Skip to main content
Top
Published in: BMC Cardiovascular Disorders 1/2021

Open Access 01-12-2021 | CABG | Research article

Risk factors associated with major adverse cardiac and cerebrovascular events following percutaneous coronary intervention: a 10-year follow-up comparing random survival forest and Cox proportional-hazards model

Authors: Maryam Farhadian, Sahar Dehdar Karsidani, Azadeh Mozayanimonfared, Hossein Mahjub

Published in: BMC Cardiovascular Disorders | Issue 1/2021

Login to get access

Abstract

Background

Due to the limited number of studies with long term follow-up of patients undergoing Percutaneous Coronary Intervention (PCI), we investigated the occurrence of Major Adverse Cardiac and Cerebrovascular Events (MACCE) during 10 years of follow-up after coronary angioplasty using Random Survival Forest (RSF) and Cox proportional hazards models.

Methods

The current retrospective cohort study was performed on 220 patients (69 women and 151 men) undergoing coronary angioplasty from March 2009 to March 2012 in Farchshian Medical Center in Hamadan city, Iran. Survival time (month) as the response variable was considered from the date of angioplasty to the main endpoint or the end of the follow-up period (September 2019). To identify the factors influencing the occurrence of MACCE, the performance of Cox and RSF models were investigated in terms of C index, Integrated Brier Score (IBS) and prediction error criteria.

Results

Ninety-six patients (43.7%) experienced MACCE by the end of the follow-up period, and the median survival time was estimated to be 98 months. Survival decreased from 99% during the first year to 39% at 10 years' follow-up. By applying the Cox model, the predictors were identified as follows: age (HR = 1.03, 95% CI 1.01–1.05), diabetes (HR = 2.17, 95% CI 1.29–3.66), smoking (HR = 2.41, 95% CI 1.46–3.98), and stent length (HR = 1.74, 95% CI 1.11–2.75). The predictive performance was slightly better by the RSF model (IBS of 0.124 vs. 0.135, C index of 0.648 vs. 0.626 and out-of-bag error rate of 0.352 vs. 0.374 for RSF). In addition to age, diabetes, smoking, and stent length, RSF also included coronary artery disease (acute or chronic) and hyperlipidemia as the most important variables.

Conclusion

Machine-learning prediction models such as RSF showed better performance than the Cox proportional hazards model for the prediction of MACCE during long-term follow-up after PCI.
Literature
2.
go back to reference Athappan G, Ponniah T. Clinical outcomes of dialysis patients after implantation of DES: meta-analysis and systematic review of literature. Miner Cardioangiol. 2009;57(3):291–7. Athappan G, Ponniah T. Clinical outcomes of dialysis patients after implantation of DES: meta-analysis and systematic review of literature. Miner Cardioangiol. 2009;57(3):291–7.
5.
go back to reference Ashrith G, Elayda MA, Wilson JM. Revascularization options in patients with chronic kidney disease. Tex Heart Inst J. 2010;37(1):9–18.PubMedPubMedCentral Ashrith G, Elayda MA, Wilson JM. Revascularization options in patients with chronic kidney disease. Tex Heart Inst J. 2010;37(1):9–18.PubMedPubMedCentral
6.
go back to reference Kleinbaum DG. Survival analysis, a self-learning text. Biometrical J. 1998;40:107–8.CrossRef Kleinbaum DG. Survival analysis, a self-learning text. Biometrical J. 1998;40:107–8.CrossRef
7.
go back to reference Cox D. Regression models and life-tables. J R Stat Soc. 1972;34:187–220. Cox D. Regression models and life-tables. J R Stat Soc. 1972;34:187–220.
9.
go back to reference Meng J, Li P, Zhang Q, Yang Z, Fu S. A four-long noncoding RNA signature in predicting breast cancer survival. J Exp Clin Cancer Res. 2014;33:84.CrossRef Meng J, Li P, Zhang Q, Yang Z, Fu S. A four-long noncoding RNA signature in predicting breast cancer survival. J Exp Clin Cancer Res. 2014;33:84.CrossRef
10.
go back to reference Noori S, Nourijelyani K, Mohammad K, Niknam M, Mahmoudi M, Andonian L, et al. Random forests analysis: a modern statistical method for screening in high-dimensional studies and its application in a population-based genetic association study. J North Khorasan Univ Med Sci. 2012;3:93–101 ((in Persian)).CrossRef Noori S, Nourijelyani K, Mohammad K, Niknam M, Mahmoudi M, Andonian L, et al. Random forests analysis: a modern statistical method for screening in high-dimensional studies and its application in a population-based genetic association study. J North Khorasan Univ Med Sci. 2012;3:93–101 ((in Persian)).CrossRef
11.
go back to reference Kawaguchi A, Yajima N, Tsuchiya N, Homma J, Sano M, Natsumeda M, et al. Gene expression signature-based prognostic risk score in patients with glioblastoma. Cancer Sci. 2013;104:1205–10.CrossRef Kawaguchi A, Yajima N, Tsuchiya N, Homma J, Sano M, Natsumeda M, et al. Gene expression signature-based prognostic risk score in patients with glioblastoma. Cancer Sci. 2013;104:1205–10.CrossRef
12.
go back to reference Miao F, Cai YP, Zhang YT, Li CY. Is random survival forest an alternative to Cox proportional model on predicting cardiovascular disease? In 6th European conference of the international federation for medical and biological engineering; 2015. Springer. Miao F, Cai YP, Zhang YT, Li CY. Is random survival forest an alternative to Cox proportional model on predicting cardiovascular disease? In 6th European conference of the international federation for medical and biological engineering; 2015. Springer.
13.
go back to reference Trikalinos TA, Alsheikh-Ali AA, Tatsioni A, Nallamothu BK, Kent DM. Percutaneous coronary interventions for non-acute coronary artery disease: a quantitative 20-year synopsis and a network meta-analysis. Lancet. 2009;373(9667):911–8.CrossRef Trikalinos TA, Alsheikh-Ali AA, Tatsioni A, Nallamothu BK, Kent DM. Percutaneous coronary interventions for non-acute coronary artery disease: a quantitative 20-year synopsis and a network meta-analysis. Lancet. 2009;373(9667):911–8.CrossRef
14.
go back to reference Shwaran H, Kogalur UB. Random survival forests for R. R News. 2007;7:25–31. Shwaran H, Kogalur UB. Random survival forests for R. R News. 2007;7:25–31.
15.
go back to reference Brier GW. Verification of forecasts expressed in terms of probability. Month Weather Rev. 1950;78:1–3.CrossRef Brier GW. Verification of forecasts expressed in terms of probability. Month Weather Rev. 1950;78:1–3.CrossRef
16.
go back to reference Aghajani H, Nezami P, Shafiee A, Jalali A, Nezami A, Nozari Y, Pourhosseini H, et al. Predictors of long-term major adverse cardiac events following percutaneous coronary intervention in the elderly. Arch Iran Med. 2018;21(8):344–8.PubMed Aghajani H, Nezami P, Shafiee A, Jalali A, Nezami A, Nozari Y, Pourhosseini H, et al. Predictors of long-term major adverse cardiac events following percutaneous coronary intervention in the elderly. Arch Iran Med. 2018;21(8):344–8.PubMed
18.
go back to reference Meliga E, Garcia-Garcia HM, Valgimigli M, Biondi-Zoccai G, O.Maree A. Longest available clinical outcomes after drug-eluting stent implantation for unprotected left main coronary artery disease: the DELFT (drug eluting stent for LeFT main) registry. JACC Cardiovasc Interv. 2008;51(23):2212–9. Meliga E, Garcia-Garcia HM, Valgimigli M, Biondi-Zoccai G, O.Maree A. Longest available clinical outcomes after drug-eluting stent implantation for unprotected left main coronary artery disease: the DELFT (drug eluting stent for LeFT main) registry. JACC Cardiovasc Interv. 2008;51(23):2212–9.
19.
go back to reference Ebrahimzadeh F, Salehi Veisi M, Hajizadeh E, Namdari M. Prediction of coronary artery restenosis in patients undergoing angioplasty. J Babol Univ Med Sci. 2018;20(5):30–7. Ebrahimzadeh F, Salehi Veisi M, Hajizadeh E, Namdari M. Prediction of coronary artery restenosis in patients undergoing angioplasty. J Babol Univ Med Sci. 2018;20(5):30–7.
20.
go back to reference Ebrahimzadeh F, Hajizadeh E, Baghestani A, Nasseryan J. Timing the incidence of restenosis and some effective factors in patients undergoing angioplasty using extended cox regression model. J Mazandaran Univ Med Sci. 2017;26(146):56–67 ((in Persian)). Ebrahimzadeh F, Hajizadeh E, Baghestani A, Nasseryan J. Timing the incidence of restenosis and some effective factors in patients undergoing angioplasty using extended cox regression model. J Mazandaran Univ Med Sci. 2017;26(146):56–67 ((in Persian)).
21.
Metadata
Title
Risk factors associated with major adverse cardiac and cerebrovascular events following percutaneous coronary intervention: a 10-year follow-up comparing random survival forest and Cox proportional-hazards model
Authors
Maryam Farhadian
Sahar Dehdar Karsidani
Azadeh Mozayanimonfared
Hossein Mahjub
Publication date
01-12-2021
Publisher
BioMed Central
Keywords
CABG
CABG
Published in
BMC Cardiovascular Disorders / Issue 1/2021
Electronic ISSN: 1471-2261
DOI
https://doi.org/10.1186/s12872-020-01834-1

Other articles of this Issue 1/2021

BMC Cardiovascular Disorders 1/2021 Go to the issue