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Estimation of ARMA-model parameters to describe pathological conditions in cardiovascular system models

机译:估计ARMA模型参数来描述心血管系统模型的病理条件

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Cardiovascular diseases cause one of three deaths worldwide. Among these diseases, especially aortic aneurysms are a highly underestimated problem. There are some diagnostic methods known in the literature (transesophageal echocardiography, doppler sonography or CT/MRT), but none is suitable as an easilyavailable non-invasive screening method, which is inexpensive and independent of the medical examiner. Within this study we present a first step towards a novel screening method using artificial intelligence:The objective of this study is to simulate healthy and diseased conditions of cardiovascular blood flow by means of numerical models, using a distributed zero-dimensional lumped approach based on the Windkessel model, in order to regard pressure-pressure transfer functions between two systemic measurement locations. The coefficients of the transfer function were estimated by an AutoRegressive-MovingAverage (ARMA)-model. The numerical estimation of the ARMA-coefficients (ak,bk) of order l=45 was performed via a Subspace Gauss-Newton search method. The ARMA-coefficients were estimated using artificial zero-mean signals from the arteria brachialis and femoralis in four cases: Besides the control group, the estimations were performed on signals of two aneurysms located in the thoracic (TAA1 and TAA2) and one in the abdominal aorta (AAA). Finally, we quantified the difference between the estimated coefficients in each pathological case, using a distance measure based on the mean and the standard deviation. The largest deviation between the pathological conditions and the control group was found for the coefficients a2,a3,a4 and a7. The findings suggest a reasonable situation to distinguish the pathological state of the four underlying pathological cases from the estimated coefficients; therefore we propose to diagnose the pathological states from the control group using a classification algorithm.
机译:心血管疾病导致全世界三名死亡之一。在这些疾病中,特别是主动脉瘤是一个高度低估的问题。文献中已知一些诊断方法(经细胞眼镜超声心动图,多普勒超声检查或CT / MRT),但没有适合作为一种易于无侵入性筛选方法,其廉价且与医学检查者无关。在这项研究中,我们向使用人工智能的新型筛选方法提供了第一步:本研究的目的是通过数值模型来模拟心血管血流的健康和患病条件,使用基于的分布式零维数集成方法Windkessel模型,以便在两个系统测量位置之间进行压力传递函数。传递函数的系数由自回归 - 播达游戏(ARMA)-Model估计。通过子空间Gauss-Newton搜索方法执行订单L = 45的ARMA系数(AK,BK)的数值估计。使用来自动脉释放的人工零均值信号的ARMA系数在四种情况下,除了对照组之外,对位于胸部(TAA1和TAA2)中的两个动脉瘤的信号和腹部中的估计进行了估计主动脉(AAA)。最后,我们使用基于平均值和标准偏差的距离测量来量化每个病理情况下估计系数之间的差异。对系数A2,A3,A4和A7发现病理条件和对照组之间的最大偏差。调查结果表明,区分四种潜在病理病例的病理状态从估计的系数中区分病理状态;因此,我们建议使用分类算法诊断来自对照组的病理状态。

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