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Assessment of aortic valve opening during rotary blood pump support using pump signals

机译:使用泵信号评估旋转式血泵支撑过程中主动脉瓣的打开

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During left ventricular support by rotary blood pumps (RBPs), the biomechanics of the aortic valve (AV) are altered, potentially leading to adverse events like commissural fusion, valve insufficiency, or thrombus formation. To avoid these events, assessment of AV opening and consequent adaptation of pump speed seem important. Additionally, this information provides insight into the heart-pump interaction. The aim of this study was to develop a method to assess AV opening from the pump flow signal. Data from a numerical model of the cardiovascular system and animal experiments with an RBP were employed to detect the AV opening from the flow waveform under different hemodynamic conditions. Three features calculated from the pump flow waveform were used to classify the state of the AV: skewness, kurtosis, and crest factor. Three different classification algorithms were applied to determine the state of the AV based on these features. In the model data, the best classifier resulted in a percentage of correctly identified beats with a closed AV (specificity) of 99.9%. The percentage of correctly identified beats with an open AV (sensitivity) was 99.5%. In the animal experiments, specificity was 86.8% and sensitivity reached 96.5%. In conclusion, a method to detect AV opening independently from preload, afterload, heart rate, contractility, and degree of support was developed. This algorithm makes the evaluation of the state of the AV possible from pump data only, allowing pump speed adjustment for a frequent opening of the AV and providing information about the interaction of the native heart with the RBP.
机译:在通过旋转血泵(RBP)的左心室支撑过程中,主动脉瓣膜(AV)的生物力学发生了变化,可能导致诸如连合融合,瓣膜功能不全或血栓形成的不良事件。为了避免这些事件,评估AV开度以及随之而来的泵速调整似乎很重要。此外,此信息还提供了有关心脏泵交互作用的见解。这项研究的目的是开发一种从泵流量信号评估AV开度的方法。来自心血管系统数值模型的数据和具有RBP的动物实验被用于从不同血液动力学条件下的流量波形中检测出AV开口。根据泵流量波形计算出的三个特征用于对AV状态进行分类:偏斜度,峰度和波峰因数。基于这些特征,应用了三种不同的分类算法来确定AV的状态。在模型数据中,最佳分类器可得出正确识别的心跳百分比,其闭合AV(特异性)为99.9%。正确识别的具有开放式AV(敏感度)的心跳百分比为99.5%。在动物实验中,特异性为86.8%,敏感性达到96.5%。总之,开发了一种独立于前负荷,后负荷,心率,收缩力和支撑程度来检测房室打开的方法。该算法仅通过泵的数据就可以评估AV的状态,从而允许为频繁打开AV进行泵速度调节,并提供有关天然心脏与RBP相互作用的信息。

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