Literature DB >> 30659091

Event dependence in the analysis of cardiovascular readmissions postpercutaneous coronary intervention.

Anupama Vasudevan1, James W Choi2, Georges A Feghali2, Stuart R Lander2, Li Jialiang3, Jeffrey M Schussler2, Robert C Stoler2, Ravi C Vallabhan2, Carlos E Velasco2, Peter A McCullough2.   

Abstract

Recurrent hospitalizations are common in longitudinal studies; however, many forms of cumulative event analyses assume recurrent events are independent. We explore the presence of event dependence when readmissions are spaced apart by at least 30 and 60 days. We set up a comparative framework with the assumption that patients with emergency percutaneous coronary intervention (PCI) will be at higher risk for recurrent cardiovascular readmissions than those with elective procedures. A retrospective study of patients who underwent PCI (January 2008-December 2012) with their follow-up information obtained from a regional database for hospitalization was conducted. Conditional gap time (CG), frailty gamma (FG) and conditional frailty models (CFM) were constructed to evaluate the dependence of events. Relative bias (%RB) in point estimates using CFM as the reference was calculated for comparison of the models. Among 4380 patients, emergent cases were at higher risk as compared with elective cases for recurrent events in different statistical models and time-spaced data sets, but the magnitude of HRs varied across the models (adjusted HR [95% CI]: all readmissions [unstructured data]-CG 1.16 [1.09 to 1.22], FG 1.45 [1.33 to 1.57], CFM 1.24 [1.16 to 1.32]; 30-day spaced-CG1.14 [1.08 to 1.21], FG 1.28 [1.17 to 1.39], CFM 1.17 [1.10 to 1.26]; and 60-day spaced-CG 1.14 [1.07 to 1.22], FG 1.23 [1.13 to 1.34] CFM 1.18 [1.09 to 1.26]). For all of the time-spaced readmissions, we found that the values of %RB were closer to the conditional models, suggesting that event dependence dominated the data despite attempts to create independence by increasing the space in time between admissions. Our analysis showed that independent of the intercurrent event duration, prior events have an influence on future events. Hence, event dependence should be accounted for when analyzing recurrent events and challenges contemporary methods for such analysis. © American Federation for Medical Research 2019. No commercial re-use. See rights and permissions. Published by BMJ.

Entities:  

Keywords:  cardiovascular diseases; clinical research; recurrence

Year:  2019        PMID: 30659091     DOI: 10.1136/jim-2018-000873

Source DB:  PubMed          Journal:  J Investig Med        ISSN: 1081-5589            Impact factor:   2.895


  1 in total

1.  Left-censored recurrent event analysis in epidemiological studies: a proposal for when the number of previous episodes is unknown.

Authors:  Gilma Hernández-Herrera; David Moriña; Albert Navarro
Journal:  BMC Med Res Methodol       Date:  2022-01-16       Impact factor: 4.615

  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.