Iterative Segmentation from Limited Training Data: Applications to Congenital Heart Disease.

Danielle F Pace, Adrian V Dalca, Tom Brosch, Tal Geva, Andrew J Powell, Jürgen Weese, Mehdi H Moghari, Polina Golland
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引用次数: 20

Abstract

We propose a new iterative segmentation model which can be accurately learned from a small dataset. A common approach is to train a model to directly segment an image, requiring a large collection of manually annotated images to capture the anatomical variability in a cohort. In contrast, we develop a segmentation model that recursively evolves a segmentation in several steps, and implement it as a recurrent neural network. We learn model parameters by optimizing the intermediate steps of the evolution in addition to the final segmentation. To this end, we train our segmentation propagation model by presenting incomplete and/or inaccurate input segmentations paired with a recommended next step. Our work aims to alleviate challenges in segmenting heart structures from cardiac MRI for patients with congenital heart disease (CHD), which encompasses a range of morphological deformations and topological changes. We demonstrate the advantages of this approach on a dataset of 20 images from CHD patients, learning a model that accurately segments individual heart chambers and great vessels. Compared to direct segmentation, the iterative method yields more accurate segmentation for patients with the most severe CHD malformations.

Abstract Image

Abstract Image

有限训练数据的迭代分割:在先天性心脏病中的应用。
我们提出了一种新的迭代分割模型,该模型可以精确地从小数据集中学习。一种常见的方法是训练模型直接分割图像,这需要大量手动注释的图像来捕获队列中的解剖变异性。相反,我们开发了一个分段模型,该模型递归地分几个步骤发展分段,并将其作为递归神经网络实现。除了最终分割外,我们还通过优化进化的中间步骤来学习模型参数。为此,我们通过将不完整和/或不准确的输入分割与推荐的下一步配对来训练我们的分割传播模型。我们的工作旨在缓解从先天性心脏病(CHD)患者的心脏MRI中分割心脏结构的挑战,其中包括一系列形态学变形和拓扑变化。我们在20张冠心病患者的图像数据集上展示了这种方法的优势,学习了一个准确分割单个心室和大血管的模型。与直接分割相比,迭代法对于最严重的冠心病畸形患者的分割更加准确。
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