Identifying Risk Factors for Graft Failure due to Chronic Rejection < 15 Years Post-Transplant in Pediatric Kidney Transplants Using Random Forest Machine-Learning Techniques.
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引用次数: 0
Abstract
Background: Chronic rejection forms the leading cause of late graft loss in pediatric kidney transplant recipients. Despite improvement in short-term graft outcomes, chronic rejection impedes comparable progress in long-term graft outcomes.
Methods: Data from the national Standard Transplant Analysis and Research (STAR) quarterly file from 1987 to 2023, provided by the Organ Procurement and Transplantation Network (OPTN), and machine-learning techniques were leveraged to determine novel risk factors for graft failure due to chronic rejection in pediatric kidney transplants. A predictive model was developed in conjunction, based on the performances of six classification models, including logistic regression, k-Nearest Neighbors, Support Vector Machine, Decision Tree, Artificial Neural Network, and Random Forest.
Results: The 19 pre-transplant and at-transplant factors identified include those substantiated in literature, such as living donor type, cold ischemic time, human leukocyte antigen (HLA) matching, recipient age, and recipient race. Other factors include one-haplotype matched transplants, recipient age being < 5 years, and the proximities of the most and least recent serum crossmatch tests to transplantation. The latter may correlate with recipient sensitization and socioeconomic disparities, but further research must be done to validate this hypothesis. The Random Forest model was selected based on its performance metrics (AUC 0.81).
Conclusions: This case-control study identifies key factors for chronic rejection-caused graft failure 15 years post-transplant in pediatric kidney transplants and develops a Random Forest predictive model based on these factors. Continued investigation is needed to better understand the variables contributing to pediatric chronic kidney rejection.
期刊介绍:
The aim of Pediatric Transplantation is to publish original articles of the highest quality on clinical experience and basic research in transplantation of tissues and solid organs in infants, children and adolescents. The journal seeks to disseminate the latest information widely to all individuals involved in kidney, liver, heart, lung, intestine and stem cell (bone-marrow) transplantation. In addition, the journal publishes focused reviews on topics relevant to pediatric transplantation as well as timely editorial comment on controversial issues.