Model based Blood Pressure estimation during exercise test using modified fuzzy function

Maryam Moghadam, M. Moradi
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引用次数: 5

Abstract

Blood Pressure (BP) measurement during exercise test is of great importance. Due to the low accuracy of measuring BP using cuff and barometer during exercise and limitations in the continuous measurements because of the vessel crush, it will be of great advantage to obtain systolic and diastolic BP values in a cuff-less approach. This could be achieved by using extracted features and characteristics of ECG and PPG signals. BP is highly correlated with features such as PTT and HR. However, the correlation is not necessarily linear. It could be nonlinear, multimodal and vague. Therefore, the use of fuzzy function approach with the parameters used in physiological models as its inputs is proposed in this paper. Then, in order to improve the performance of fuzzy function to estimate BP, GK clustering method instead of the FCM and LS-SVM instead of LSE are used in order to produce the antecedent and consequent of the rules respectively. Comparing the results with the BP values which are estimated using NN, and fuzzy systems based on GD training and RLS, indicate better performance of modified fuzzy function with approximately zero mean error and less or almost equal to 8 mmHg as the value of STD in satisfying AAMI standard in systolic and diastolic BP estimation of all stages.
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基于修正模糊函数的运动试验血压估算模型
运动试验中血压的测量具有重要的意义。由于在运动中使用袖带和气压计测量血压的精度较低,并且由于血管挤压而限制了连续测量,因此采用无袖带的方法获得收缩期和舒张期血压值将具有很大的优势。这可以通过提取心电和PPG信号的特征和特征来实现。BP与PTT、HR等特征高度相关。然而,这种相关性并不一定是线性的。它可能是非线性的、多模态的和模糊的。因此,本文提出了以生理模型中使用的参数作为输入的模糊函数方法。然后,为了提高模糊函数估计BP的性能,用GK聚类法代替FCM,用LS-SVM代替LSE分别生成规则的前因式和后因式。与神经网络估计的BP值、基于GD训练和RLS的模糊系统估计的BP值比较,表明修正模糊函数在满足AAMI标准的各阶段收缩压和舒张压估计中具有较好的性能,平均误差近似为零,STD值小于或几乎等于8 mmHg。
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