A Cox-Based Risk Prediction Model for Early Detection of Cardiovascular Disease: Identification of Key Risk Factors for the Development of a 10-Year CVD Risk Prediction

Background and Objective. Current cardiovascular disease (CVD) risk models are typically based on traditional laboratory-based predictors. The objective of this research was to identify key risk factors that affect the CVD risk prediction and to develop a 10-year CVD risk prediction model using the...

Full description

Bibliographic Details
Main Authors: Xiaona Jia, Mirza Mansoor Baig, Farhaan Mirza, Hamid GholamHosseini
Format: Article
Language:English
Published: Hindawi Limited 2019-01-01
Series:Advances in Preventive Medicine
Online Access:http://dx.doi.org/10.1155/2019/8392348
id doaj-42821fbe5f5d45c1bdae9e2aa3b4973b
record_format Article
spelling doaj-42821fbe5f5d45c1bdae9e2aa3b4973b2020-11-24T21:45:44ZengHindawi LimitedAdvances in Preventive Medicine2090-34802090-34992019-01-01201910.1155/2019/83923488392348A Cox-Based Risk Prediction Model for Early Detection of Cardiovascular Disease: Identification of Key Risk Factors for the Development of a 10-Year CVD Risk PredictionXiaona Jia0Mirza Mansoor Baig1Farhaan Mirza2Hamid GholamHosseini3School of Engineering, Computer and Mathematical Sciences, Auckland University of Technology, Private Bag 92006, Auckland 1142, New ZealandSchool of Engineering, Computer and Mathematical Sciences, Auckland University of Technology, Private Bag 92006, Auckland 1142, New ZealandSchool of Engineering, Computer and Mathematical Sciences, Auckland University of Technology, Private Bag 92006, Auckland 1142, New ZealandSchool of Engineering, Computer and Mathematical Sciences, Auckland University of Technology, Private Bag 92006, Auckland 1142, New ZealandBackground and Objective. Current cardiovascular disease (CVD) risk models are typically based on traditional laboratory-based predictors. The objective of this research was to identify key risk factors that affect the CVD risk prediction and to develop a 10-year CVD risk prediction model using the identified risk factors. Methods. A Cox proportional hazard regression method was applied to generate the proposed risk model. We used the dataset from Framingham Original Cohort of 5079 men and women aged 30-62 years, who had no overt symptoms of CVD at the baseline; among the selected cohort 3189 had a CVD event. Results. A 10-year CVD risk model based on multiple risk factors (such as age, sex, body mass index (BMI), hypertension, systolic blood pressure (SBP), cigarettes per day, pulse rate, and diabetes) was developed in which heart rate was identified as one of the novel risk factors. The proposed model achieved a good discrimination and calibration ability with C-index (receiver operating characteristic (ROC)) being 0.71 in the validation dataset. We validated the model via statistical and empirical validation. Conclusion. The proposed CVD risk prediction model is based on standard risk factors, which could help reduce the cost and time required for conducting the clinical/laboratory tests. Healthcare providers, clinicians, and patients can use this tool to see the 10-year risk of CVD for an individual. Heart rate was incorporated as a novel predictor, which extends the predictive ability of the past existing risk equations.http://dx.doi.org/10.1155/2019/8392348
collection DOAJ
language English
format Article
sources DOAJ
author Xiaona Jia
Mirza Mansoor Baig
Farhaan Mirza
Hamid GholamHosseini
spellingShingle Xiaona Jia
Mirza Mansoor Baig
Farhaan Mirza
Hamid GholamHosseini
A Cox-Based Risk Prediction Model for Early Detection of Cardiovascular Disease: Identification of Key Risk Factors for the Development of a 10-Year CVD Risk Prediction
Advances in Preventive Medicine
author_facet Xiaona Jia
Mirza Mansoor Baig
Farhaan Mirza
Hamid GholamHosseini
author_sort Xiaona Jia
title A Cox-Based Risk Prediction Model for Early Detection of Cardiovascular Disease: Identification of Key Risk Factors for the Development of a 10-Year CVD Risk Prediction
title_short A Cox-Based Risk Prediction Model for Early Detection of Cardiovascular Disease: Identification of Key Risk Factors for the Development of a 10-Year CVD Risk Prediction
title_full A Cox-Based Risk Prediction Model for Early Detection of Cardiovascular Disease: Identification of Key Risk Factors for the Development of a 10-Year CVD Risk Prediction
title_fullStr A Cox-Based Risk Prediction Model for Early Detection of Cardiovascular Disease: Identification of Key Risk Factors for the Development of a 10-Year CVD Risk Prediction
title_full_unstemmed A Cox-Based Risk Prediction Model for Early Detection of Cardiovascular Disease: Identification of Key Risk Factors for the Development of a 10-Year CVD Risk Prediction
title_sort cox-based risk prediction model for early detection of cardiovascular disease: identification of key risk factors for the development of a 10-year cvd risk prediction
publisher Hindawi Limited
series Advances in Preventive Medicine
issn 2090-3480
2090-3499
publishDate 2019-01-01
description Background and Objective. Current cardiovascular disease (CVD) risk models are typically based on traditional laboratory-based predictors. The objective of this research was to identify key risk factors that affect the CVD risk prediction and to develop a 10-year CVD risk prediction model using the identified risk factors. Methods. A Cox proportional hazard regression method was applied to generate the proposed risk model. We used the dataset from Framingham Original Cohort of 5079 men and women aged 30-62 years, who had no overt symptoms of CVD at the baseline; among the selected cohort 3189 had a CVD event. Results. A 10-year CVD risk model based on multiple risk factors (such as age, sex, body mass index (BMI), hypertension, systolic blood pressure (SBP), cigarettes per day, pulse rate, and diabetes) was developed in which heart rate was identified as one of the novel risk factors. The proposed model achieved a good discrimination and calibration ability with C-index (receiver operating characteristic (ROC)) being 0.71 in the validation dataset. We validated the model via statistical and empirical validation. Conclusion. The proposed CVD risk prediction model is based on standard risk factors, which could help reduce the cost and time required for conducting the clinical/laboratory tests. Healthcare providers, clinicians, and patients can use this tool to see the 10-year risk of CVD for an individual. Heart rate was incorporated as a novel predictor, which extends the predictive ability of the past existing risk equations.
url http://dx.doi.org/10.1155/2019/8392348
work_keys_str_mv AT xiaonajia acoxbasedriskpredictionmodelforearlydetectionofcardiovasculardiseaseidentificationofkeyriskfactorsforthedevelopmentofa10yearcvdriskprediction
AT mirzamansoorbaig acoxbasedriskpredictionmodelforearlydetectionofcardiovasculardiseaseidentificationofkeyriskfactorsforthedevelopmentofa10yearcvdriskprediction
AT farhaanmirza acoxbasedriskpredictionmodelforearlydetectionofcardiovasculardiseaseidentificationofkeyriskfactorsforthedevelopmentofa10yearcvdriskprediction
AT hamidgholamhosseini acoxbasedriskpredictionmodelforearlydetectionofcardiovasculardiseaseidentificationofkeyriskfactorsforthedevelopmentofa10yearcvdriskprediction
AT xiaonajia coxbasedriskpredictionmodelforearlydetectionofcardiovasculardiseaseidentificationofkeyriskfactorsforthedevelopmentofa10yearcvdriskprediction
AT mirzamansoorbaig coxbasedriskpredictionmodelforearlydetectionofcardiovasculardiseaseidentificationofkeyriskfactorsforthedevelopmentofa10yearcvdriskprediction
AT farhaanmirza coxbasedriskpredictionmodelforearlydetectionofcardiovasculardiseaseidentificationofkeyriskfactorsforthedevelopmentofa10yearcvdriskprediction
AT hamidgholamhosseini coxbasedriskpredictionmodelforearlydetectionofcardiovasculardiseaseidentificationofkeyriskfactorsforthedevelopmentofa10yearcvdriskprediction
_version_ 1725904613044912128