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Erschienen in: European Journal of Epidemiology 5/2016

01.02.2016 | CLINICAL EPIDEMIOLOGY

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

verfasst von: Marie-Cécile Fournier, Yohann Foucher, Paul Blanche, Fanny Buron, Magali Giral, Etienne Dantan

Erschienen in: European Journal of Epidemiology | Ausgabe 5/2016

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Abstract

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.
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Metadaten
Titel
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
verfasst von
Marie-Cécile Fournier
Yohann Foucher
Paul Blanche
Fanny Buron
Magali Giral
Etienne Dantan
Publikationsdatum
01.02.2016
Verlag
Springer Netherlands
Erschienen in
European Journal of Epidemiology / Ausgabe 5/2016
Print ISSN: 0393-2990
Elektronische ISSN: 1573-7284
DOI
https://doi.org/10.1007/s10654-016-0121-2

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