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2021 | OriginalPaper | Buchkapitel

Multiscale Graph Convolutional Networks for Cardiac Motion Analysis

verfasst von : Ping Lu, Wenjia Bai, Daniel Rueckert, J. Alison Noble

Erschienen in: Functional Imaging and Modeling of the Heart

Verlag: Springer International Publishing

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Abstract

We propose a multiscale spatio-temporal graph convolutional network (MST-GCN) approach to learn the left ventricular (LV) motion patterns from cardiac MR image sequences. The MST-GCN follows an encoder-decoder framework. The encoder uses a sequence of multiscale graph computation units (MGCUs). The myocardial geometry is represented as a graph. The network models the internal relations of the graph nodes via feature extraction at different scales and fuses the feature across scales to form a global representation of the input cardiac motion. Based on this, the decoder employs a graph-based gated recurrent unit (G-GRU) to predict future cardiac motion. We show that the MST-GCN can automatically quantify the spatio-temporal patterns in cardiac MR that characterise cardiac motion. Experiments are performed on mid-ventricular short-axis view cardiac MR image sequence from the UK Biobank dataset. We compare the performance of cardiac motion prediction of the proposed method with ten different architectures and parameter settings. Experiments show that the proposed method inputting node positions and node velocities with multiscale graphs achieves the best performance with a mean squared error of 0.25 pixel between the ground truth node locations and our prediction. We also show that the proposed method can estimate a number of motion-related metrics, including endocardial radii, thickness and strain which are useful for regional LV function assessment.

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Metadaten
Titel
Multiscale Graph Convolutional Networks for Cardiac Motion Analysis
verfasst von
Ping Lu
Wenjia Bai
Daniel Rueckert
J. Alison Noble
Copyright-Jahr
2021
DOI
https://doi.org/10.1007/978-3-030-78710-3_26

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