Myocardial Infarction Quantification From Late Gadolinium Enhancement MRI Using Top-hat Transforms and Neural Networks
Ezequiel de la Rosa, D\'esir\'e Sidib\'e, Thomas Decourselle, Thibault, Leclercq, Alexandre Cochet, Alain Lalande

TL;DR
This paper introduces an automatic, CNN-based method for quantifying myocardial infarction from LGE-MRI, accurately detecting lesions and microvascular obstructions, and working on both healthy and diseased scans.
Contribution
A novel cascade approach combining CNNs and morphological operations for precise MI segmentation and quantification from LGE-MRI, including healthy tissue detection.
Findings
Achieved state-of-the-art segmentation performance
Reproduced intra- and inter-observer variability ranges
Validated on a large multi-center database
Abstract
Significance: Late gadolinium enhanced magnetic resonance imaging (LGE-MRI) is the gold standard technique for myocardial viability assessment. Although the technique accurately reflects the damaged tissue, there is no clinical standard for quantifying myocardial infarction (MI), demanding most algorithms to be expert dependent. Objectives and Methods: In this work a new automatic method for MI quantification from LGE-MRI is proposed. Our novel segmentation approach is devised for accurately detecting not only hyper-enhanced lesions, but also microvascular-obstructed areas. Moreover, it includes a myocardial disease detection step which extends the algorithm for working under healthy scans. The method is based on a cascade approach where firstly, diseased slices are identified by a convolutional neural network (CNN). Secondly, by means of morphological operations a fast coarse scar…
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