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The Optimal Morphological Model for Arterial Blood Pressure Wave Related Classification: Comparison of Two Types of Kernel Function Mixtures

机译:动脉血压波相关分类的最佳形态模型:两种核函数混合物的比较

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摘要

The morphological modeling methods are efficient in quantifying the change of arterial blood pressure (ABP) waves. The related works focus on minimizing the modeling error but ignore the classification related modeling expression in practical applications. In this study, we explored the optimal modeling method for ABP wave related classifications. Two types of conventional models, Gaussian or Lognormal kernel function mixtures, were employed to quantitively describe the change of ABP signals, and the parameters of different models were engaged to train the different classifiers by probabilistic neural network (PNN) and random forest (RF) for identifying the ABP waves by age, gender, and whether belonging to extreme bradycardia (EB) or extreme tachycardia (ET). Then, we defined some indexes about the performance of modeling and classifications as the references to compare the different models. The ABP signals of Fantasia and 2015 PhysioNet/CinC Challenge databases were exploited as the experimental data to select the optimal model. The modeling results show that the Lognormal kernel function mixtures have a lower error in ABP wave modeling. The two-sample Kolmogorov-Smirnov test (ks-test) results indicate that the parameters of all models are markedly different at a highly significant level (h = 1, p < 0.05) between different groups. The classification results show that the classifiers based on the four-Gaussian function model have the best performance with the average Kappa coefficients (KC) of 99.160 +/- 0.123%, while the average KC for the classifiers of two-Lognormal function models is 97.585 +/- 0.172%, which means there is excessive information redundancy in the classifications by the three and four kernel functions models. Considering some other indexes such as time consumption and RAM space, the 2 Lognormal function model has more potential in practical applications.
机译:形态学建模方法在量化动脉血压(ABP)波的变化方面是有效的。相关的工作侧重于最小化建模错误,但忽略实际应用中的分类相关建模表达式。在本研究中,我们探讨了ABP波相关分类的最佳建模方法。采用两种类型的传统模型,高斯或逻辑核函数混合物来定量描述ABP信号的变化,并且不同型号的参数与概率神经网络(PNN)和随机林(RF)培训不同的分类器。按年龄,性别和无论是属于极端的心动过缓(EB)还是极端心动过速(ET)鉴定ABP波。然后,我们定义了关于对比较不同模型的参考的建模和分类的一些索引。幻想和2015个物理仪/ CINC挑战数据库的ABP信号被利用为实验数据,以选择最佳模型。建模结果表明,LogNormal核函数混合在ABP波模型中具有较低的误差。两个样本的Kolmogorov-Smirnov测试(KS-Test)结果表明,所有模型的参数在不同组之间的高显着水平(H = 1,P <0.05)中明显不同。分类结果表明,基于四高斯函数模型的分类器具有最佳性能,具有99.160 +/- 0.123%的平均Kappa系数(KC),而双记录功能模型的分类器的平均KC是97.585 +/- 0.172%,这意味着三个内核函数模型的分类中存在过多的信息冗余。考虑到一些其他索引,例如时间消耗和RAM空间,2个Lognormal函数模型在实际应用中具有更多潜力。

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