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Title:

Automated analysis and detection of abnormalities in transaxial anatomical cardiovascular magnetic resonance images: a proof of concept study with potential to optimize image acquisition.

Document type:
Journal Article
Author(s):
Howard, James P; Zaman, Sameer; Ragavan, Aaraby; Hall, Kerry; Leonard, Greg; Sutanto, Sharon; Ramadoss, Vijay; Razvi, Yousuf; Linton, Nick F; Bharath, Anil; Shun-Shin, Matthew; Rueckert, Daniel; Francis, Darrel; Cole, Graham
Abstract:
The large number of available MRI sequences means patients cannot realistically undergo them all, so the range of sequences to be acquired during a scan are protocolled based on clinical details. Adapting this to unexpected findings identified early on in the scan requires experience and vigilance. We investigated whether deep learning of the images acquired in the first few minutes of a scan could provide an automated early alert of abnormal features. Anatomy sequences from 375 CMR scans were u...     »
Journal title abbreviation:
Int J Cardiovasc Imaging
Year:
2021
Journal volume:
37
Journal issue:
3
Pages contribution:
1033-1042
Fulltext / DOI:
doi:10.1007/s10554-020-02050-w
Pubmed ID:
http://view.ncbi.nlm.nih.gov/pubmed/33123938
Print-ISSN:
1569-5794
TUM Institution:
Institut für KI und Informatik in der Medizin
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