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A Combined Random Forests and Active Contour Model Approach for Fully Automatic Segmentation of the Left Atrium in Volumetric MRI

机译:容积磁共振成像中随机融合森林和主动轮廓模型的方法自动分割左心房

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摘要

Segmentation of the left atrium (LA) from cardiac magnetic resonance imaging (MRI) datasets is of great importance for image guided atrial fibrillation ablation, LA fibrosis quantification, and cardiac biophysical modelling. However, automated LA segmentation from cardiac MRI is challenging due to limited image resolution, considerable variability in anatomical structures across subjects, and dynamic motion of the heart. In this work, we propose a combined random forests (RFs) and active contour model (ACM) approach for fully automatic segmentation of the LA from cardiac volumetric MRI. Specifically, we employ the RFs within an autocontext scheme to effectively integrate contextual and appearance information from multisource images together for LA shape inferring. The inferred shape is then incorporated into a volume-scalable ACM for further improving the segmentation accuracy. We validated the proposed method on the cardiac volumetric MRI datasets from the STACOM 2013 and HVSMR 2016 databases and showed that it outperforms other latest automated LA segmentation methods. Validation metrics, average Dice coefficient (DC) and average surface-to-surface distance (S2S), were computed as 0.9227 ± 0.0598 and 1.14 ± 1.205 mm, versus those of 0.6222–0.878 and 1.34–8.72 mm, obtained by other methods, respectively.
机译:心脏磁共振成像(MRI)数据集对左心房(LA)的分割对于图像引导的房颤消融,LA纤维化量化和心脏生物物理建模非常重要。然而,由于有限的图像分辨率,跨受试者解剖结构的巨大变异性以及心脏的动态运动,心脏MRI的自动LA分割具有挑战性。在这项工作中,我们提出了一种结合随机森林(RF)和主动轮廓模型(ACM)的方法,用于从心脏容量MRI全自动分离LA。具体来说,我们在自动上下文方案中采用RF,以有效地将多源图像的上下文和外观信息整合在一起,以进行LA形状推断。然后将推断的形状合并到可缩放的体积的ACM中,以进一步提高分割精度。我们在STACOM 2013和HVSMR 2016数据库的心脏容积MRI数据集上验证了该建议方法,并表明它优于其他最新的自动LA分割方法。验证指标,平均骰子系数(DC)和平均表面到表面距离(S2S)分别为0.9227±0.0598和1.14±1.205 mm,而通过其他方法获得的验证指标分别为0.6222–0.878和1.34–8.72 mm,分别。

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