Literature DB >> 34202813

Calcium Identification and Scoring Based on Echocardiography. An Exploratory Study on Aortic Valve Stenosis.

Luis B Elvas1,2, Ana G Almeida3, Luís Rosario3, Miguel Sales Dias2, João C Ferreira1,2.   

Abstract

Currently, an echocardiography expert is needed to identify calcium in the aortic valve, and a cardiac CT-Scan image is needed for calcium quantification. When performing a CT-scan, the patient is subject to radiation, and therefore the number of CT-scans that can be performed should be limited, restricting the patient's monitoring. Computer Vision (CV) has opened new opportunities for improved efficiency when extracting knowledge from an image. Applying CV techniques on echocardiography imaging may reduce the medical workload for identifying the calcium and quantifying it, helping doctors to maintain a better tracking of their patients. In our approach, a simple technique to identify and extract the calcium pixel count from echocardiography imaging, was developed by using CV. Based on anonymized real patient echocardiographic images, this approach enables semi-automatic calcium identification. As the brightness of echocardiography images (with the highest intensity corresponding to calcium) vary depending on the acquisition settings, echocardiographic adaptive image binarization has been performed. Given that blood maintains the same intensity on echocardiographic images-being always the darker region-blood areas in the image were used to create an adaptive threshold for binarization. After binarization, the region of interest (ROI) with calcium, was interactively selected by an echocardiography expert and extracted, allowing us to compute a calcium pixel count, corresponding to the spatial amount of calcium. The results obtained from these experiments are encouraging. With this technique, from echocardiographic images collected for the same patient with different acquisition settings and different brightness, obtaining a calcium pixel count, where pixel values show an absolute pixel value margin of error of 3 (on a scale from 0 to 255), achieving a Pearson Correlation of 0.92 indicating a strong correlation with the human expert assessment of calcium area for the same images.

Entities:  

Keywords:  CT-scan; computed tomography; computer vision; coronary artery calcium; coronary artery disease; echocardiograms; feature extraction; image classification; ultrasound images

Year:  2021        PMID: 34202813     DOI: 10.3390/jpm11070598

Source DB:  PubMed          Journal:  J Pers Med        ISSN: 2075-4426


  15 in total

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5.  Clinical validation of an ultrasound quantification score for aortic valve calcifications.

Authors:  Kris Gillis; Gezim Bala; Bram Roosens; Sophie Hernot; Isabel Remory; Esther Scheirlynck; Jolien Geers; Steven Droogmans; Bernard Cosyns
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8.  Computed Tomography Aortic Valve Calcium Scoring in Patients With Aortic Stenosis.

Authors:  Tania Pawade; Marie-Annick Clavel; Christophe Tribouilloy; Julien Dreyfus; Tiffany Mathieu; Lionel Tastet; Cedric Renard; Mesut Gun; William Steven Arthur Jenkins; Laurent Macron; Jacob W Sechrist; Joan M Lacomis; Virginia Nguyen; Laura Galian Gay; Hug Cuéllar Calabria; Ioannis Ntalas; Timothy Robert Graham Cartlidge; Bernard Prendergast; Ronak Rajani; Arturo Evangelista; João L Cavalcante; David E Newby; Philippe Pibarot; David Messika Zeitoun; Marc R Dweck
Journal:  Circ Cardiovasc Imaging       Date:  2018-03       Impact factor: 7.792

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Review 10.  Leveraging the coronary calcium scan beyond the coronary calcium score.

Authors:  Daniel Bos; Maarten J G Leening
Journal:  Eur Radiol       Date:  2018-01-30       Impact factor: 5.315

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