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A Semantic-Wise Convolutional Neural Network Approach for 3-D Left Atrium Segmentation from Late Gadolinium Enhanced Magnetic Resonance Imaging

机译:晚期Ga增强磁共振成像的3维左心房分割的语义-智能卷积神经网络方法

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Several studies suggest that the assessment of viable left atrial (LA) tissue is a relevant information to support catheter ablation in atrial fibrillation (AF). Late gadolinium enhanced magnetic resonance imaging (LGE MRI) is a new emerging technique which is employed for the non-invasive quantification of LA fibrotic tissue. The analysis of LGE MRI relies on manual tracing of LA boundaries. This procedure is time-consuming and prone to high inter-observer variability given the different degrees of observers' experience, LA wall thickness and data resolution. Therefore, an automatic approach for the LA wall detection would be highly desirable. This work focuses on the design and development of a semantic-wise convolutional neural network based on the successful architecture U-Net (U-SWCNN). Batch normalization, early stopping and parameter initializers consistent with the activation functions chosen were used; a loss function based on the Dice coefficient was employed. The U-SWCNN was trained end-to-end with the 3-D data available from the 2018 Atrial Segmentation Challenge. The training was completed using 80 LGE MRI data and a post-processing step based on the 3-D morphology was then applied. After the post-processing step, the average Dice coefficient on the validation set (20 LGE MRI data) was 0.911, while on the test set (54 LGE MRI data) was 0.898.
机译:多项研究表明,对可行的左心房(LA)组织进行评估是支持在房颤(AF)中进行导管消融的相关信息。晚期g增强磁共振成像(LGE MRI)是一种新兴技术,用于非侵入性定量LA纤维化组织。 LGE MRI的分析依赖于LA边界的手动追踪。考虑到不同程度的观察者经验,洛杉矶壁厚和数据分辨率,此过程非常耗时,并且易于在观察者之间产生较大差异。因此,非常需要用于LA壁检测的自动方法。这项工作专注于基于成功架构U-Net(U-SWCNN)的语义卷积神经网络的设计和开发。使用与所选激活功能一致的批标准化,提早停止和参数初始化程序;使用基于骰子系数的损失函数。 U-SWCNN使用2018年心房分割挑战赛中提供的3-D数据进行了端到端培训。使用80个LGE MRI数据完成了训练,然后应用了基于3-D形态的后处理步骤。在后处理步骤之后,验证集(20个LGE MRI数据)的平均Dice系数为0.911,而测试集(54个LGE MRI数据)的平均Dice系数为0.898。

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