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Competing Risks Analysis of Kidney Transplant Waitlist Outcomes: Two Important Statistical Perspectives.
Gaynor, Jeffrey J; Guerra, Giselle; Vianna, Rodrigo; Tabbara, Marina M; Graell, Enric Lledo; Ciancio, Gaetano.
Afiliação
  • Gaynor JJ; Department of Surgery, Miami Transplant Institute, University of Miami Miller School of Medicine; Miami, Florida, USA.
  • Guerra G; Department of Medicine, Miami Transplant Institute, University of Miami Miller School of Medicine; Miami, Florida, USA.
  • Vianna R; Department of Surgery, Miami Transplant Institute, University of Miami Miller School of Medicine; Miami, Florida, USA.
  • Tabbara MM; Department of Surgery, Miami Transplant Institute, University of Miami Miller School of Medicine; Miami, Florida, USA.
  • Graell EL; Department of Surgery, Miami Transplant Institute, University of Miami Miller School of Medicine; Miami, Florida, USA.
  • Ciancio G; Department of Surgery, Miami Transplant Institute, University of Miami Miller School of Medicine; Miami, Florida, USA.
Kidney Int Rep ; 9(6): 1580-1589, 2024 Jun.
Article em En | MEDLINE | ID: mdl-38899174
ABSTRACT
Modern competing risks analysis has 2 primary goals in clinical epidemiology as follows (i) to maximize the clinician's knowledge of etiologic associations existing between potential predictor variables and various cause-specific outcomes via cause-specific hazard models, and (ii) to maximize the clinician's knowledge of noteworthy differences existing in cause-specific patient risk via cause-specific subdistribution hazard models (cumulative incidence functions [CIFs]). A perfect application exists in analyzing the following 4 distinct outcomes after listing for a deceased donor kidney transplant (DDKT) (i) receiving a DDKT, (ii) receiving a living donor kidney transplant (LDKT), (iii) waitlist removal due to patient mortality or a deteriorating medical condition, and (iv) waitlist removal due to other reasons. It is important to realize that obtaining a complete understanding of subdistribution hazard ratios (HRs) is simply not possible without first having knowledge of the multivariable relationships existing between the potential predictor variables and the cause-specific hazards (perspective #1), because the cause-specific hazards form the "building blocks" of CIFs. In addition, though we believe that a worthy and practical alternative to estimating the median waiting-time-to DDKT is to ask, "what is the conditional probability of the patient receiving a DDKT, given that he or she would not previously experience one of the competing events (known as the cause-specific conditional failure probability)," only an appropriate estimator of this conditional type of cumulative incidence should be used (perspective #2). One suggested estimator, the well-known "one minus Kaplan-Meier" approach (censoring competing events), simply does not represent any probability in the presence of competing risks and will almost always produce biased estimates (thus, it should never be used).
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article