Recent advances in renal transplantation, including the matching of major histocompatibility complex or new immunosuppressants, have improved 1-year survival of cadaver kidney grafts to more than 85%. Further optimization of kidney transplant outcomes is necessary to enhance both the graft survival time and the quality of life. Techniques derived from the artificial intelligence enable better prediction of graft outcomes by using donor and recipient data. The authors used an artificial neural network (ANN) to model kidney graft rejection and trained it with data on 1542 kidney transplants. The ANN correctly predicted 85% of successful and 72% of failed transplants. Also, ANN correctly predicted the type of rejection (hyperacute, acute, suba...
Abstract Introduction: The prediction of post transplantation outcomes is clinically important and ...
Background: kidney allograft failure is a common cause of end-stage renal disease. We aimed to devel...
In 2014, we reported a model for donor-recipient (D-R) matching in liver transplantation (LT) based ...
The aim of this study was to develop an artificial neural network (ANN) to differentiate between rej...
Although conventional multivariate models allowed to identify risk factors for delayed graft functio...
A key issue in the field of kidney transplants is the analysis of transplant recipients’ survival. B...
Predicting clinical outcome following a specific treatment is a challenge that sees physicians and r...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...
Objective: The aim of this study was to predict graft survival using machine learning prediction tec...
thesisThis study predicted graft and recipient survival in kidney transplantation based on the Unite...
The demand for liver transplantation far outstrips the supply of deceased donor organs, and so, list...
Complications associated with kidney transplantation and immunosuppression can be prevented or treat...
Management of solid organ recipients requires a significant amount of research and observation throu...
Artificial neural network, a computer-based technology that uses nonlinear statistics to recognize t...
The artificial learning models such as artificial neural network, radial basis function and art map ...
Abstract Introduction: The prediction of post transplantation outcomes is clinically important and ...
Background: kidney allograft failure is a common cause of end-stage renal disease. We aimed to devel...
In 2014, we reported a model for donor-recipient (D-R) matching in liver transplantation (LT) based ...
The aim of this study was to develop an artificial neural network (ANN) to differentiate between rej...
Although conventional multivariate models allowed to identify risk factors for delayed graft functio...
A key issue in the field of kidney transplants is the analysis of transplant recipients’ survival. B...
Predicting clinical outcome following a specific treatment is a challenge that sees physicians and r...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...
Objective: The aim of this study was to predict graft survival using machine learning prediction tec...
thesisThis study predicted graft and recipient survival in kidney transplantation based on the Unite...
The demand for liver transplantation far outstrips the supply of deceased donor organs, and so, list...
Complications associated with kidney transplantation and immunosuppression can be prevented or treat...
Management of solid organ recipients requires a significant amount of research and observation throu...
Artificial neural network, a computer-based technology that uses nonlinear statistics to recognize t...
The artificial learning models such as artificial neural network, radial basis function and art map ...
Abstract Introduction: The prediction of post transplantation outcomes is clinically important and ...
Background: kidney allograft failure is a common cause of end-stage renal disease. We aimed to devel...
In 2014, we reported a model for donor-recipient (D-R) matching in liver transplantation (LT) based ...