| Literature DB >> 26891066 |
Rashed Karim1, Pranav Bhagirath2, Piet Claus3, R James Housden3, Zhong Chen4, Zahra Karimaghaloo5, Hyon-Mok Sohn4, Laura Lara Rodríguez6, Sergio Vera6, Xènia Albà7, Anja Hennemuth8, Heinz-Otto Peitgen8, Tal Arbel5, Miguel A Gonzàlez Ballester9, Alejandro F Frangi10, Marco Götte2, Reza Razavi4, Tobias Schaeffter4, Kawal Rhode4.
Abstract
Studies have demonstrated the feasibility of late Gadolinium enhancement (LGE) cardiovascular magnetic resonance (CMR) imaging for guiding the management of patients with sequelae to myocardial infarction, such as ventricular tachycardia and heart failure. Clinical implementation of these developments necessitates a reproducible and reliable segmentation of the infarcted regions. It is challenging to compare new algorithms for infarct segmentation in the left ventricle (LV) with existing algorithms. Benchmarking datasets with evaluation strategies are much needed to facilitate comparison. This manuscript presents a benchmarking evaluation framework for future algorithms that segment infarct from LGE CMR of the LV. The image database consists of 30 LGE CMR images of both humans and pigs that were acquired from two separate imaging centres. A consensus ground truth was obtained for all data using maximum likelihood estimation. Six widely-used fixed-thresholding methods and five recently developed algorithms are tested on the benchmarking framework. Results demonstrate that the algorithms have better overlap with the consensus ground truth than most of the n-SD fixed-thresholding methods, with the exception of the Full-Width-at-Half-Maximum (FWHM) fixed-thresholding method. Some of the pitfalls of fixed thresholding methods are demonstrated in this work. The benchmarking evaluation framework, which is a contribution of this work, can be used to test and benchmark future algorithms that detect and quantify infarct in LGE CMR images of the LV. The datasets, ground truth and evaluation code have been made publicly available through the website: https://www.cardiacatlas.org/web/guest/challenges.Entities:
Keywords: Algorithm benchmarking; Late Gadolinium enhancement; Segmentation
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Year: 2016 PMID: 26891066 DOI: 10.1016/j.media.2016.01.004
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545