Introduction: Machine learning has been increasingly used to develop predictive models to diagnose different disease conditions. The heterogeneity of the kidney transplant population makes predicting graft outcomes extremely challenging. Several kidney graft outcome prediction models have been developed using machine learning, and are available in the literature. However, a systematic review of machine learning based prediction methods applied to kidney transplant has not been done to date. The main aim of our study was to perform an in-depth systematic analysis of different machine learning methods used to predict graft outcomes among kidney transplant patients, and assess their usefulness as an aid to decision-making. Methods: A systemic ...
Although conventional multivariate models allowed to identify risk factors for delayed graft functio...
Machine learning approaches were introduced for better or comparable predictive ability than statist...
BACKGROUND: This review aims to systematically evaluate the currently available evidence investigati...
Abstract Introduction: The prediction of post transplantation outcomes is clinically important and ...
Kidney transplant recipients and transplant physicians face important clinical questions where machi...
A key issue in the field of kidney transplants is the analysis of transplant recipients’ survival. B...
Acute kidney injury (AKI) after liver transplantation has been reported to be associated with increa...
Objective: The aim of this study was to predict graft survival using machine learning prediction tec...
We used an ensemble of statistical methods to build a model that predicts kidney transplant survival...
Background: Kidney graft failure risk prediction models assist evidence-based medical decision-makin...
Background: Kidney graft failure risk prediction models assist evidence-based medical decision-makin...
Background: Primary graft failure (PGF) remains the most common cause of short-term mortality after ...
Abstract Solid-organ transplantation is a life-saving treatment for end-stage organ disease in highl...
Abstract Background Kidney graft failure risk prediction models assist evidence-based medical decisi...
Machine learning approaches were introduced for better or comparable predictive ability than statist...
Although conventional multivariate models allowed to identify risk factors for delayed graft functio...
Machine learning approaches were introduced for better or comparable predictive ability than statist...
BACKGROUND: This review aims to systematically evaluate the currently available evidence investigati...
Abstract Introduction: The prediction of post transplantation outcomes is clinically important and ...
Kidney transplant recipients and transplant physicians face important clinical questions where machi...
A key issue in the field of kidney transplants is the analysis of transplant recipients’ survival. B...
Acute kidney injury (AKI) after liver transplantation has been reported to be associated with increa...
Objective: The aim of this study was to predict graft survival using machine learning prediction tec...
We used an ensemble of statistical methods to build a model that predicts kidney transplant survival...
Background: Kidney graft failure risk prediction models assist evidence-based medical decision-makin...
Background: Kidney graft failure risk prediction models assist evidence-based medical decision-makin...
Background: Primary graft failure (PGF) remains the most common cause of short-term mortality after ...
Abstract Solid-organ transplantation is a life-saving treatment for end-stage organ disease in highl...
Abstract Background Kidney graft failure risk prediction models assist evidence-based medical decisi...
Machine learning approaches were introduced for better or comparable predictive ability than statist...
Although conventional multivariate models allowed to identify risk factors for delayed graft functio...
Machine learning approaches were introduced for better or comparable predictive ability than statist...
BACKGROUND: This review aims to systematically evaluate the currently available evidence investigati...