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2015 | OriginalPaper | Buchkapitel

Efficient Gaussian Process-Based Modelling and Prediction of Image Time Series

verfasst von : Marco Lorenzi, Gabriel Ziegler, Daniel C. Alexander, Sebastien Ourselin

Erschienen in: Information Processing in Medical Imaging

Verlag: Springer International Publishing

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Abstract

In this work we propose a novel Gaussian process-based spatio-temporal model of time series of images. By assuming separability of spatial and temporal processes we provide a very efficient and robust formulation for the marginal likelihood computation and the posterior prediction. The model adaptively accounts for local spatial correlations of the data, and the covariance structure is effectively parameterised by the Kronecker product of covariance matrices of very small size, each encoding only a single direction in space. We provide a simple and flexible framework for within- and between-subject modelling and prediction. In particular, we introduce the Hoffman-Ribak method for efficient inference on posterior processes and its uncertainty. The proposed framework is applied in the context of longitudinal modelling in Alzheimer’s disease. We firstly demonstrate the advantage of our non-parametric method for modelling of within-subject structural changes. The results show that non-parametric methods demonstrably outperform conventional parametric methods. Then the framework is extended to optimize complex parametrized covariate kernels. Using Bayesian model comparison via marginal likelihood the framework enables to compare different hypotheses about individual change processes of images.

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Fußnoten
1
For simplicity we focus on an even sampling across spatial directions, even though the generalization of the proposed model to the uneven case is straightforward.
 
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Metadaten
Titel
Efficient Gaussian Process-Based Modelling and Prediction of Image Time Series
verfasst von
Marco Lorenzi
Gabriel Ziegler
Daniel C. Alexander
Sebastien Ourselin
Copyright-Jahr
2015
DOI
https://doi.org/10.1007/978-3-319-19992-4_49

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