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Automatic classification of scar tissue in late gadolinium enhancement cardiac MRI for the assessment of left-atrial wall injury after radiofrequency ablation

机译:晚期钆增强心脏MRI中瘢痕组织的自动分类进行射频消融后左侧壁损伤的评估

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摘要

Radiofrequency ablation is a promising procedure for treating atrial fibrillation (AF) that relies on accurate lesion delivery in the left atrial (LA) wall for success. Late Gadolinium Enhancement MRI (LGE MRI) at three months post-ablation has proven effective for noninvasive assessment of the location and extent of scar formation, which are important factors for predicting patient outcome and planning of redo ablation procedures. We have developed an algorithm for automatic classification in LGE MRI of scar tissue in the LA wall and have evaluated accuracy and consistency compared to manual scar classifications by expert observers. Our approach clusters voxels based on normalized intensity and was chosen through a systematic comparison of the performance of multivariate clustering on many combinations of image texture. Algorithm performance was determined by overlap with ground truth, using multiple overlap measures, and the accuracy of the estimation of the total amount of scar in the LA. Ground truth was determined using the STAPLE algorithm, which produces a probabilistic estimate of the true scar classification from multiple expert manual segmentations. Evaluation of the ground truth data set was based on both inter- and intra-observer agreement, with variation among expert classifiers indicating the difficulty of scar classification for a given a dataset. Our proposed automatic scar classification algorithm performs well for both scar localization and estimation of scar volume: for ground truth datasets considered easy, variability from the ground truth was low; for those considered difficult, variability from ground truth was on par with the variability across experts.
机译:射频消融是治疗心房颤动(AF)的有希望的程序,依赖于左心房(La)壁的准确病变递送以获得成功。晚期钆增强MRI(LGE MRI)在烧蚀后三个月内已证明对对瘢痕形成的位置和程度的非侵入性评估有效,这是预测患者结果和重做烧蚀程序的规划的重要因素。我们开发了一种在LA壁的瘢痕组织的LGE MRI中自动分类算法,并且与专家观察者的手动瘢痕分类相比,评估了准确性和一致性。我们的方法基于归一化强度的群体体素,并通过系统比较了多元聚类在许多图像纹理组合中的性能。算法性能由具有地面真理的重叠确定,使用多重重叠措施,以及估计瘢痕中总量的瘢痕的准确性。使用主装订算法确定了地面真理,其产生了来自多个专家手动分段的真正瘢痕分类的概率估计。地面真理数据集的评估是基于和观察者间协议的跨,具有专家分类器的变化,表明给定数据集的瘢痕分类难度。我们提出的自动瘢痕分类算法对于瘢痕本地化和疤痕估计,对疤痕数量进行良好:对于地面真理数据集,被认为容易,地面真理的变异性低;对于那些被认为是困难的,与专家的可变性有变异性,就是对实践的可变性。

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