Left atrial (LA) and atrial scar segmentation from late gadolinium enhanced magnetic resonance imaging (LGE MRI) is an important task in clinical practice. %, to guide ablation therapy and predict treatment results for atrial fibrillation (AF) patients. The automatic segmentation is however still challenging, due to the poor image quality, the various LA shapes, the thin wall, and the surrounding enhanced regions. Previous methods normally solved the two tasks independently and ignored the intrinsic spatial relationship between LA and scars. In this work, we develop a new framework, namely AtrialJSQnet, where LA segmentation, scar projection onto the LA surface, and scar quantification are performed simultaneously in an end-to-end style. We propose a mechanism of shape attention (SA) via an explicit surface projection, to utilize the inherent correlation between LA and LA scars. In specific, the SA scheme is embedded into a multi-task architecture to perform joint LA segmentation and scar quantification. Besides, a spatial encoding (SE) loss is introduced to incorporate continuous spatial information of the target, in order to reduce noisy patches in the predicted segmentation. We evaluated the proposed framework on 60 LGE MRIs from the MICCAI2018 LA challenge. Extensive experiments on a public dataset demonstrated the effect of the proposed AtrialJSQnet, which achieved competitive performance over the state-of-the-art. The relatedness between LA segmentation and scar quantification was explicitly explored and has shown significant performance improvements for both tasks. The code and results will be released publicly once the manuscript is accepted for publication via https://zmiclab.github.io/projects.html.
翻译:然而,由于图像质量差、LA形状不同、薄墙和周围强化区域,自动分割仍然具有挑战性。以往的方法通常独立地解决了两个任务,忽视了LA和伤疤之间的内在空间关系。在这项工作中,我们开发了一个新的框架,即ATIALJSQnet(LGE Qnet),在这个框架中,LA的分割、在LA表面的疤痕投影和疤痕量化同时以端到端的方式进行。我们建议通过明确的表面投影来建立一个形状关注机制(SA),以利用LA和LA伤疤之间的内在关联。具体地说,SA计划被嵌入一个多任务结构,以进行联合LA分块和疤痕量化。此外,将引入空间编码(SE)损失,以纳入目标的连续空间信息,以降低LAQQQ(LA)表面和疤痕量量化的精确度,从而在预测的分层分析中显示准确性能。我们提议在LAIS(LA)和M(LA)之间进行深度分析。我们评估了对LA(LA)和LA(LA)系统(LA) 20)的模拟(S)的模型(S)的模拟(S)的预测性分析结果的改善框架。我们提出的一个持续的模拟)的模拟(LAIA)和S)测试。