abstractThis study predicted graft and recipient survival in kidney transplantation based on the USRDS dataset by regression models and artificial neural networks (ANNs). We examined single time-point models (logistic regression and single-output ANNs) versus multiple time-point models (Cox models and multiple-output ANNs). These models in general achieved good prediction discrimination (AUC up to 0.82) and model calibration. This study found that: (1) Single time-point and multiple time-point models can achieve comparable AUC, except for multiple-output ANNs, which may perform poorly when a large proportion of observations are censored, (2) Logistic regression is able to achieve comparable performance as ANNs if there are no strong interac...
The most limiting factor in heart transplantation is the lack of donor organs. With enhanced predict...
The most limiting factor in heart transplantation is the lack of donor organs. With enhanced predict...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...
abstractThis study predicted graft and recipient survival in kidney transplantation based on the USR...
thesisThis study predicted graft and recipient survival in kidney transplantation based on the Unite...
We used an ensemble of statistical methods to build a model that predicts kidney transplant survival...
Background Predicting survival of recipients after liver transplantation is regarded as one of the m...
BACKGROUND: The influence of donor and recipient factors on outcomes following kidney transplantatio...
thesisBackground. Prognosis of kidney transplant outcomes, while clinically important, represents a...
International audienceBackground: Kidney allograft failure is a common cause of end-stage renal dise...
Background: kidney allograft failure is a common cause of end-stage renal disease. We aimed to devel...
International audienceBackground: Kidney allograft failure is a common cause of end-stage renal dise...
International audienceBackground: Kidney allograft failure is a common cause of end-stage renal dise...
International audienceBackground: Kidney allograft failure is a common cause of end-stage renal dise...
A dissertation submitted to the Faculty of Science, University of the Witwatersrand, Johannesburg, ...
The most limiting factor in heart transplantation is the lack of donor organs. With enhanced predict...
The most limiting factor in heart transplantation is the lack of donor organs. With enhanced predict...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...
abstractThis study predicted graft and recipient survival in kidney transplantation based on the USR...
thesisThis study predicted graft and recipient survival in kidney transplantation based on the Unite...
We used an ensemble of statistical methods to build a model that predicts kidney transplant survival...
Background Predicting survival of recipients after liver transplantation is regarded as one of the m...
BACKGROUND: The influence of donor and recipient factors on outcomes following kidney transplantatio...
thesisBackground. Prognosis of kidney transplant outcomes, while clinically important, represents a...
International audienceBackground: Kidney allograft failure is a common cause of end-stage renal dise...
Background: kidney allograft failure is a common cause of end-stage renal disease. We aimed to devel...
International audienceBackground: Kidney allograft failure is a common cause of end-stage renal dise...
International audienceBackground: Kidney allograft failure is a common cause of end-stage renal dise...
International audienceBackground: Kidney allograft failure is a common cause of end-stage renal dise...
A dissertation submitted to the Faculty of Science, University of the Witwatersrand, Johannesburg, ...
The most limiting factor in heart transplantation is the lack of donor organs. With enhanced predict...
The most limiting factor in heart transplantation is the lack of donor organs. With enhanced predict...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...