A joint model for longitudinal and time-to-event data to better assess the specific role of donor and recipient factors on long-term kidney transplantation outcomes

被引:0
作者
Marie-Cécile Fournier
Yohann Foucher
Paul Blanche
Fanny Buron
Magali Giral
Etienne Dantan
机构
[1] Nantes University,EA4275 SPHERE
[2] Nantes University Hospital, bioStatistics, Pharmacoepidemiology and Human sciEnces REsearch
[3] University of Copenhagen,Labex Transplantex, Inserm U1064, Institut de Transplantation Urologie Néphrologie (ITUN)
[4] Hôpital Edouard Herriot,Department of Biostatistics
[5] Centre d’investigation clinique biothérapie,Service de Néphrologie, Transplantation et Immunologie Clinique
来源
European Journal of Epidemiology | 2016年 / 31卷
关键词
Joint modeling; Time-to-event data; Repeated measurements; Serum creatinine; Graft failure; Kidney transplantation;
D O I
暂无
中图分类号
学科分类号
摘要
In renal transplantation, serum creatinine (SCr) is the main biomarker routinely measured to assess patient’s health, with chronic increases being strongly associated with long-term graft failure risk (death with a functioning graft or return to dialysis). Joint modeling may be useful to identify the specific role of risk factors on chronic evolution of kidney transplant recipients: some can be related to the SCr evolution, finally leading to graft failure, whereas others can be associated with graft failure without any modification of SCr. Sample data for 2749 patients transplanted between 2000 and 2013 with a functioning kidney at 1-year post-transplantation were obtained from the DIVAT cohort. A shared random effect joint model for longitudinal SCr values and time to graft failure was performed. We show that graft failure risk depended on both the current value and slope of the SCr. Deceased donor graft patient seemed to have a higher SCr increase, similar to patient with diabetes history, while no significant association of these two features with graft failure risk was found. Patient with a second graft was at higher risk of graft failure, independent of changes in SCr values. Anti-HLA immunization was associated with both processes simultaneously. Joint models for repeated and time-to-event data bring new opportunities to improve the epidemiological knowledge of chronic diseases. For instance in renal transplantation, several features should receive additional attention as we demonstrated their correlation with graft failure risk was independent of the SCr evolution.
引用
收藏
页码:469 / 479
页数:10
相关论文
共 154 条
  • [1] Asar Ö(2015)Joint modelling of repeated measurement and time-to-event data: an introductory tutorial Int J Epidemiol 44 334-344
  • [2] Ritchie J(1997)A joint model for survival and longitudinal data measured with error Biometrics 53 330-339
  • [3] Kalra PA(2015)Analysis of risk factors associated with renal function trajectory over time: a comparison of different statistical approaches Nephrol Dial Transplant 30 1237-1243
  • [4] Diggle PJ(2009)Missing data methods in longitudinal studies: a review Test Madr Spain 18 1-43
  • [5] Wulfsohn MS(2004)joint modeling of longitudinal and time-to-event data: an overview Stat Sin 14 809-834
  • [6] Tsiatis AA(2014)Tools & techniques–statistics: dealing with time-varying covariates in survival analysis–joint models versus Cox models EuroIntervention 10 285-288
  • [7] Leffondre K(2012)An introduction to mixed models and joint modeling: analysis of valve function over time Ann Thorac Surg 93 1765-1772
  • [8] Boucquemont J(2003)National Kidney Foundation practice guidelines for chronic kidney disease: evaluation, classification, and stratification Ann Intern Med 139 137-147
  • [9] Tripepi G(2013)Clinical and histological predictors of long-term kidney graft survival Nephrol Dial Transplant 28 1362-1370
  • [10] Stel VS(2010)A clinical scoring system highly predictive of long-term kidney graft survival Kidney Int 78 1288-1294