Abstract | ||
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Cardiac MR imaging contains rich information that can be used to investigate the anatomy and function of the heart. In this paper, we demonstrate that it is possible to learn anatomical and functional information from cardiac MR imaging without explicit segmentation in order to predict clinical variables such as blood pressure with high accuracy. To learn the anatomical variations, we build manifolds of different time points across different subjects. In addition, we investigate two different approaches to incorporate motion information into a manifold, and compare these manifolds to a manifold learned from a single time point. Combining both inter-and intra-subject variation, we are able to construct accurate and reliable classifiers to predict clinical variables. Our proposed method does not require any explicit image segmentation and motion estimation and is able to predict clinical variables with good accuracy. |
Year | DOI | Venue |
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2015 | 10.1007/978-3-319-20309-6_11 | Lecture Notes in Computer Science |
Field | DocType | Volume |
Mr imaging,Computer vision,Time point,Pattern recognition,Segmentation,Computer science,Image segmentation,Artificial intelligence,Motion estimation,Nonlinear dimensionality reduction,Manifold | Conference | 9126 |
ISSN | Citations | PageRank |
0302-9743 | 1 | 0.36 |
References | Authors | |
11 | 9 |
Name | Order | Citations | PageRank |
---|---|---|---|
Haiyan Wang | 1 | 179 | 10.00 |
Wenzhe Shi | 2 | 792 | 39.85 |
Wenjia Bai | 3 | 445 | 35.84 |
Antonio M Simoes Monteiro de Marvao | 4 | 54 | 3.57 |
Timothy Dawes | 5 | 79 | 5.34 |
Declan P. O'Regan | 6 | 258 | 16.33 |
Philip J Edwards | 7 | 115 | 12.42 |
Stuart A Cook | 8 | 111 | 8.45 |
Daniel Rueckert | 9 | 9338 | 637.58 |