Iterative Segmentation from Limited Training Data: Applications to Congenital Heart Disease
September 11, 2018 Β· Declared Dead Β· π DLMIA/ML-CDS@MICCAI
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Authors
Danielle F. Pace, Adrian V. Dalca, Tom Brosch, Tal Geva, Andrew J. Powell, JΓΌrgen Weese, Mehdi H. Moghari, Polina Golland
arXiv ID
1809.04182
Category
cs.CV: Computer Vision
Citations
22
Venue
DLMIA/ML-CDS@MICCAI
Last Checked
3 months ago
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 interme- diate steps of the evolution in addition to the final segmentation. To this end, we train our segmentation propagation model by presenting incom- plete 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. Com- pared to direct segmentation, the iterative method yields more accurate segmentation for patients with the most severe CHD malformations.
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