Going deeper into cardiac motion analysis to model fine spatio-temporal features
This paper shows that deep modelling of subtle changes of cardiac motion can help in automated diagnosis of early onset of cardiac disease. In this paper, we model left ventricular (LV) cardiac motion in MRI sequences, based on a hybrid spatio-temporal network. Temporal data over long time periods i...
Main Authors: | Lu, P, Qiu, H, Qin, C, Bai, W, Rueckert, D, Noble, JA |
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Other Authors: | Papiez, BW |
Format: | Conference item |
Language: | English |
Published: |
Springer
2020
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