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2020 | OriginalPaper | Buchkapitel

Probabilistic Motion Modeling from Medical Image Sequences: Application to Cardiac Cine-MRI

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Abstract

We propose to learn a probabilistic motion model from a sequence of images. Besides spatio-temporal registration, our method offers to predict motion from a limited number of frames, useful for temporal super-resolution. The model is based on a probabilistic latent space and a novel temporal dropout training scheme. This enables simulation and interpolation of realistic motion patterns given only one or any subset of frames of a sequence. The encoded motion also allows to be transported from one subject to another without the need of inter-subject registration. An unsupervised generative deformation model is applied within a temporal convolutional network which leads to a diffeomorphic motion model – encoded as a low-dimensional motion matrix. Applied to cardiac cine-MRI sequences, we show improved registration accuracy and spatio-temporally smoother deformations compared to three state-of-the-art registration algorithms. Besides, we demonstrate the model’s applicability to motion transport by simulating a pathology in a healthy case. Furthermore, we show an improved motion reconstruction from incomplete sequences compared to linear and cubic interpolation.

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Metadaten
Titel
Probabilistic Motion Modeling from Medical Image Sequences: Application to Cardiac Cine-MRI
verfasst von
Julian Krebs
Tommaso Mansi
Nicholas Ayache
Hervé Delingette
Copyright-Jahr
2020
DOI
https://doi.org/10.1007/978-3-030-39074-7_19

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