A Clinical Prediction Score to Guide Referral of Elderly Dialysis Patients for Kidney Transplant Evaluation
Dialysis patients aged ≥70 years derive improved life expectancy through kidney transplantation compared with their waitlisted counterparts, but guidelines are not clear about how to identify appropriate transplantation candidates. We developed a clinical prediction score to identify elderly dialysi...
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2017-07-01
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doaj-0b26c5b8d13c4a369b17d6a2f21303822020-11-25T00:59:00ZengElsevierKidney International Reports2468-02492017-07-012464565310.1016/j.ekir.2017.02.014A Clinical Prediction Score to Guide Referral of Elderly Dialysis Patients for Kidney Transplant EvaluationLing-Xin Chen0Michelle A. Josephson1Donald Hedeker2Kellie H. Campbell3Nicole Stankus4Milda R. Saunders5Department of Internal Medicine, Section of Transplant Nephrology, University of California Davis, Sacramento, California, USADepartment of Medicine, Section of Nephrology, University of Chicago, Chicago, Illinois, USADepartment of Public Health Sciences, University of Chicago, Chicago, Illinois, USADepartment of Medicine, Section of Geriatrics and Palliative Care Medicine, University of Chicago, Chicago, Illinois, USADepartment of Medicine, Section of Nephrology, University of Chicago, Chicago, Illinois, USADepartment of Medicine, Section of Hospital Medicine, University of Chicago, Chicago, Illinois, USADialysis patients aged ≥70 years derive improved life expectancy through kidney transplantation compared with their waitlisted counterparts, but guidelines are not clear about how to identify appropriate transplantation candidates. We developed a clinical prediction score to identify elderly dialysis patients with expected 5-year survival appropriate for kidney transplantation (>5 years). Methods: Incident dialysis patients in 2006–2009 aged ≥70 were identified from the United States Renal Data System database and divided into derivation and validation cohorts. Using the derivation cohort, candidate variables with a significant crude association with 5-year all-cause mortality were included in a multivariable logistic regression model to generate a scoring system. The scoring system was tested in the validation cohort and a cohort of elderly transplant recipients. Results: Characteristics most predictive of 5-year mortality included age >80, body mass index <18, the presence of congestive heart failure, chronic obstructive pulmonary disease, immobility, and being institutionalized. Factors associated with increased 5-year survival were non-white race, a primary cause of end-stage renal disease other than diabetes, employment within 6 months of dialysis initiation, and dialysis start via arteriovenous fistula. Five-year mortality was 47% for the lowest risk score group (3.6% of the validation cohort) and >90% for the highest risk cohort (42% of the validation cohort). Discussion: This clinical prediction score could be useful for physicians to identify potentially suitable candidates for kidney transplantation.http://www.sciencedirect.com/science/article/pii/S2468024917300451elderlykidney transplant referralmortalityolder adultsUSRDS |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ling-Xin Chen Michelle A. Josephson Donald Hedeker Kellie H. Campbell Nicole Stankus Milda R. Saunders |
spellingShingle |
Ling-Xin Chen Michelle A. Josephson Donald Hedeker Kellie H. Campbell Nicole Stankus Milda R. Saunders A Clinical Prediction Score to Guide Referral of Elderly Dialysis Patients for Kidney Transplant Evaluation Kidney International Reports elderly kidney transplant referral mortality older adults USRDS |
author_facet |
Ling-Xin Chen Michelle A. Josephson Donald Hedeker Kellie H. Campbell Nicole Stankus Milda R. Saunders |
author_sort |
Ling-Xin Chen |
title |
A Clinical Prediction Score to Guide Referral of Elderly Dialysis Patients for Kidney Transplant Evaluation |
title_short |
A Clinical Prediction Score to Guide Referral of Elderly Dialysis Patients for Kidney Transplant Evaluation |
title_full |
A Clinical Prediction Score to Guide Referral of Elderly Dialysis Patients for Kidney Transplant Evaluation |
title_fullStr |
A Clinical Prediction Score to Guide Referral of Elderly Dialysis Patients for Kidney Transplant Evaluation |
title_full_unstemmed |
A Clinical Prediction Score to Guide Referral of Elderly Dialysis Patients for Kidney Transplant Evaluation |
title_sort |
clinical prediction score to guide referral of elderly dialysis patients for kidney transplant evaluation |
publisher |
Elsevier |
series |
Kidney International Reports |
issn |
2468-0249 |
publishDate |
2017-07-01 |
description |
Dialysis patients aged ≥70 years derive improved life expectancy through kidney transplantation compared with their waitlisted counterparts, but guidelines are not clear about how to identify appropriate transplantation candidates. We developed a clinical prediction score to identify elderly dialysis patients with expected 5-year survival appropriate for kidney transplantation (>5 years).
Methods: Incident dialysis patients in 2006–2009 aged ≥70 were identified from the United States Renal Data System database and divided into derivation and validation cohorts. Using the derivation cohort, candidate variables with a significant crude association with 5-year all-cause mortality were included in a multivariable logistic regression model to generate a scoring system. The scoring system was tested in the validation cohort and a cohort of elderly transplant recipients.
Results: Characteristics most predictive of 5-year mortality included age >80, body mass index <18, the presence of congestive heart failure, chronic obstructive pulmonary disease, immobility, and being institutionalized. Factors associated with increased 5-year survival were non-white race, a primary cause of end-stage renal disease other than diabetes, employment within 6 months of dialysis initiation, and dialysis start via arteriovenous fistula. Five-year mortality was 47% for the lowest risk score group (3.6% of the validation cohort) and >90% for the highest risk cohort (42% of the validation cohort).
Discussion: This clinical prediction score could be useful for physicians to identify potentially suitable candidates for kidney transplantation. |
topic |
elderly kidney transplant referral mortality older adults USRDS |
url |
http://www.sciencedirect.com/science/article/pii/S2468024917300451 |
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