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LitCall: Learning Implicit Topology for CNN-based Aortic Landmark Localization

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arxiv 2304.07607 v1 pith:6LQIIUCP submitted 2023-04-15 eess.IV

LitCall: Learning Implicit Topology for CNN-based Aortic Landmark Localization

classification eess.IV
keywords aorticlandmarkstopologyimplicitlearningaortacnn-basedlandmark
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Landmark detection is a critical component of the image processing pipeline for automated aortic size measurements. Given that the thoracic aorta has a relatively conserved topology across the population and that a human annotator with minimal training can estimate the location of unseen landmarks from limited examples, we proposed an auxiliary learning task to learn the implicit topology of aortic landmarks through a CNN-based network. Specifically, we created a network to predict the location of missing landmarks from the visible ones by minimizing the Implicit Topology loss in an end-to-end manner. The proposed learning task can be easily adapted and combined with Unet-style backbones. To validate our method, we utilized a dataset consisting of 207 CTAs, labeling four landmarks on each aorta. Our method outperforms the state-of-the-art Unet-style architectures (ResUnet, UnetR) in terms of localization accuracy, with only a light (#params=0.4M) overhead. We also demonstrate our approach in two clinically meaningful applications: aortic sub-region division and automatic centerline generation.

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