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Prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world

OBJECTIVE: To evaluate the performance of the non-laboratory INTERHEART risk score (NL-IHRS) to predict incident cardiovascular disease (CVD) across seven major geographic regions of the world. The secondary objective was to evaluate the performance of the fasting cholesterol-based IHRS (FC-IHRS). M...

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Autores principales: Joseph, Philip, Yusuf, Salim, Lee, Shun Fu, Ibrahim, Quazi, Teo, Koon, Rangarajan, Sumathy, Gupta, Rajeev, Rosengren, Annika, Lear, Scott A, Avezum, Alvaro, Lopez-Jaramillo, Patricio, Gulec, Sadi, Yusufali, Afzalhussein, Chifamba, Jephat, Lanas, Fernando, Kumar, Rajesh, Mohammadifard, Noushin, Mohan, Viswanathan, Mony, Prem, Kruger, Annamarie, Liu, Xu, Guo, Baoxia, Zhao, Wenqi, Yang, Youzhu, Pillai, Rajamohanan, Diaz, Rafael, Krishnapillai, Ambigga, Iqbal, Romaina, Yusuf, Rita, Szuba, Andrzej, Anand, Sonia S
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5861396/
https://www.ncbi.nlm.nih.gov/pubmed/29066611
http://dx.doi.org/10.1136/heartjnl-2017-311609
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author Joseph, Philip
Yusuf, Salim
Lee, Shun Fu
Ibrahim, Quazi
Teo, Koon
Rangarajan, Sumathy
Gupta, Rajeev
Rosengren, Annika
Lear, Scott A
Avezum, Alvaro
Lopez-Jaramillo, Patricio
Gulec, Sadi
Yusufali, Afzalhussein
Chifamba, Jephat
Lanas, Fernando
Kumar, Rajesh
Mohammadifard, Noushin
Mohan, Viswanathan
Mony, Prem
Kruger, Annamarie
Liu, Xu
Guo, Baoxia
Zhao, Wenqi
Yang, Youzhu
Pillai, Rajamohanan
Diaz, Rafael
Krishnapillai, Ambigga
Iqbal, Romaina
Yusuf, Rita
Szuba, Andrzej
Anand, Sonia S
author_facet Joseph, Philip
Yusuf, Salim
Lee, Shun Fu
Ibrahim, Quazi
Teo, Koon
Rangarajan, Sumathy
Gupta, Rajeev
Rosengren, Annika
Lear, Scott A
Avezum, Alvaro
Lopez-Jaramillo, Patricio
Gulec, Sadi
Yusufali, Afzalhussein
Chifamba, Jephat
Lanas, Fernando
Kumar, Rajesh
Mohammadifard, Noushin
Mohan, Viswanathan
Mony, Prem
Kruger, Annamarie
Liu, Xu
Guo, Baoxia
Zhao, Wenqi
Yang, Youzhu
Pillai, Rajamohanan
Diaz, Rafael
Krishnapillai, Ambigga
Iqbal, Romaina
Yusuf, Rita
Szuba, Andrzej
Anand, Sonia S
author_sort Joseph, Philip
collection PubMed
description OBJECTIVE: To evaluate the performance of the non-laboratory INTERHEART risk score (NL-IHRS) to predict incident cardiovascular disease (CVD) across seven major geographic regions of the world. The secondary objective was to evaluate the performance of the fasting cholesterol-based IHRS (FC-IHRS). METHODS: Using measures of discrimination and calibration, we tested the performance of the NL-IHRS (n=100 475) and FC-IHRS (n=107 863) for predicting incident CVD in a community-based, prospective study across seven geographic regions: South Asia, China, Southeast Asia, Middle East, Europe/North America, South America and Africa. CVD was defined as the composite of cardiovascular death, myocardial infarction, stroke, heart failure or coronary revascularisation. RESULTS: Mean age of the study population was 50.53 (SD 9.79) years and mean follow-up was 4.89 (SD 2.24) years. The NL-IHRS had moderate to good discrimination for incident CVD across geographic regions (concordance statistic (C-statistic) ranging from 0.64 to 0.74), although recalibration was necessary in all regions, which improved its performance in the overall cohort (increase in C-statistic from 0.69 to 0.72, p<0.001). Regional recalibration was also necessary for the FC-IHRS, which also improved its overall discrimination (increase in C-statistic from 0.71 to 0.74, p<0.001). In 85 078 participants with complete data for both scores, discrimination was only modestly better with the FC-IHRS compared with the NL-IHRS (0.74 vs 0.73, p<0.001). CONCLUSIONS: External validations of the NL-IHRS and FC-IHRS suggest that regionally recalibrated versions of both can be useful for estimating CVD risk across a diverse range of community-based populations. CVD prediction using a non-laboratory score can provide similar accuracy to laboratory-based methods.
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spelling pubmed-58613962018-03-22 Prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world Joseph, Philip Yusuf, Salim Lee, Shun Fu Ibrahim, Quazi Teo, Koon Rangarajan, Sumathy Gupta, Rajeev Rosengren, Annika Lear, Scott A Avezum, Alvaro Lopez-Jaramillo, Patricio Gulec, Sadi Yusufali, Afzalhussein Chifamba, Jephat Lanas, Fernando Kumar, Rajesh Mohammadifard, Noushin Mohan, Viswanathan Mony, Prem Kruger, Annamarie Liu, Xu Guo, Baoxia Zhao, Wenqi Yang, Youzhu Pillai, Rajamohanan Diaz, Rafael Krishnapillai, Ambigga Iqbal, Romaina Yusuf, Rita Szuba, Andrzej Anand, Sonia S Heart Cardiac Risk Factors and Prevention OBJECTIVE: To evaluate the performance of the non-laboratory INTERHEART risk score (NL-IHRS) to predict incident cardiovascular disease (CVD) across seven major geographic regions of the world. The secondary objective was to evaluate the performance of the fasting cholesterol-based IHRS (FC-IHRS). METHODS: Using measures of discrimination and calibration, we tested the performance of the NL-IHRS (n=100 475) and FC-IHRS (n=107 863) for predicting incident CVD in a community-based, prospective study across seven geographic regions: South Asia, China, Southeast Asia, Middle East, Europe/North America, South America and Africa. CVD was defined as the composite of cardiovascular death, myocardial infarction, stroke, heart failure or coronary revascularisation. RESULTS: Mean age of the study population was 50.53 (SD 9.79) years and mean follow-up was 4.89 (SD 2.24) years. The NL-IHRS had moderate to good discrimination for incident CVD across geographic regions (concordance statistic (C-statistic) ranging from 0.64 to 0.74), although recalibration was necessary in all regions, which improved its performance in the overall cohort (increase in C-statistic from 0.69 to 0.72, p<0.001). Regional recalibration was also necessary for the FC-IHRS, which also improved its overall discrimination (increase in C-statistic from 0.71 to 0.74, p<0.001). In 85 078 participants with complete data for both scores, discrimination was only modestly better with the FC-IHRS compared with the NL-IHRS (0.74 vs 0.73, p<0.001). CONCLUSIONS: External validations of the NL-IHRS and FC-IHRS suggest that regionally recalibrated versions of both can be useful for estimating CVD risk across a diverse range of community-based populations. CVD prediction using a non-laboratory score can provide similar accuracy to laboratory-based methods. BMJ Publishing Group 2018-04 2017-10-24 /pmc/articles/PMC5861396/ /pubmed/29066611 http://dx.doi.org/10.1136/heartjnl-2017-311609 Text en © Article author(s) (or their employer(s) unless otherwise stated in the text of the article) 2018. All rights reserved. No commercial use is permitted unless otherwise expressly granted. 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 and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/
spellingShingle Cardiac Risk Factors and Prevention
Joseph, Philip
Yusuf, Salim
Lee, Shun Fu
Ibrahim, Quazi
Teo, Koon
Rangarajan, Sumathy
Gupta, Rajeev
Rosengren, Annika
Lear, Scott A
Avezum, Alvaro
Lopez-Jaramillo, Patricio
Gulec, Sadi
Yusufali, Afzalhussein
Chifamba, Jephat
Lanas, Fernando
Kumar, Rajesh
Mohammadifard, Noushin
Mohan, Viswanathan
Mony, Prem
Kruger, Annamarie
Liu, Xu
Guo, Baoxia
Zhao, Wenqi
Yang, Youzhu
Pillai, Rajamohanan
Diaz, Rafael
Krishnapillai, Ambigga
Iqbal, Romaina
Yusuf, Rita
Szuba, Andrzej
Anand, Sonia S
Prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world
title Prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world
title_full Prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world
title_fullStr Prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world
title_full_unstemmed Prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world
title_short Prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world
title_sort prognostic validation of a non-laboratory and a laboratory based cardiovascular disease risk score in multiple regions of the world
topic Cardiac Risk Factors and Prevention
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5861396/
https://www.ncbi.nlm.nih.gov/pubmed/29066611
http://dx.doi.org/10.1136/heartjnl-2017-311609
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