Karimi Moridani Mohammad
PhD, Department of Biomedical Engineering, Faculty of Health, Tehran Medical Sciences, Islamic Azad University, Tehran, Iran.
J Biomed Phys Eng. 2022 Feb 1;12(1):31-34. doi: 10.31661/jbpe.v0i0.1211. eCollection 2022 Feb.
Due the long-time admission of patients in the ICU, it is very expensive. Therefore, solutions, which can increase the quality of care and decrease costs, can be helpful.
Separation of the patients based on the acute conditions can be useful in providing appropriate therapy. In this study, we present a classifier to predict the OSA based on heart rate variability of patients.
In this analytical study, we used the recorded ECG signals from PhysioNet Database. At first, in the preprocessing stage, the noise from the ECG signal was removed, and R spikes were detected to generate the HRV. The next stage was related to linear and non-linear features extraction. We used the paired sample t-test that is a statistical technique to compare two periods (apnea and non-apnea). These features were applied as the inputs of two different classifiers, including MLP and SVM to find the best method and distinguish patients with higher death risk.
The results showed that the SVM classifier is more capable to separate the four periods seperated from each other. The sensitivity for detecting the OSA event was 95.46% and the specificity was 97.57% for the non-OSA period.
Accurate and timely diagnosis of the disease can ensure the health of the individual, family, and community. Based on the proposed algorithm, the HRV signal and novel feature, presented in this study, had the highest specificity and sensitivity for the detection of the OSA event of the non-OSA, respectively.
由于重症监护病房(ICU)患者的长期住院,费用非常高昂。因此,能够提高护理质量并降低成本的解决方案可能会有所帮助。
根据急性病情对患者进行分类有助于提供适当的治疗。在本研究中,我们提出一种基于患者心率变异性来预测阻塞性睡眠呼吸暂停(OSA)的分类器。
在这项分析性研究中,我们使用了来自PhysioNet数据库记录的心电图(ECG)信号。首先,在预处理阶段,去除ECG信号中的噪声,并检测R波峰以生成心率变异性(HRV)。下一阶段涉及线性和非线性特征提取。我们使用配对样本t检验,这是一种统计技术,用于比较两个时期(呼吸暂停和非呼吸暂停)。这些特征被用作两个不同分类器(包括多层感知器(MLP)和支持向量机(SVM))的输入,以找到最佳方法并区分死亡风险较高的患者。
结果表明,支持向量机分类器更有能力区分彼此分开的四个时期。检测OSA事件的灵敏度为95.46%,非OSA时期的特异性为97.57%。
准确及时地诊断疾病可以确保个人、家庭和社区的健康。基于所提出的算法,本研究中呈现的HRV信号和新特征分别对检测非OSA的OSA事件具有最高的特异性和灵敏度。