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$TrIND$: Representing Anatomical Trees by Denoising Diffusion of Implicit Neural Fields

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Anatomical trees play a central role in clinical diagnosis and treatment planning. However, accurately representing anatomical trees is challenging due to their varying and complex topology and geometry. Traditional methods for representing tree structures, captured using medical imaging, while invaluable for visualizing vascular and bronchial networks, exhibit drawbacks in terms of limited resolution, flexibility, and efficiency. Recently, implicit neural representations (INRs) have emerged as a powerful tool for representing shapes accurately and efficiently. We propose a novel approach, $TrIND$, for representing anatomical trees using INR, while also capturing the distribution of a set of trees via denoising diffusion in the space of INRs. We accurately capture the intricate geometries and topologies of anatomical trees at any desired resolution. Through extensive qualitative and quantitative evaluation, we demonstrate high-fidelity tree reconstruction with arbitrary resolution yet compact storage, and versatility across anatomical sites and tree complexities. The code is available at: \texttt{\url{https://github.com/sinashish/TreeDiffusion}}.

Ashish Sinha, Ghassan Hamarneh• 2024

Related benchmarks

TaskDatasetResultRank
Vessel Reconstruction and GenerationVascuSynth
JSD42.2
4
Vessel Reconstruction and GenerationCoW
JSD47.7
4
Vessel Reconstruction and GenerationImageCAS
JSD31.9
4
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