High throughput computation of reference ranges of biventricular cardiac function on the UK biobank population cohort

Attar, R., Pereañez, M., Gooya, A. , Albà, X., Zhang, L., Piechnik, S.K., Neubauer, S., Petersen, S.E. and Frangi, A.F. (2019) High throughput computation of reference ranges of biventricular cardiac function on the UK biobank population cohort. In: Pop, M., Sermesant, M., Zhao, J., Li, S., McLeod, K., Young, A., Rhode, K. and Mansi, T. (eds.) Statistical Atlases and Computational Models of the Heart. Atrial Segmentation and LV Quantification Challenges. Series: Lecture Notes in Computer Science, 11395. Springer: Cham, pp. 114-121. ISBN 9783030120283 (doi: 10.1007/978-3-030-12029-0_13)

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Abstract

The exploitation of large-scale population data has the potential to improve healthcare by discovering and understanding patterns and trends within this data. To enable high throughput analysis of cardiac imaging data automatically, a pipeline should comprise quality monitoring of the input images, segmentation of the cardiac structures, assessment of the segmentation quality, and parsing of cardiac functional indexes. We present a fully automatic, high throughput image parsing workflow for the analysis of cardiac MR images, and test its performance on the UK Biobank (UKB) cardiac dataset. The proposed pipeline is capable of performing end-to-end image processing including: data organisation, image quality assessment, shape model initialisation, segmentation, segmentation quality assessment, and functional parameter computation; all without any user interaction. To the best of our knowledge, this is the first paper tackling the fully automatic 3D analysis of the UKB population study, providing reference ranges for all key cardiovascular functional indexes, from both left and right ventricles of the heart. We tested our workflow on a reference cohort of 800 healthy subjects for which manual delineations, and reference functional indexes exist. Our results show statistically significant agreement between the manually obtained reference indexes, and those automatically computed using our framework.

Item Type:Book Sections
Additional Information:eISBN: 9783030120290.
Status:Published
Glasgow Author(s) Enlighten ID:Gooya, Dr Ali
Authors: Attar, R., Pereañez, M., Gooya, A., Albà, X., Zhang, L., Piechnik, S.K., Neubauer, S., Petersen, S.E., and Frangi, A.F.
College/School:College of Science and Engineering > School of Computing Science
Publisher:Springer
ISBN:9783030120283
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