School of Electrical Engineering, Guilin University of Electronic Technology, Guilin 541004, China.
School of Electrical and Computer Engineering, University of British Columbia, BC V6T 1Z4, Canada.
Biosensors (Basel). 2018 Oct 26;8(4):101. doi: 10.3390/bios8040101.
Blood pressure is a basic physiological parameter in the cardiovascular circulatory system. Long-term abnormal blood pressure will lead to various cardiovascular diseases, making the early detection and assessment of hypertension profoundly significant for the prevention and treatment of cardiovascular diseases. In this paper, we investigate whether or not deep learning can provide better results for hypertension risk stratification when compared to the classical signal processing and feature extraction methods. We tested a deep learning method for the classification and evaluation of hypertension using photoplethysmography (PPG) signals based on the continuous wavelet transform (using Morse) and pretrained convolutional neural network (using GoogLeNet). We collected 121 data recordings from the Multiparameter Intelligent Monitoring in Intensive Care (MIMIC) Database, each containing arterial blood pressure (ABP) and photoplethysmography (PPG) signals. The ABP signals were utilized to extract blood pressure category labels, and the PPG signals were used to train and test the model. According to the seventh report of the Joint National Committee, blood pressure levels are categorized as normotension (NT), prehypertension (PHT), and hypertension (HT). For the early diagnosis and assessment of HT, the timely detection of PHT and the accurate diagnosis of HT are significant. Therefore, three HT classification trials were set: NT vs. PHT, NT vs. HT, and (NT + PHT) vs. HT. The F-scores of these three classification trials were 80.52%, 92.55%, and 82.95%, respectively. The tested deep method achieved higher accuracy for hypertension risk stratification when compared to the classical signal processing and feature extraction method. Additionally, the method achieved comparable results to another approach that requires electrocardiogram and PPG signals.
血压是心血管循环系统中的基本生理参数。长期血压异常会导致各种心血管疾病,因此高血压的早期检测和评估对心血管疾病的预防和治疗具有重要意义。在本文中,我们研究了与经典的信号处理和特征提取方法相比,深度学习是否可以为高血压风险分层提供更好的结果。我们使用基于连续小波变换(使用 Morse)和预训练卷积神经网络(使用 GoogLeNet)的光体积描记图(PPG)信号对高血压的分类和评估进行了深度学习方法的测试。我们从 Multiparameter Intelligent Monitoring in Intensive Care (MIMIC) 数据库中收集了 121 个数据记录,每个记录都包含动脉血压(ABP)和光体积描记图(PPG)信号。使用 ABP 信号提取血压类别标签,使用 PPG 信号训练和测试模型。根据联合国家委员会的第七份报告,血压水平分为正常血压(NT)、高血压前期(PHT)和高血压(HT)。为了进行 HT 的早期诊断和评估,及时检测 PHT 和准确诊断 HT 非常重要。因此,我们进行了三次 HT 分类试验:NT 与 PHT、NT 与 HT 和(NT + PHT)与 HT。这三个分类试验的 F 分数分别为 80.52%、92.55%和 82.95%。与经典的信号处理和特征提取方法相比,经过测试的深度方法在高血压风险分层方面实现了更高的准确性。此外,该方法与需要心电图和 PPG 信号的另一种方法的结果相当。