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Hauptverfasser: De Paolis, Gaia Romana, Lenis, Dimitrios, Novotny, Johannes, Wimmer, Maria, Berg, Astrid, Neubauer, Theresa, Winter, Philip Matthias, Major, David, Muthusami, Ariharasudhan, Schröcker, Gerald, Mienkina, Martin, Bühler, Katja
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2409.07100
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author De Paolis, Gaia Romana
Lenis, Dimitrios
Novotny, Johannes
Wimmer, Maria
Berg, Astrid
Neubauer, Theresa
Winter, Philip Matthias
Major, David
Muthusami, Ariharasudhan
Schröcker, Gerald
Mienkina, Martin
Bühler, Katja
author_facet De Paolis, Gaia Romana
Lenis, Dimitrios
Novotny, Johannes
Wimmer, Maria
Berg, Astrid
Neubauer, Theresa
Winter, Philip Matthias
Major, David
Muthusami, Ariharasudhan
Schröcker, Gerald
Mienkina, Martin
Bühler, Katja
contents Efficient and fast reconstruction of anatomical structures plays a crucial role in clinical practice. Minimizing retrieval and processing times not only potentially enhances swift response and decision-making in critical scenarios but also supports interactive surgical planning and navigation. Recent methods attempt to solve the medical shape reconstruction problem by utilizing implicit neural functions. However, their performance suffers in terms of generalization and computation time, a critical metric for real-time applications. To address these challenges, we propose to leverage meta-learning to improve the network parameters initialization, reducing inference time by an order of magnitude while maintaining high accuracy. We evaluate our approach on three public datasets covering different anatomical shapes and modalities, namely CT and MRI. Our experimental results show that our model can handle various input configurations, such as sparse slices with different orientations and spacings. Additionally, we demonstrate that our method exhibits strong transferable capabilities in generalizing to shape domains unobserved at training time.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07100
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Fast Medical Shape Reconstruction via Meta-learned Implicit Neural Representations
De Paolis, Gaia Romana
Lenis, Dimitrios
Novotny, Johannes
Wimmer, Maria
Berg, Astrid
Neubauer, Theresa
Winter, Philip Matthias
Major, David
Muthusami, Ariharasudhan
Schröcker, Gerald
Mienkina, Martin
Bühler, Katja
Image and Video Processing
Computer Vision and Pattern Recognition
Efficient and fast reconstruction of anatomical structures plays a crucial role in clinical practice. Minimizing retrieval and processing times not only potentially enhances swift response and decision-making in critical scenarios but also supports interactive surgical planning and navigation. Recent methods attempt to solve the medical shape reconstruction problem by utilizing implicit neural functions. However, their performance suffers in terms of generalization and computation time, a critical metric for real-time applications. To address these challenges, we propose to leverage meta-learning to improve the network parameters initialization, reducing inference time by an order of magnitude while maintaining high accuracy. We evaluate our approach on three public datasets covering different anatomical shapes and modalities, namely CT and MRI. Our experimental results show that our model can handle various input configurations, such as sparse slices with different orientations and spacings. Additionally, we demonstrate that our method exhibits strong transferable capabilities in generalizing to shape domains unobserved at training time.
title Fast Medical Shape Reconstruction via Meta-learned Implicit Neural Representations
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2409.07100