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Noninvasive Classification of Blood Pressure Based on Photoplethysmography Signals Using Bidirectional Long Short-Term Memory and Time-Frequency Analysis

机译:使用双向短期内记忆和时频分析基于光血小读物信号的血压非侵入性分类

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摘要

The photoplethysmography (PPG) method for continuous noninvasive measurements of blood pressure (BP) offers a more comfortable solution than conventional methods. The main challenge in using the PPG method is that its accuracy is greatly influenced by motion artifacts. In addition, the characteristics of PPG vary depending on physiological conditions; hence, the system must be calibrated to adjust for such changes. We attempt to address these limitations and propose a novel method for the classification of BP using a bidirectional long short-term memory (BLSTM) network with time-frequency (TF) analysis based on PPG signals. The TF analysis extracts information from PPG signals using a short-time Fourier transform (STFT) in the time domain to produce two features, namely, the instantaneous frequency and spectral entropy. Training the BLSTM network using TF features significantly improves the classification performance and decreases the training time. We classify 900 PPG waveform segment samples from 219 adult subjects into three classification levels: normotension (NT), prehypertension (PHT) and hypertension (HT). The results show that the proposed method is successful in the classification of BP with accuracy, sensitivity, and speciticity values of 97.33 & x0025;, 100 & x0025;, and 94.87 & x0025;, respectively. The F1 scores of three BP classifications were 97.29 & x0025;, 97.39 & x0025;, and 93.93 & x0025;, respectively. A comparison of current and previous approaches to the classification of BP is accomplished. Our proposed method achieves a higher accuracy than convolutional neural networks (CNNs), k-nearest neighbors (KNN), bagged tree, logistic regression, and AdaBoost tree methods.
机译:用于连续非侵入性测量的血压(BP)的光学仪性测量方法提供比传统方法更舒适的解决方案。使用PPG方法的主要挑战是其精度受到运动伪影的大大影响。此外,PPG的特征根据生理条件而变化;因此,必须校准系统以调整这些变化。我们尝试解决这些限制,并提出使用双向长期内存(BLSTM)网络与基于PPG信号的时频(TF)分析的BP分类的新方法。 TF分析使用时域中的短时傅里叶变换(STFT)从PPG信号中提取信息,以产生两个特征,即瞬时频率和光谱熵。使用TF功能训练BLSTM网络显着提高了分类性能并降低了培训时间。我们将900个PPG波形分部样本从219名成年受试者分为三种分类水平:normotension(nt),毛细管疗法(PHT)和高血压(HT)。结果表明,该方法在BP的分类中成功,精度,灵敏度和物料值分别为97.33&x0025;,100&x0025;,94.87&x0025;。三种BP分类的F1分数分别为97.29&x0025;,97.39&x0025;,93.93&x0025;。完成了对BP分类的电流和先前方法的比较。我们所提出的方法比卷积神经网络(CNNS),K-CORMONT邻居(KNN),袋装树,逻辑回归和ADABOOST树方法更高的准确性。

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