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A novel Blood Pressure estimation method combing Pulse Wave Transit Time model and neural network model

机译:一种抗脉波传输时间模型和神经网络模型的新型血压估计方法

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Blood Pressure (BP) measurement can assist doctors to assess patients' cardiovascular status and diagnose heart diseases. Pulse Wave Transit Time (PWTT) model is one frequently used BP estimation method to monitor BP continuously in clinics. However, individual variations may influence the measurement accuracy of PWTT model. Focusing on above promble, this paper proposes a novel BP estimation method combining a classical PWTT model and a neural network model. The novel method is composed of five steps: signal pre-processing, feature extraction, initial PWTT model selection, model correction by neural network model, and final PWTT model identification. A validation experiment based on 10 patients from Multiparameter Intelligent Monitoring in Intensive Care (MIMIC) database showed that the BP estimation results by our method had a minimum mean of error readout value 5 mmHg with a standard deviation of error readout value ±8mmHg. As a result, both the diastolic blood pressure and systolic blood pressure estimation by our method can meet clinical requirements.
机译:血压(BP)测量可以帮助医生评估患者的心血管状态和诊断心脏病。脉冲波传输时间(PWTT)模型是一个常用的BP估计方法,用于在诊所中连续监测BP。然而,单个变化可能影响PWTT模型的测量精度。本文重点突出,提出了一种组合经典PWTT模型和神经网络模型的新型BP估计方法。新型方法由五个步骤组成:信号预处理,特征提取,初始PWTT模型选择,神经网络模型的模型校正以及最终的PWTT模型识别。基于10名来自Multiparameter智能监测患者的验证实验,重症监护(模拟)数据库显示,我们的方法的BP估计结果具有误差读输出值5mmHg的最小平均值,标准差值±8mmHg。结果,我们的方法舒张压和收缩压估计都可以满足临床要求。

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