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Total Variation Random Forest: Fully Automatic MRI Segmentation in Congenital Heart Diseases

机译:总变异随机森林:全自动MRI在先天性心脏病中的分割

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This paper proposes a fully automatic supervised segmentation technique for segmenting the great vessel and blood pool of pediatric cardiac MRIs of children with Congenital Heart Defects (CHD). CHD affects the overall anatomy of heart, rendering model-based segmentation framework infeasible, unless a large dataset of annotated images is available. However, the cardiac anatomy still retains distinct appearance patterns, which has been exploited in this work. In particular, Total Variation (TV) is introduced for solving the 3D disparity and noise removal problem. This results in homogeneous appearances within anatomical structures which is exploited further in a Random Forest framework. Context-aware appearance models are learnt using Random Forest (RF) for appearance-based prediction of great vessel and blood pool of an unseen subject during testing. We have obtained promising results on the HVSMR16 training dataset in a leave-one-out cross-validation.
机译:本文提出了一种全自动的监督分割技术,用于分割先天性心脏病(CHD)患儿的小儿心脏MRI的大血管和血池。除非有大量带注释的图像数据集,否则冠心病会影响心脏的整体解剖,使基于模型的分割框架不可行。但是,心脏解剖结构仍然保留了独特的外观模式,这项工作已被利用。特别是,引入了总变化(TV)来解决3D视差和噪声消除问题。这导致在解剖结构内出现均质外观,并在随机森林框架中进一步加以利用。使用随机森林(RF)学习上下文感知的外观模型,以在测试过程中基于外观预测未见对象的大血管和血池。在HVSMR16训练数据集上,我们通过留一法交叉验证获得了可喜的结果。

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