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Deep learning models for cuffless blood pressure monitoring from PPG signals using attention mechanism

机译:深入学习模型,用于使用注意机制从PPG信号监控的禁止血压监测

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摘要

Hypertension or high blood pressure is a major health problem worldwide and primary risk factor for cardiovascular disease. Blood pressure is one of the four vital signs that provides important information regarding patients' cardiovascular system conditions. Continuous and regular blood pressure monitoring is essential for early diagnosis and prevention of cardiovascular disease. Considering the existing invasive or cuff-based blood pressuring monitoring techniques in clinical practice, several studies have identified motivation and advantages of a new non-invasive and cuffless blood pressuring measurement technique using Photoplethysmogram (PPG) signals. In this study, we propose several systolic and diastolic blood pressure estimation models using recurrent neural networks with bidirectional connections and attention mechanism utilising only PPG signals. The models were evaluated on PPG and blood pressure signals derived from the Multiparameter Intelligent Monitoring in Intensive Care II database. In the process, 22 characteristic features were extracted from the PPG waveform followed by various dimensionality reduction techniques to eliminate redundancies and reduce computational complexity. The proposed models were evaluated on both the 22-feature set and the reduced input feature vector, respectively. The models were compared with four machine learning techniques commonly used in the literature. Experimental results demonstrated that the proposed models could capture the non-linear relationship between the PPG features and blood pressure with high accuracy and outperformed the conventional machine learning methods on both datasets. The results for all the proposed models were acceptable by the global standards set by the Association for the Advancement of Medical Instrumentation for cuffless blood pressure estimation.
机译:高血压或高血压是全球的主要健康问题和心血管疾病的主要危险因素。血压是提供有关患者心血管系统条件的重要信息的四个重要标志之一。连续和常规血压监测对于早期诊断和预防心血管疾病至关重要。考虑到临床实践中的现有侵入性或袖带的血压监测技术,几项研究已经确定了使用光学肌谱(PPG)信号的新的非侵入性和无牙刷血压测量技术的动机和优点。在这项研究中,我们提出了使用具有双向连接和仅利用PPG信号的双向连接和注意机制的经常性神经网络的若干收缩和舒张血压估计模型。在密集护理II数据库中源自Multiparameter智能监测的PPG和血压信号评估模型。在该过程中,从PPG波形提取22个特征,然后提取各种维数减少技术以消除冗余并降低计算复杂性。在两个特征集和减少的输入特征向量中评估所提出的模型。将模型与文献中常用的四种机器学习技术进行比较。实验结果表明,所提出的模型可以高精度地捕获PPG特征和血压之间的非线性关系,并且优于两个数据集上的传统机器学习方法。所有拟议模型的结果是通过协会的全球标准可以接受,用于携带禁止的无齿状血压估计。

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