Predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort: Results from APAC study

Abstract Commonly used prediction models have been primarily constructed without taking physical activity into account. Using the Kailuan physical activity cohorts from Asymptomatic Polyvascular Abnormalities in Community (APAC) study, we developed a 9‐year cardiovascular or cerebrovascular disease...

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Main Authors: Juan Zhao, Ye Yu, Xiaolan Zhu, Yuling Xie, Songwei Ai, H. Immo Lehmann, Xuan Deng, Feifei Hu, Guoping Li, Yong Zhou, Junjie Xiao
Format: Article
Language:English
Published: Wiley 2023-04-01
Series:MedComm
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Online Access:https://doi.org/10.1002/mco2.220
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author Juan Zhao
Ye Yu
Xiaolan Zhu
Yuling Xie
Songwei Ai
H. Immo Lehmann
Xuan Deng
Feifei Hu
Guoping Li
Yong Zhou
Junjie Xiao
author_facet Juan Zhao
Ye Yu
Xiaolan Zhu
Yuling Xie
Songwei Ai
H. Immo Lehmann
Xuan Deng
Feifei Hu
Guoping Li
Yong Zhou
Junjie Xiao
author_sort Juan Zhao
collection DOAJ
description Abstract Commonly used prediction models have been primarily constructed without taking physical activity into account. Using the Kailuan physical activity cohorts from Asymptomatic Polyvascular Abnormalities in Community (APAC) study, we developed a 9‐year cardiovascular or cerebrovascular disease (CVD) risk prediction equation. Participants in this study were included from APAC cohort, which included 5440 participants from the Kailuan cohort in China. Cox proportional hazard regression model was applied to construct sex‐specific risk prediction equations for the physical activity cohort (PA equation). Proposed equations were compared with the 10‐year risk prediction model, which is developed for atherosclerotic cardiovascular disease risk in Chinese cohorts (China‐PAR equation). C statistics of PA equations were 0.755 (95% confidence interval, 0.750–0.758) for men and 0.801 (95% confidence interval, 0.790–0.813) for women. The estimated area under the receiver operating characteristic curves in the validation set shows that the PA equations perform as good as the China‐PAR. From calibration among four categories of predicted risks, the predicted risk rates by PA equations were almost identical to the Kaplan–Meier observed rates. Therefore, our developed sex‐specific PA equations have effective performance for predicting CVD for physically active cohorts in the physical activity cohort in Kailuan.
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spelling doaj-art-64eb523e84bb441ab61494993d74dde02025-01-24T05:36:29ZengWileyMedComm2688-26632023-04-0142n/an/a10.1002/mco2.220Predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort: Results from APAC studyJuan Zhao0Ye Yu1Xiaolan Zhu2Yuling Xie3Songwei Ai4H. Immo Lehmann5Xuan Deng6Feifei Hu7Guoping Li8Yong Zhou9Junjie Xiao10Institute of Geriatrics (Shanghai University), Affiliated Nantong Hospital of Shanghai University (The Sixth People's Hospital of Nantong), School of Medicine Shanghai University Nantong ChinaClinical Research Institute, Shanghai General Hospital Shanghai Jiaotong University School of Medicine Shanghai ChinaInstitute of Geriatrics (Shanghai University), Affiliated Nantong Hospital of Shanghai University (The Sixth People's Hospital of Nantong), School of Medicine Shanghai University Nantong ChinaInstitute of Geriatrics (Shanghai University), Affiliated Nantong Hospital of Shanghai University (The Sixth People's Hospital of Nantong), School of Medicine Shanghai University Nantong ChinaInstitute of Geriatrics (Shanghai University), Affiliated Nantong Hospital of Shanghai University (The Sixth People's Hospital of Nantong), School of Medicine Shanghai University Nantong ChinaCardiovascular Division of the Massachusetts General Hospital and Harvard Medical School Boston Massachusetts USAClinical Research Institute, Shanghai General Hospital Shanghai Jiaotong University School of Medicine Shanghai ChinaClinical Research Institute, Shanghai General Hospital Shanghai Jiaotong University School of Medicine Shanghai ChinaCardiovascular Division of the Massachusetts General Hospital and Harvard Medical School Boston Massachusetts USAClinical Research Institute, Shanghai General Hospital Shanghai Jiaotong University School of Medicine Shanghai ChinaInstitute of Geriatrics (Shanghai University), Affiliated Nantong Hospital of Shanghai University (The Sixth People's Hospital of Nantong), School of Medicine Shanghai University Nantong ChinaAbstract Commonly used prediction models have been primarily constructed without taking physical activity into account. Using the Kailuan physical activity cohorts from Asymptomatic Polyvascular Abnormalities in Community (APAC) study, we developed a 9‐year cardiovascular or cerebrovascular disease (CVD) risk prediction equation. Participants in this study were included from APAC cohort, which included 5440 participants from the Kailuan cohort in China. Cox proportional hazard regression model was applied to construct sex‐specific risk prediction equations for the physical activity cohort (PA equation). Proposed equations were compared with the 10‐year risk prediction model, which is developed for atherosclerotic cardiovascular disease risk in Chinese cohorts (China‐PAR equation). C statistics of PA equations were 0.755 (95% confidence interval, 0.750–0.758) for men and 0.801 (95% confidence interval, 0.790–0.813) for women. The estimated area under the receiver operating characteristic curves in the validation set shows that the PA equations perform as good as the China‐PAR. From calibration among four categories of predicted risks, the predicted risk rates by PA equations were almost identical to the Kaplan–Meier observed rates. Therefore, our developed sex‐specific PA equations have effective performance for predicting CVD for physically active cohorts in the physical activity cohort in Kailuan.https://doi.org/10.1002/mco2.220cardiovascular diseasecerebrovascular diseasecohort studycox proportional hazard regressionphysical activity
spellingShingle Juan Zhao
Ye Yu
Xiaolan Zhu
Yuling Xie
Songwei Ai
H. Immo Lehmann
Xuan Deng
Feifei Hu
Guoping Li
Yong Zhou
Junjie Xiao
Predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort: Results from APAC study
MedComm
cardiovascular disease
cerebrovascular disease
cohort study
cox proportional hazard regression
physical activity
title Predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort: Results from APAC study
title_full Predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort: Results from APAC study
title_fullStr Predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort: Results from APAC study
title_full_unstemmed Predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort: Results from APAC study
title_short Predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort: Results from APAC study
title_sort predicting risk on cardiovascular or cerebrovascular disease based on a physical activity cohort results from apac study
topic cardiovascular disease
cerebrovascular disease
cohort study
cox proportional hazard regression
physical activity
url https://doi.org/10.1002/mco2.220
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