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Characterization of Cardiac and Respiratory System of Healthy Subjects in Supine and Sitting Position

机译:仰卧和坐姿健康受试者的心脏和呼吸系统的特征

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Studies based on the cardiac and respiratory system have allowed a better knowledge of their behavior to contribute with the diagnosis and treatment of diseases associated with them. The main goal of this project was to analyze the behavior of the cardiorespiratory system in healthy subjects, depending on the body position. The electrocardiography and respiratory flow signals were recorded in two positions, supine and sitting. Each signal was analyzed considering sliding windows of 30 s, with and overlapping of 50%. Temporal and spectral features were extracted from each signal. A total of 187 features were extracted for each window. According to statistical analysis, 148 features showed significant differences when comparing the position of the subject. Afterwards, the classifications methods based on decision trees, k-nearest neighbor and support vector machines were applied to identify the best classification model. The most advantageous performance model was obtained with a linear support vector machine method, with an accuracy of 99.5%, a sensitivity of 99.2% and a specificity of 99.6%. In conclusion, we have observed that the position of the body (supine or sitting) could modulate the cardiac and respiratory system response. New statistical models might provide new tools to analyze the behavior of these systems and the cardiorespiratory interaction complexity.
机译:基于心脏和呼吸系统的研究已经使人们对它们的行为有了更好的了解,从而有助于诊断和治疗与它们有关的疾病。该项目的主要目标是根据身体位置分析健康受试者的心肺系统的行为。心电图和呼吸流量信号记录在两个位置:仰卧和坐着。在考虑30 s的滑动窗口(重叠50%)的情况下分析每个信号。从每个信号中提取时间和频谱特征。每个窗口总共提取了187个特征。根据统计分析,当比较对象位置时,有148个特征显示出显着差异。然后,基于决策树,k-最近邻和支持向量机的分类方法被应用于识别最佳分类模型。用线性支持向量机方法获得了最有利的性能模型,其准确度为99.5%,灵敏度为99.2%,特异性为99.6%。总之,我们已经观察到身体的位置(仰卧或坐姿)可以调节心脏和呼吸系统的反应。新的统计模型可能会提供新的工具来分析这些系统的行为以及心肺相互作用的复杂性。

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