0000000001003412

AUTHOR

Ezequiel De La Rosa

showing 3 related works from this author

Segmentation-Free Estimation of Aortic Diameters from MRI Using Deep Learning

2020

Accurate and reproducible measurements of the aortic diameters are crucial for the diagnosis of cardiovascular diseases and for therapeutic decision making. Currently, these measurements are manually performed by healthcare professionals, being time consuming, highly variable, and suffering from lack of reproducibility. In this work we propose a supervised deep-learning method for the direct estimation of aortic diameters. The approach is devised and tested over 100 magnetic resonance angiography scans without contrast agent. All data was expert-annotated at six aortic locations typically used in clinical practice. Our approach makes use of a 3D+2D convolutional neural network (CNN) that ta…

FOS: Computer and information sciencesComputer Vision and Pattern Recognition (cs.CV)Image and Video Processing (eess.IV)Computer Science - Computer Vision and Pattern RecognitionFOS: Electrical engineering electronic engineering information engineeringR Medicina (General)Electrical Engineering and Systems Science - Image and Video Processing
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Segmentation-Free Estimation of Aortic Diameters from MRI Using Deep Learning

2021

Accurate and reproducible measurements of the aortic diameters are crucial for the diagnosis of cardiovascular diseases and for therapeutic decision making. Currently, these measurements are manually performed by healthcare professionals, being time consuming, highly variable, and suffering from lack of reproducibility. In this work we propose a supervised deep-learning method for the direct estimation of aortic diameters. The approach is devised and tested over 100 magnetic resonance angiography scans without contrast agent. All data was expert-annotated at six aortic locations typically used in clinical practice. Our approach makes use of a 3D+2D convolutional neural network (CNN) that ta…

Reproducibilitymedicine.diagnostic_testComputer sciencebusiness.industryDeep learningMagnetic resonance imagingPattern recognitionConvolutional neural networkAutomationMagnetic resonance angiographymedicineSegmentationArtificial intelligenceAortic diameterbusiness
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Myocardial Infarction Quantification from Late Gadolinium Enhancement MRI Using Top-Hat Transforms and Neural Networks

2019

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.…

FOS: Computer and information sciencesscar segmentationlate gadolinium enhancementIndustrial engineering. Management engineeringComputer Vision and Pattern Recognition (cs.CV)Electronic computers. Computer science[INFO.INFO-IM] Computer Science [cs]/Medical ImagingComputer Science - Computer Vision and Pattern Recognition[INFO.INFO-IM]Computer Science [cs]/Medical Imagingdeep learningQA75.5-76.95T55.4-60.8cardiac magnetic resonanceAlgorithms
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