IVCVJul 6, 2019

Accurate Congenital Heart Disease Model Generation for 3D Printing

arXiv:1907.05273v21 citations
Originality Incremental advance
AI Analysis

This addresses the time-consuming segmentation step for 3D printing in CHD clinical planning, though it is incremental as it builds on existing segmentation frameworks.

The paper tackles the challenge of automatically segmenting whole heart and great vessels in congenital heart disease (CHD) images for 3D printing, achieving an average 11.9% increase in Dice score compared to state-of-the-art methods for normal anatomy.

3D printing has been widely adopted for clinical decision making and interventional planning of Congenital heart disease (CHD), while whole heart and great vessel segmentation is the most significant but time-consuming step in the model generation for 3D printing. While various automatic whole heart and great vessel segmentation frameworks have been developed in the literature, they are ineffective when applied to medical images in CHD, which have significant variations in heart structure and great vessel connections. To address the challenge, we leverage the power of deep learning in processing regular structures and that of graph algorithms in dealing with large variations and propose a framework that combines both for whole heart and great vessel segmentation in CHD. Particularly, we first use deep learning to segment the four chambers and myocardium followed by the blood pool, where variations are usually small. We then extract the connection information and apply graph matching to determine the categories of all the vessels. Experimental results using 683D CT images covering 14 types of CHD show that our method can increase Dice score by 11.9% on average compared with the state-of-the-art whole heart and great vessel segmentation method in normal anatomy. The segmentation results are also printed out using 3D printers for validation.

Foundations

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