Cargando…

Relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence

OBJECTIVE: The study evaluates the relationship of coronary stenosis, atherosclerotic plaque characteristics (APCs) and age using artificial intelligence enabled quantitative coronary computed tomographic angiography (AI-QCT). METHODS: This is a post-hoc analysis of data from 303 subjects enrolled i...

Descripción completa

Detalles Bibliográficos
Autores principales: Jonas, Rebecca, Earls, James, Marques, Hugo, Chang, Hyuk-Jae, Choi, Jung Hyun, Doh, Joon-Hyung, Her, Ae-Young, Koo, Bon Kwon, Nam, Chang-Wook, Park, Hyung-Bok, Shin, Sanghoon, Cole, Jason, Gimelli, Alessia, Khan, Muhammad Akram, Lu, Bin, Gao, Yang, Nabi, Faisal, Nakazato, Ryo, Schoepf, U Joseph, Driessen, Roel S, Bom, Michiel J, Thompson, Randall C, Jang, James J, Ridner, Michael, Rowan, Chris, Avelar, Erick, Généreux, Philippe, Knaapen, Paul, de Waard, Guus A, Pontone, Gianluca, Andreini, Daniele, Al-Mallah, Mouaz H, Jennings, Robert, Crabtree, Tami R, Villines, Todd C, Min, James K, Choi, Andrew D
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8596051/
https://www.ncbi.nlm.nih.gov/pubmed/34785589
http://dx.doi.org/10.1136/openhrt-2021-001832
_version_ 1784600277966389248
author Jonas, Rebecca
Earls, James
Marques, Hugo
Chang, Hyuk-Jae
Choi, Jung Hyun
Doh, Joon-Hyung
Her, Ae-Young
Koo, Bon Kwon
Nam, Chang-Wook
Park, Hyung-Bok
Shin, Sanghoon
Cole, Jason
Gimelli, Alessia
Khan, Muhammad Akram
Lu, Bin
Gao, Yang
Nabi, Faisal
Nakazato, Ryo
Schoepf, U Joseph
Driessen, Roel S
Bom, Michiel J
Thompson, Randall C
Jang, James J
Ridner, Michael
Rowan, Chris
Avelar, Erick
Généreux, Philippe
Knaapen, Paul
de Waard, Guus A
Pontone, Gianluca
Andreini, Daniele
Al-Mallah, Mouaz H
Jennings, Robert
Crabtree, Tami R
Villines, Todd C
Min, James K
Choi, Andrew D
author_facet Jonas, Rebecca
Earls, James
Marques, Hugo
Chang, Hyuk-Jae
Choi, Jung Hyun
Doh, Joon-Hyung
Her, Ae-Young
Koo, Bon Kwon
Nam, Chang-Wook
Park, Hyung-Bok
Shin, Sanghoon
Cole, Jason
Gimelli, Alessia
Khan, Muhammad Akram
Lu, Bin
Gao, Yang
Nabi, Faisal
Nakazato, Ryo
Schoepf, U Joseph
Driessen, Roel S
Bom, Michiel J
Thompson, Randall C
Jang, James J
Ridner, Michael
Rowan, Chris
Avelar, Erick
Généreux, Philippe
Knaapen, Paul
de Waard, Guus A
Pontone, Gianluca
Andreini, Daniele
Al-Mallah, Mouaz H
Jennings, Robert
Crabtree, Tami R
Villines, Todd C
Min, James K
Choi, Andrew D
author_sort Jonas, Rebecca
collection PubMed
description OBJECTIVE: The study evaluates the relationship of coronary stenosis, atherosclerotic plaque characteristics (APCs) and age using artificial intelligence enabled quantitative coronary computed tomographic angiography (AI-QCT). METHODS: This is a post-hoc analysis of data from 303 subjects enrolled in the CREDENCE (Computed TomogRaphic Evaluation of Atherosclerotic Determinants of Myocardial IsChEmia) trial who were referred for invasive coronary angiography and subsequently underwent coronary computed tomographic angiography (CCTA). In this study, a blinded core laboratory analysing quantitative coronary angiography images classified lesions as obstructive (≥50%) or non-obstructive (<50%) while AI software quantified APCs including plaque volume (PV), low-density non-calcified plaque (LD-NCP), non-calcified plaque (NCP), calcified plaque (CP), lesion length on a per-patient and per-lesion basis based on CCTA imaging. Plaque measurements were normalised for vessel volume and reported as % percent atheroma volume (%PAV) for all relevant plaque components. Data were subsequently stratified by age <65 and ≥65 years. RESULTS: The cohort was 64.4±10.2 years and 29% women. Overall, patients >65 had more PV and CP than patients <65. On a lesion level, patients >65 had more CP than younger patients in both obstructive (29.2 mm(3) vs 48.2 mm(3); p<0.04) and non-obstructive lesions (22.1 mm(3) vs 49.4 mm(3); p<0.004) while younger patients had more %PAV (LD-NCP) (1.5% vs 0.7%; p<0.038). Younger patients had more PV, LD-NCP, NCP and lesion lengths in obstructive compared with non-obstructive lesions. There were no differences observed between lesion types in older patients. CONCLUSION: AI-QCT identifies a unique APC signature that differs by age and degree of stenosis and provides a foundation for AI-guided age-based approaches to atherosclerosis identification, prevention and treatment.
format Online
Article
Text
id pubmed-8596051
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher BMJ Publishing Group
record_format MEDLINE/PubMed
spelling pubmed-85960512021-11-24 Relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence Jonas, Rebecca Earls, James Marques, Hugo Chang, Hyuk-Jae Choi, Jung Hyun Doh, Joon-Hyung Her, Ae-Young Koo, Bon Kwon Nam, Chang-Wook Park, Hyung-Bok Shin, Sanghoon Cole, Jason Gimelli, Alessia Khan, Muhammad Akram Lu, Bin Gao, Yang Nabi, Faisal Nakazato, Ryo Schoepf, U Joseph Driessen, Roel S Bom, Michiel J Thompson, Randall C Jang, James J Ridner, Michael Rowan, Chris Avelar, Erick Généreux, Philippe Knaapen, Paul de Waard, Guus A Pontone, Gianluca Andreini, Daniele Al-Mallah, Mouaz H Jennings, Robert Crabtree, Tami R Villines, Todd C Min, James K Choi, Andrew D Open Heart Coronary Artery Disease OBJECTIVE: The study evaluates the relationship of coronary stenosis, atherosclerotic plaque characteristics (APCs) and age using artificial intelligence enabled quantitative coronary computed tomographic angiography (AI-QCT). METHODS: This is a post-hoc analysis of data from 303 subjects enrolled in the CREDENCE (Computed TomogRaphic Evaluation of Atherosclerotic Determinants of Myocardial IsChEmia) trial who were referred for invasive coronary angiography and subsequently underwent coronary computed tomographic angiography (CCTA). In this study, a blinded core laboratory analysing quantitative coronary angiography images classified lesions as obstructive (≥50%) or non-obstructive (<50%) while AI software quantified APCs including plaque volume (PV), low-density non-calcified plaque (LD-NCP), non-calcified plaque (NCP), calcified plaque (CP), lesion length on a per-patient and per-lesion basis based on CCTA imaging. Plaque measurements were normalised for vessel volume and reported as % percent atheroma volume (%PAV) for all relevant plaque components. Data were subsequently stratified by age <65 and ≥65 years. RESULTS: The cohort was 64.4±10.2 years and 29% women. Overall, patients >65 had more PV and CP than patients <65. On a lesion level, patients >65 had more CP than younger patients in both obstructive (29.2 mm(3) vs 48.2 mm(3); p<0.04) and non-obstructive lesions (22.1 mm(3) vs 49.4 mm(3); p<0.004) while younger patients had more %PAV (LD-NCP) (1.5% vs 0.7%; p<0.038). Younger patients had more PV, LD-NCP, NCP and lesion lengths in obstructive compared with non-obstructive lesions. There were no differences observed between lesion types in older patients. CONCLUSION: AI-QCT identifies a unique APC signature that differs by age and degree of stenosis and provides a foundation for AI-guided age-based approaches to atherosclerosis identification, prevention and treatment. BMJ Publishing Group 2021-11-16 /pmc/articles/PMC8596051/ /pubmed/34785589 http://dx.doi.org/10.1136/openhrt-2021-001832 Text en © Author(s) (or their employer(s)) 2021. 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
Jonas, Rebecca
Earls, James
Marques, Hugo
Chang, Hyuk-Jae
Choi, Jung Hyun
Doh, Joon-Hyung
Her, Ae-Young
Koo, Bon Kwon
Nam, Chang-Wook
Park, Hyung-Bok
Shin, Sanghoon
Cole, Jason
Gimelli, Alessia
Khan, Muhammad Akram
Lu, Bin
Gao, Yang
Nabi, Faisal
Nakazato, Ryo
Schoepf, U Joseph
Driessen, Roel S
Bom, Michiel J
Thompson, Randall C
Jang, James J
Ridner, Michael
Rowan, Chris
Avelar, Erick
Généreux, Philippe
Knaapen, Paul
de Waard, Guus A
Pontone, Gianluca
Andreini, Daniele
Al-Mallah, Mouaz H
Jennings, Robert
Crabtree, Tami R
Villines, Todd C
Min, James K
Choi, Andrew D
Relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence
title Relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence
title_full Relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence
title_fullStr Relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence
title_full_unstemmed Relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence
title_short Relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence
title_sort relationship of age, atherosclerosis and angiographic stenosis using artificial intelligence
topic Coronary Artery Disease
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8596051/
https://www.ncbi.nlm.nih.gov/pubmed/34785589
http://dx.doi.org/10.1136/openhrt-2021-001832
work_keys_str_mv AT jonasrebecca relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT earlsjames relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT marqueshugo relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT changhyukjae relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT choijunghyun relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT dohjoonhyung relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT heraeyoung relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT koobonkwon relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT namchangwook relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT parkhyungbok relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT shinsanghoon relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT colejason relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT gimellialessia relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT khanmuhammadakram relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT lubin relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT gaoyang relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT nabifaisal relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT nakazatoryo relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT schoepfujoseph relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT driessenroels relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT bommichielj relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT thompsonrandallc relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT jangjamesj relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT ridnermichael relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT rowanchris relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT avelarerick relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT genereuxphilippe relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT knaapenpaul relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT dewaardguusa relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT pontonegianluca relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT andreinidaniele relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT almallahmouazh relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT jenningsrobert relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT crabtreetamir relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT villinestoddc relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT minjamesk relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence
AT choiandrewd relationshipofageatherosclerosisandangiographicstenosisusingartificialintelligence