓝牙的手机中。

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