End-to-end diagnosis and segmentation learning from cardiac magnetic resonance imaging

Conference Paper (2018)
Author(s)

Gerard Snaauw (AIML, School of Computer Science, University of Adelaide, Australia, Student TU Delft)

Dong Gong (AIML, School of Computer Science, University of Adelaide, Australia)

Gabriel Maicas (AIML, School of Computer Science, University of Adelaide, Australia)

Anton van den Hengel (AIML, School of Computer Science, University of Adelaide, Australia)

Wiro Niessen (Erasmus MC, TU Delft - ImPhys/Quantitative Imaging)

Johan Verjans (AIML, School of Computer Science, University of Adelaide, Australia, South Australian Health and Medical Research Institute, Adelaide, Australia)

Gustavo Carneiro (AIML, School of Computer Science, University of Adelaide, Australia)

Research Group
ImPhys/Quantitative Imaging
DOI related publication
https://doi.org/10.1109/ISBI.2019.8759276
More Info
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Publication Year
2018
Language
English
Research Group
ImPhys/Quantitative Imaging
Article number
8759276
Pages (from-to)
802-805
ISBN (electronic)
9781538636411
Event
IEEE International Symposium on Biomedical Imaging, ISBI 2019 (2019-04-08 - 2019-04-11), Venice, Italy
Downloads counter
172

Abstract

Cardiac magnetic resonance (CMR) is used extensively in the diagnosis and management of cardiovascular disease. Deep learning methods have proven to deliver segmentation results comparable tohuman experts in CMR imaging, but there have been no convincing results for the problem of end-to-end segmentation and diagnosis from CMR. This is in part due to a lack of sufficiently large datasets required to train robust diagnosis models. In this paper, we proposea learning method to train diagnosis models, where our approach isdesigned to work with relatively small datasets. In particular, the optimisation loss is based on multi-task learning that jointly trains for the tasks of segmentation and diagnosis classification. We hypothesize that segmentation has a regularizing effect on the learning of features relevant for diagnosis. Using the 100 training and 50 testingsamples available from the Automated Cardiac Diagnosis Challenge (ACDC) dataset, which has a balanced distribution of 5 cardiac diagnoses, we observe a reduction of the classification error from 32% to 22%, and a faster convergence compared to a baseline without segmentation. To the best of our knowledge, this is the best diagnosis results from CMR using an end-to-end diagnosis and segmentation learning method.

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