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Sensitivity of FFR-CT to Manual Segmentation

机译:FFR-CT对手动分割的敏感性

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Fractional Flow Reserve (FFR). the ratio of arterial pressure distal to a coronary lesion to the proximal pressure, is indicative of its hemodynamic significance. This quantity can be determined from invasive measurements made with a catheter, or by using computational methods incorporating models of the the coronary vasculature. One of the inputs needed by a model-based approach for estimating FFR from Computed Tomography Angiography (CTA) images (denoted FFR-CT) is the geometry of the coronary arteries, which requires segmentation of the coronary lumen. Several algorithms have been proposed for coronary lumen segmentation, including the recent application of machine learning techniques. For evaluating these algorithms or for training machine learning algorithms, manual segmentation of the lumen has been considered as ground truth. However, since there is inter-subject variability in manual segmentation, it would be useful to first assess the extent to which this variability affects the predicted FFR values. In the current study, we evaluated the impact of inter-subject variability in manual segmentation on computed FFR, using datasets with three different manual segmentations provided as part of the Rotterdam Coronary Artery Evaluation Framework. FFR was computed using a coronary blood flow model. Our results indicate that variability in manual segmentations on FFR estimates depend on the FFR value. For FFR ≥ 0.97, variability in manual segmentations does not impact FFR estimates, while, for lower FFR values, the variability in manual segmentations leads to significant variability in FFR. The results of this study indicate that researchers should exercise caution when treating manual segmentations as ground truth for estimating FFR from CTA images.
机译:分数流量储备(FFR)。动脉压远离冠状动脉病变与近侧压力的比率,表示其血流动力学意义。该量可以由用导管制成的侵入性测量确定,或者通过使用冠状动脉脉管系统的模型的计算方法来确定。基于模型的方法需要一种用于估计来自计算断层造影血管造影(CTA)图像(表示的FFR-CT)的FFR的方法是冠状动脉的几何形状,需要冠状动脉腔的分割。已经提出了几种算法用于冠状动脉腔分割,包括最近的机器学习技术应用。为了评估这些算法或用于训练机器学习算法,腔的手动分割被认为是地面真理。然而,由于手动分割存在对象间可变性,因此首先评估该可变性影响预测的FFR值的程度是有用的。在目前的研究中,我们评估了使用具有三种不同手动分段的数据集在计算的FFR上对手动分段对手动分割的影响的影响,该数据集作为鹿特丹冠状动脉评估框架的一部分提供。使用冠状动脉血流模型计算FFR。我们的结果表明,FFR估计上的手动分割的可变性取决于FFR值。对于FFR≥0.97,手动分割的可变性不会影响FFR估计,而对于较低的FFR值,手动分段的可变性导致FFR的显着变化。本研究的结果表明,研究人员应在将手动细分视为估算CTA图像的实际真实时谨慎行事。

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