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Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study

PURPOSE: Assessment of cardiovascular risk is the keystone of prevention in cardiovascular disease. The objective of this pilot study was to estimate the cardiovascular risk score (American Hospital Association [AHA] risk score, Syntax risk, and SCORE risk score) with machine learning (ML) model bas...

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Autores principales: Arnould, Louis, Guenancia, Charles, Bourredjem, Abderrahmane, Binquet, Christine, Gabrielle, Pierre-Henry, Eid, Pétra, Baudin, Florian, Kawasaki, Ryo, Cottin, Yves, Creuzot-Garcher, Catherine, Jacquir, Sabir
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Association for Research in Vision and Ophthalmology 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8590163/
https://www.ncbi.nlm.nih.gov/pubmed/34767626
http://dx.doi.org/10.1167/tvst.10.13.20
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author Arnould, Louis
Guenancia, Charles
Bourredjem, Abderrahmane
Binquet, Christine
Gabrielle, Pierre-Henry
Eid, Pétra
Baudin, Florian
Kawasaki, Ryo
Cottin, Yves
Creuzot-Garcher, Catherine
Jacquir, Sabir
author_facet Arnould, Louis
Guenancia, Charles
Bourredjem, Abderrahmane
Binquet, Christine
Gabrielle, Pierre-Henry
Eid, Pétra
Baudin, Florian
Kawasaki, Ryo
Cottin, Yves
Creuzot-Garcher, Catherine
Jacquir, Sabir
author_sort Arnould, Louis
collection PubMed
description PURPOSE: Assessment of cardiovascular risk is the keystone of prevention in cardiovascular disease. The objective of this pilot study was to estimate the cardiovascular risk score (American Hospital Association [AHA] risk score, Syntax risk, and SCORE risk score) with machine learning (ML) model based on retinal vascular quantitative parameters. METHODS: We proposed supervised ML algorithm to predict cardiovascular parameters in patients with cardiovascular diseases treated in Dijon University Hospital using quantitative retinal vascular characteristics measured with fundus photography and optical coherence tomography – angiography (OCT-A) scans (alone and combined). To describe retinal microvascular network, we used the Singapore “I” Vessel Assessment (SIVA), which extracts vessel parameters from fundus photography and quantitative OCT-A retinal metrics of superficial retinal capillary plexus. RESULTS: The retinal and cardiovascular data of 144 patients were included. This paper presented a high prediction rate of the cardiovascular risk score. By means of the Naïve Bayes algorithm and SIVA + OCT-A data, the AHA risk score was predicted with 81.25% accuracy, the SCORE risk with 75.64% accuracy, and the Syntax score with 96.53% of accuracy. CONCLUSIONS: Performance of these algorithms demonstrated in this preliminary study that ML algorithms applied to quantitative retinal vascular parameters with SIVA software and OCT-A were able to predict cardiovascular scores with a robust rate. Quantitative retinal vascular biomarkers with the ML strategy might provide valuable data to implement predictive model for cardiovascular parameters. TRANSLATIONAL RELEVANCE: Small data set of quantitative retinal vascular parameters with fundus and with OCT-A can be used with ML learning to predict cardiovascular parameters.
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spelling pubmed-85901632021-11-24 Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study Arnould, Louis Guenancia, Charles Bourredjem, Abderrahmane Binquet, Christine Gabrielle, Pierre-Henry Eid, Pétra Baudin, Florian Kawasaki, Ryo Cottin, Yves Creuzot-Garcher, Catherine Jacquir, Sabir Transl Vis Sci Technol Article PURPOSE: Assessment of cardiovascular risk is the keystone of prevention in cardiovascular disease. The objective of this pilot study was to estimate the cardiovascular risk score (American Hospital Association [AHA] risk score, Syntax risk, and SCORE risk score) with machine learning (ML) model based on retinal vascular quantitative parameters. METHODS: We proposed supervised ML algorithm to predict cardiovascular parameters in patients with cardiovascular diseases treated in Dijon University Hospital using quantitative retinal vascular characteristics measured with fundus photography and optical coherence tomography – angiography (OCT-A) scans (alone and combined). To describe retinal microvascular network, we used the Singapore “I” Vessel Assessment (SIVA), which extracts vessel parameters from fundus photography and quantitative OCT-A retinal metrics of superficial retinal capillary plexus. RESULTS: The retinal and cardiovascular data of 144 patients were included. This paper presented a high prediction rate of the cardiovascular risk score. By means of the Naïve Bayes algorithm and SIVA + OCT-A data, the AHA risk score was predicted with 81.25% accuracy, the SCORE risk with 75.64% accuracy, and the Syntax score with 96.53% of accuracy. CONCLUSIONS: Performance of these algorithms demonstrated in this preliminary study that ML algorithms applied to quantitative retinal vascular parameters with SIVA software and OCT-A were able to predict cardiovascular scores with a robust rate. Quantitative retinal vascular biomarkers with the ML strategy might provide valuable data to implement predictive model for cardiovascular parameters. TRANSLATIONAL RELEVANCE: Small data set of quantitative retinal vascular parameters with fundus and with OCT-A can be used with ML learning to predict cardiovascular parameters. The Association for Research in Vision and Ophthalmology 2021-11-12 /pmc/articles/PMC8590163/ /pubmed/34767626 http://dx.doi.org/10.1167/tvst.10.13.20 Text en Copyright 2021 The Authors https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License.
spellingShingle Article
Arnould, Louis
Guenancia, Charles
Bourredjem, Abderrahmane
Binquet, Christine
Gabrielle, Pierre-Henry
Eid, Pétra
Baudin, Florian
Kawasaki, Ryo
Cottin, Yves
Creuzot-Garcher, Catherine
Jacquir, Sabir
Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study
title Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study
title_full Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study
title_fullStr Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study
title_full_unstemmed Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study
title_short Prediction of Cardiovascular Parameters With Supervised Machine Learning From Singapore “I” Vessel Assessment and OCT-Angiography: A Pilot Study
title_sort prediction of cardiovascular parameters with supervised machine learning from singapore “i” vessel assessment and oct-angiography: a pilot study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8590163/
https://www.ncbi.nlm.nih.gov/pubmed/34767626
http://dx.doi.org/10.1167/tvst.10.13.20
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