首页> 外文会议>IEEE-EMBS Conference on Biomedical Engineering and Sciences >Automatic Segmentation and Extraction of Features from Human Respired Carbon Dioxide Waveform
【24h】

Automatic Segmentation and Extraction of Features from Human Respired Carbon Dioxide Waveform

机译:人类呼吸二氧化碳波形自动分割和提取特征

获取原文

摘要

Automated selection and segmentation of human respired carbon dioxide (CO2) waveform is highly in need as measurable indices from the CO2 waveform, could allow an indirect assessment of asthma. Previous studies employed manual and time-setting as criteria for the selection and partitioned of the CO2 waveform, which may be a source of bias. Thus, despite many studies, which show a good correlation between CO2 signal's indices and a spirometer parameter, monitoring of asthma has not yet become part of clinical practice. Herein, we propose an algorithm for automated selection and segmentation of the CO2 waveform. CO2 waveforms were recorded from 30 asthma and 20 non-asthma. We computationally extracted four physiologically based CO2 signal indices from each segmented phase. Further, the usefulness of indices and analysis of segmented phases of the CO2 signal was assessed by measuring the area (Az) under receiver operating characteristics (ROC) curve. Here, each breath cycle was considered valid based on power spectral density, frequency resolution, and end-tidal CO2, which was estimated by the max-min algorithm. In addition, we found that features extracted from all the segmented part were statistically significant except the combination of upper expiratory and alveolar. However, the strongest were found with the part of the upward expiratory phase (11-15mmHg) for the discrimination of asthma and non-asthma with an Az, ranges from 0.96 (95% CI: 0.92-1) to 0.97 (95% CI: 0.92-1). Thus, the presented algorithm has the potential to implement in real time for the automatic differentiation of non-asthma and asthma.
机译:自动化选择和人类呼吸二氧化碳的分割(CO 2 )波形非常需要作为来自CO的可测量指数 2 波形,可以允许间接评估哮喘。以前的研究采用了手动和时间设置为CO的选择和分区的标准 2 波形,可能是偏差源。因此,尽管有很多研究,但在CO之间表现出良好的相关性 2 信号的指数和肺活量计参数,监测哮喘尚未成为临床实践的一部分。在此,我们提出了一种用于自动化选择和CO的分割算法 2 波形。 CO. 2 波形从30个哮喘和20个非哮喘记录。我们在计算上提取了四个生理基础的CO 2 来自每个分段阶段的信号指数。此外,CO分段阶段指数和分析的有用性 2 通过测量接收器操作特性(ROC)曲线下的区域(AZ)来评估信号。在这里,基于功率谱密度,频率分辨率和终端共同CO,考虑每个呼吸循环。 2 ,由MAX-MIN算法估计。此外,除了上呼气和肺泡的组合,我们发现从所有分段部分提取的特征是统计学意义的。然而,在哮喘歧视哮喘和非哮喘的抗呼吸阶段(11-15mmHg)部分中发现最强的最强大的是,从0.96(95%CI:0.92-1)到0.97(95%CI)的范围:0.92-1)。因此,所呈现的算法具有实时实施的潜力,用于自动分化非哮喘和哮喘。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号