从压脉波形态估计连续血压

Agnes Jinu, Biju K. S.
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引用次数: 0

摘要

高血压是导致死亡和许多残疾的重要原因。血压是了解心血管状况的指标。动脉插管技术可以获得更准确的连续血压。这种方法的缺点是由于其侵入性,给患者带来潜在的风险。现有的袖带法和振荡法只能提供短时间的数据,不能用于连续监测。本研究的目的是利用血压脉搏波形态估计连续血压。采用桡动脉压力脉冲波进行估算。将回归模型得到的初始血压与收缩期和舒张期特征点之间的压差相加,评价连续血压。从压力脉冲波中提取了大约11个信息特征,并构建了两个回归模型进行性能比较。从计算的两种模型的平均绝对误差来看,多元线性回归模型的准确率优于深度学习回归模型。将多元线性回归模型测得的初始血压与压差相加,估算连续收缩压和舒张压。结果表明,压力脉搏波形态在无创血压估计中的可靠性。
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Estimation of continuous blood pressure from pressure pulse wave morphology
Hypertension is the significant cause of death and many disabilities. Blood pressure is an index for knowing the cardiovascular status. More accurate continuous blood pressure can be obtained by arterial cannulation technique. Drawback with this method is that it causes potential risk to patient due to its invasive nature. Currently existing cuff based and oscillometric methods provide only short time data and it cannot be used for continuous monitoring. The purpose of this study is to estimate the continuous blood pressure using the pressure pulse wave morphology. Radial artery pressure pulse wave is used for the estimation. Initial blood pressure obtained with the help of regression model is added with the pressure difference between the systolic and diastolic feature points to evaluate the continuous blood pressure. About eleven informative features were extracted from pressure pulse wave and two regression models were constructed for comparing the performance. From mean absolute error calculated for the two models, multivariable linear regression model showed better accuracy than deep learning regression model. Initial blood pressure measured by multi-variable linear regression model is added with pressure difference to estimation continuous systolic and diastolic blood pressure. The results showed the reliability of pressure pulse wave morphology for non invasive blood pressure estimation.
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