LASSNet:一种四步深度神经网络用于左心房分割和疤痕量化。

Arthur L Lefebvre, Carolyna A P Yamamoto, Julie K Shade, Ryan P Bradley, Rebecca A Yu, Rheeda L Ali, Dan M Popescu, Adityo Prakosa, Eugene G Kholmovski, Natalia A Trayanova
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引用次数: 1

摘要

房颤患者左心房(LA)瘢痕的准确量化对于指导成功的消融策略至关重要。在进行LA疤痕量化之前,需要对LA空腔进行适当的分割,以确保疤痕的准确位置。这两项任务都非常耗时,并且在手动完成时容易引起观察者之间的分歧。我们开发并验证了一个深度神经网络来自动分割LA腔和LA疤痕。整体架构采用多网络顺序方法,分为两个阶段,将LA空腔和LA疤痕分割。每个阶段分为两个步骤:感兴趣区域神经网络和精细分割网络。我们根据不同的参数分析了网络的性能,并应用了数据分类。200+晚期钆增强磁共振图像由LAScarQS 2022挑战赛提供。最后,我们将我们在疤痕量化方面的表现与文献进行了比较,并证明了改进的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LASSNet: A Four Steps Deep Neural Network for Left Atrial Segmentation and Scar Quantification.

Accurate quantification of left atrium (LA) scar in patients with atrial fibrillation is essential to guide successful ablation strategies. Prior to LA scar quantification, a proper LA cavity segmentation is required to ensure exact location of scar. Both tasks can be extremely time-consuming and are subject to inter-observer disagreements when done manually. We developed and validated a deep neural network to automatically segment the LA cavity and the LA scar. The global architecture uses a multi-network sequential approach in two stages which segment the LA cavity and the LA Scar. Each stage has two steps: a region of interest Neural Network and a refined segmentation network. We analysed the performances of our network according to different parameters and applied data triaging. 200+ late gadolinium enhancement magnetic resonance images were provided by the LAScarQS 2022 Challenge. Finally, we compared our performances for scar quantification to the literature and demonstrated improved performances.

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