There were approximately 00,000 end-stage renal disease (ESRD) patients receiving dialysis in the United States at the end of 2013. ESRD has a substantial impact on mortality, morbidity, health care cost and quality of life. The preferred therapy, kidney transplantation, is in relatively short supply; e.g., less than 15,000 kidney transplants occurred in the U.S. in 2013, with about 99,000 patients remaining on the wait list at year end. Problem: Given that mortality and hospitalization rates are quite high among ESRD patients, flexible, broadly applicable and easily implementable methods of analysis are required for modeling hospitalization, death, and the two processes simultaneously. Existing methods either fail to target quantities of interest in Aims 1-3 (below), or do so using strong assumptions which limit their applicability. Overall Objective: The overarching goal of this project is to deveop survival analysis methodology to support analyses that will produce a deeper understanding of morbidity and mortality patterns among ESRD patients. Such increased understanding should lead to improvements in renal replacement therapy and, in turn, improved survival and quality of life among ESRD patients. Target Audience: With respect to methodology, the target audience includes biostatisticians, particularly practitioners studying ESRD and other chronic illnesses. Results based on the proposed analyses would be of interest to nephrologists, transplant surgeons and ESRD patients. Products: Novel and innovative methods for the analysis of survival and recurrent event data.
Specific Aim 1 : Recurrent/terminal events with covariate-dependent association Methods for jointly analyzing recurrent (e.g., hospitalization) and terminating (e.g., death) event data will be developed, then applied to the Dialysis Outcomes and Practice Patterns Study (DOPPS).
Specific Aim 2 : Process regression for hospital-free survival Methods for modeling the probability of survival and being out-of-hospital will be developed and applied to DOPPS data. Dependent censoring is accommodated, and probability patterns over follow-up time need not be estimated.
Specific Aim 3 : Direct modeling of restricted mean survival time Methods will be developed for directly modeling mean survival time (capped at a pre-specified value). Application will be to pre-transplant mortality among patients wait-listed for kidney transplant, using Scientific Registry of Transplant Recipients (SRTR) data. For each Aim, the methods will be easily implementable since pertinent software will be developed.

Public Health Relevance

The proposed project is relevant to public health in the United States since end-stage renal disease (ESRD) is associated with high mortality and morbidity, with the preferred treatment modality (kidney transplantation) being in relatively short supply. Moreover, ESRD prevalence has been increasing for some time in the U.S., a trend which would be expected to continue given the increased incidence of diabetes and the aging of the U.S. population. Our proposal is relevant to the National Institutes of Diabetes and Digestive and Kidney Diseases (NIDDK) since analyses based on the project's products (novel and innovative biostatistical methods) will lead to considerable advances in the understanding of ESRD morbidity and mortality patterns and hence, in turn, improve the health and quality of life of ESRD patients.

Agency
National Institute of Health (NIH)
Institute
National Institute of Diabetes and Digestive and Kidney Diseases (NIDDK)
Type
Research Project (R01)
Project #
5R01DK070869-09
Application #
8984880
Study Section
Kidney, Nutrition, Obesity and Diabetes (KNOD)
Program Officer
Narva, Andrew
Project Start
2005-04-01
Project End
2017-11-30
Budget Start
2015-12-01
Budget End
2016-11-30
Support Year
9
Fiscal Year
2016
Total Cost
Indirect Cost
Name
University of Michigan Ann Arbor
Department
Biostatistics & Other Math Sci
Type
Schools of Public Health
DUNS #
073133571
City
Ann Arbor
State
MI
Country
United States
Zip Code
48109
Kim, Sehee; Schaubel, Douglas E; McCullough, Keith P (2018) A C-index for recurrent event data: Application to hospitalizations among dialysis patients. Biometrics 74:734-743
Smith, Abigail R; Zhu, Danting; Goodrich, Nathan P et al. (2018) Estimating the effect of a rare time-dependent treatment on the recurrent event rate. Stat Med 37:1986-1996
Welling, Theodore H; Eddinger, Kevin; Carrier, Kristen et al. (2018) Multicenter Study of Staging and Therapeutic Predictors of Hepatocellular Carcinoma Recurrence Following Transplantation. Liver Transpl 24:1233-1242
Wang, Xin; Schaubel, Douglas E (2018) Modeling restricted mean survival time under general censoring mechanisms. Lifetime Data Anal 24:176-199
Zhan, Tianyu; Schaubel, Douglas E (2018) Semiparametric temporal process regression of survival-out-of-hospital. Lifetime Data Anal :
Schaubel, Douglas E; Nan, Bin (2018) Special issue dedicated to Jack Kalbfleisch. Lifetime Data Anal 24:1-2
Zhong, Yingchao; Schaubel, Douglas E; Kalbfleisch, John D et al. (2018) Reevaluation of the Kidney Donor Risk Index (KDRI). Transplantation :
Gong, Qi; Schaubel, Douglas E (2018) Tobit regression for modeling mean survival time using data subject to multiple sources of censoring. Pharm Stat 17:117-125
Dharmarajan, Sai H; Schaubel, Douglas E; Saran, Rajiv (2018) Evaluating center performance in the competing risks setting: Application to outcomes of wait-listed end-stage renal disease patients. Biometrics 74:289-299
Schaubel, Douglas E (2017) Statistical Methods in Organ Failure and Transplantation. Stat Biosci 9:317-319

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