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LU-Net: A Multistage Attention Network to Improve the Robustness of Segmentation of Left Ventricular Structures in 2-D Echocardiography

机译:LU-Net:一种多级注意力网络,可提高二维超声心动图中左心室结构分割的鲁棒性

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摘要

Segmentation of cardiac structures is one of the fundamental steps to estimate volumetric indices of the heart. This step is still performed semiautomatically in clinical routine and is, thus, prone to interobserver and intraobserver variabilities. Recent studies have shown that deep learning has the potential to perform fully automatic segmentation. However, the current best solutions still suffer from a lack of robustness in terms of accuracy and number of outliers. The goal of this work is to introduce a novel network designed to improve the overall segmentation accuracy of left ventricular structures (endocardial and epicardial borders) while enhancing the estimation of the corresponding clinical indices and reducing the number of outliers. This network is based on a multistage framework where both the localization and segmentation steps are optimized jointly through an end-to-end scheme. Results obtained on a large open access data set show that our method outperforms the current best-performing deep learning solution with a lighter architecture and achieved an overall segmentation accuracy lower than the intraobserver variability for the epicardial border (i.e., on average a mean absolute error of 1.5 mm and a Hausdorff distance of 5.1mm) with 11 of outliers. Moreover, we demonstrate that our method can closely reproduce the expert analysis for the end-diastolic and end-systolic left ventricular volumes, with a mean correlation of 0.96 and a mean absolute error of 7.6 ml. Concerning the ejection fraction of the left ventricle, results are more contrasted with a mean correlation coefficient of 0.83 and an absolute mean error of 5.0, producing scores that are slightly below the intraobserver margin. Based on this observation, areas for improvement are suggested.
机译:心脏结构分割是估计心脏体积指数的基本步骤之一。该步骤在临床常规中仍是半自动执行的,因此容易出现观察者间和观察者内的差异。最近的研究表明,深度学习具有执行全自动分割的潜力。然而,目前最好的解决方案在准确性和异常值数量方面仍然缺乏鲁棒性。这项工作的目标是引入一种新的网络,旨在提高左心室结构(心内膜和心外膜边界)的整体分割准确性,同时增强相应临床指标的估计并减少异常值的数量。该网络基于多阶段框架,其中定位和分割步骤通过端到端方案共同优化。在大型开放获取数据集上获得的结果表明,我们的方法在更轻的架构下优于当前性能最好的深度学习解决方案,并且实现了低于心外膜边界的观察者内变异性(即平均绝对误差为 1.5 毫米,豪斯多夫距离为 5.1 毫米)的整体分割精度为 11% 的异常值。此外,我们证明我们的方法可以密切再现舒张末期和收缩末期左心室容积的专家分析,平均相关性为 0.96,平均绝对误差为 7。6毫升。关于左心室的射血分数,结果与平均相关系数为 0.83 和绝对平均误差 5.0% 形成对比,产生的分数略低于观察者内边缘。根据这一观察结果,提出了需要改进的领域。

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