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Interoperator reliability of an on-site machine learning-based prototype to estimate CT angiography-derived fractional flow reserve

BACKGROUND: Advances in CT and machine learning have enabled on-site non-invasive assessment of fractional flow reserve (FFR(CT)). PURPOSE: To assess the interoperator and intraoperator variability of coronary CT angiography-derived FFR(CT) using a machine learning-based postprocessing prototype. MA...

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Autores principales: Han, Yushui, Ahmed, Ahmed Ibrahim, Schwemmer, Chris, Cocker, Myra, Alnabelsi, Talal S, Saad, Jean Michel, Ramirez Giraldo, Juan C, Al-Mallah, Mouaz H
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8938695/
https://www.ncbi.nlm.nih.gov/pubmed/35314508
http://dx.doi.org/10.1136/openhrt-2021-001951
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author Han, Yushui
Ahmed, Ahmed Ibrahim
Schwemmer, Chris
Cocker, Myra
Alnabelsi, Talal S
Saad, Jean Michel
Ramirez Giraldo, Juan C
Al-Mallah, Mouaz H
author_facet Han, Yushui
Ahmed, Ahmed Ibrahim
Schwemmer, Chris
Cocker, Myra
Alnabelsi, Talal S
Saad, Jean Michel
Ramirez Giraldo, Juan C
Al-Mallah, Mouaz H
author_sort Han, Yushui
collection PubMed
description BACKGROUND: Advances in CT and machine learning have enabled on-site non-invasive assessment of fractional flow reserve (FFR(CT)). PURPOSE: To assess the interoperator and intraoperator variability of coronary CT angiography-derived FFR(CT) using a machine learning-based postprocessing prototype. MATERIALS AND METHODS: We included 60 symptomatic patients who underwent coronary CT angiography. FFR(CT) was calculated by two independent operators after training using a machine learning-based on-site prototype. FFR(CT) was measured 1 cm distal to the coronary plaque or in the middle of the segments if no coronary lesions were present. Intraclass correlation coefficient (ICC) and Bland-Altman analysis were used to evaluate interoperator variability effect in FFR(CT) estimates. Sensitivity analysis was done by cardiac risk factors, degree of stenosis and image quality. RESULTS: A total of 535 coronary segments in 60 patients were assessed. The overall ICC was 0.986 per patient (95% CI 0.977 to 0.992) and 0.972 per segment (95% CI 0.967 to 0.977). The absolute mean difference in FFR(CT) estimates was 0.012 per patient (95% CI for limits of agreement: −0.035 to 0.039) and 0.02 per segment (95% CI for limits of agreement: −0.077 to 0.080). Tight limits of agreement were seen on Bland-Altman analysis. Distal segments had greater variability compared with proximal/mid segments (absolute mean difference 0.011 vs 0.025, p<0.001). Results were similar on sensitivity analysis. CONCLUSION: A high degree of interoperator and intraoperator reproducibility can be achieved by on-site machine learning-based FFR(CT) assessment. Future research is required to evaluate the physiological relevance and prognostic value of FFR(CT).
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spelling pubmed-89386952022-04-11 Interoperator reliability of an on-site machine learning-based prototype to estimate CT angiography-derived fractional flow reserve Han, Yushui Ahmed, Ahmed Ibrahim Schwemmer, Chris Cocker, Myra Alnabelsi, Talal S Saad, Jean Michel Ramirez Giraldo, Juan C Al-Mallah, Mouaz H Open Heart Coronary Artery Disease BACKGROUND: Advances in CT and machine learning have enabled on-site non-invasive assessment of fractional flow reserve (FFR(CT)). PURPOSE: To assess the interoperator and intraoperator variability of coronary CT angiography-derived FFR(CT) using a machine learning-based postprocessing prototype. MATERIALS AND METHODS: We included 60 symptomatic patients who underwent coronary CT angiography. FFR(CT) was calculated by two independent operators after training using a machine learning-based on-site prototype. FFR(CT) was measured 1 cm distal to the coronary plaque or in the middle of the segments if no coronary lesions were present. Intraclass correlation coefficient (ICC) and Bland-Altman analysis were used to evaluate interoperator variability effect in FFR(CT) estimates. Sensitivity analysis was done by cardiac risk factors, degree of stenosis and image quality. RESULTS: A total of 535 coronary segments in 60 patients were assessed. The overall ICC was 0.986 per patient (95% CI 0.977 to 0.992) and 0.972 per segment (95% CI 0.967 to 0.977). The absolute mean difference in FFR(CT) estimates was 0.012 per patient (95% CI for limits of agreement: −0.035 to 0.039) and 0.02 per segment (95% CI for limits of agreement: −0.077 to 0.080). Tight limits of agreement were seen on Bland-Altman analysis. Distal segments had greater variability compared with proximal/mid segments (absolute mean difference 0.011 vs 0.025, p<0.001). Results were similar on sensitivity analysis. CONCLUSION: A high degree of interoperator and intraoperator reproducibility can be achieved by on-site machine learning-based FFR(CT) assessment. Future research is required to evaluate the physiological relevance and prognostic value of FFR(CT). BMJ Publishing Group 2022-03-21 /pmc/articles/PMC8938695/ /pubmed/35314508 http://dx.doi.org/10.1136/openhrt-2021-001951 Text en © Author(s) (or their employer(s)) 2022. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited, appropriate credit is given, any changes made indicated, and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) .
spellingShingle Coronary Artery Disease
Han, Yushui
Ahmed, Ahmed Ibrahim
Schwemmer, Chris
Cocker, Myra
Alnabelsi, Talal S
Saad, Jean Michel
Ramirez Giraldo, Juan C
Al-Mallah, Mouaz H
Interoperator reliability of an on-site machine learning-based prototype to estimate CT angiography-derived fractional flow reserve
title Interoperator reliability of an on-site machine learning-based prototype to estimate CT angiography-derived fractional flow reserve
title_full Interoperator reliability of an on-site machine learning-based prototype to estimate CT angiography-derived fractional flow reserve
title_fullStr Interoperator reliability of an on-site machine learning-based prototype to estimate CT angiography-derived fractional flow reserve
title_full_unstemmed Interoperator reliability of an on-site machine learning-based prototype to estimate CT angiography-derived fractional flow reserve
title_short Interoperator reliability of an on-site machine learning-based prototype to estimate CT angiography-derived fractional flow reserve
title_sort interoperator reliability of an on-site machine learning-based prototype to estimate ct angiography-derived fractional flow reserve
topic Coronary Artery Disease
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8938695/
https://www.ncbi.nlm.nih.gov/pubmed/35314508
http://dx.doi.org/10.1136/openhrt-2021-001951
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