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Recurrent Fully Convolutional Neural Networks for Multi-slice MRI Cardiac Segmentation

机译:递归全卷积神经网络用于多层MRI心脏分割

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摘要

In cardiac magnetic resonance imaging, fully-automatic segmentation of the heart enables precise structural and functional measurements to be taken, e.g. from short-axis MR images of the left-ventricle. In this work we propose a recurrent fully-convolutional network (RFCN) that learns image representations from the full stack of 2D slices and has the ability to leverage inter-slice spatial dependences through internal memory units. RFCN combines anatomical detection and segmentation into a single architecture that is trained end-to-end thus significantly reducing computational time, simplifying the segmentation pipeline, and potentially enabling real-time applications. We report on an investigation of RFCN using two datasets, including the publicly available MICCAI 2009 Challenge dataset. Comparisons have been carried out between fully convolutional networks and deep restricted Boltzmann machines, including a recurrent version that leverages inter-slice spatial correlation. Our studies suggest that RFCN produces state-of-the-art results and can substantially improve the delineation of contours near the apex of the heart.
机译:在心脏磁共振成像中,心脏的全自动分割能够进行精确的结构和功能测量,例如来自左心室的短轴MR图像。在这项工作中,我们提出了一种循环全卷积网络(RFCN),该网络从完整的2D切片堆栈中学习图像表示,并能够通过内部存储单元利用切片间的空间依赖性。 RFCN将解剖学检测和分割结合到一个经过端到端训练的单一体系结构中,从而显着减少了计算时间,简化了分割流程,并有可能实现实时应用。我们使用两个数据集(包括可公开获得的MICCAI 2009挑战数据集)报告了对RFCN的调查。已经在全卷积网络和深度受限的玻尔兹曼机器之间进行了比较,包括利用切片间空间相关性的循环版本。我们的研究表明,RFCN可以产生最先进的结果,并且可以大大改善心脏顶点附近轮廓的轮廓。

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