Assessing survival post‐kidney transplantation in Australia: A multivariable prediction model

Author:

McMichael Lachlan C.1234ORCID,Gulyani Aarti15ORCID,Clayton Philip A.124ORCID

Affiliation:

1. Transplant Research Epidemiology Group (TrEG), Australia and New Zealand Dialysis and Transplant (ANZDATA) Registry South Australian Health and Medical Research Institute (SAHMRI) Adelaide South Australia Australia

2. Central and Northern Adelaide Renal and Transplantation Service Royal Adelaide Hospital Adelaide South Australia Australia

3. Department of Nephrology, Kidney Transplant Program University of British Columbia Vancouver British Columbia Canada

4. Adelaide Medical School, Faculty of Health Sciences The University of Adelaide Adelaide South Australia Australia

5. College of Nursing and Health Sciences Flinders University Adelaide South Australia Australia

Abstract

AbstractAimKidney transplantation remains the preferred standard of care for patients with kidney failure. Most patients do not access this treatment and wide variations exist in which patients access transplantation. We sought to develop a model to estimate post‐kidney transplant survival to inform more accurate comparisons of access to kidney transplantation.MethodsDevelopment and validation of prediction models using demographic and clinical data from the Australia and New Zealand Dialysis and Transplant Registry. Adult deceased donor kidney only transplant recipients between 2000 and 2020 were included. Cox proportional hazards regression methods were used with a primary outcome of patient survival. Models were evaluated using Harrell's C‐statistic for discrimination, and calibration plots, predicted survival probabilities and Akaike Information Criterion for goodness‐of‐fit.ResultsThe model development and validation cohorts included 11 302 participants. Most participants were male (62.8%) and Caucasian (79.2%). Glomerulonephritis was the most common cause of kidney disease (45.6%). The final model included recipient, donor, and transplant related variables. The model had good discrimination (C‐statistic, 0.72; 95% confidence interval (CI) 0.70–0.74 in the development cohort, 0.70; 95% CI 0.67–0.73 in the validation cohort and 0.72; 95% CI 0.69–0.75 in the temporal cohort) and was well calibrated.ConclusionWe developed a statistical model that predicts post‐kidney transplant survival in Australian kidney failure patients. This model will aid in assessing the suitability of kidney transplantation for patients with kidney failure. Survival estimates can be used to make more informed comparisons of access to transplantation between units to better measure equity of access to organ transplantation.image

Publisher

Wiley

Subject

Nephrology,General Medicine

Reference30 articles.

1. Referral for Kidney Transplantation in Canadian Provinces

2. Access to waitlisting for deceased donor kidney transplantation in Australia

3. ANZDATA Registry.Chapter 6: Australian Transplant Waiting List. 45th Report edn. Adelaide Australia: Australia and New Zealand Dialysis and Transplant Registry.2022.

4. RegistryANZDATA.Chapter 2: Prevalence of Kidney Failure with Replacement Therapy. 45th Report edn. Adelaide Australia: Australia and New Zealand Dialysis and Transplant Registry.2022.

5. Ineligibility for renal transplantation: prevalence, causes and survival in a consecutive cohort of 445 patients

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