AbstractThe replacement of defective organs with healthy ones is an old problem, but only a few years ago was this issue put into practice. Improvements in the whole transplantation process have been increasingly important in clinical practice. In this context are clinical decision support systems (CDSSs), which have reflected a significant amount of work to use mathematical and intelligent techniques. The aim of this article was to present consideration of intelligent techniques used in recent years (2009 and 2010) to analyze organ transplant databases. To this end, we performed a search of the PubMed and Institute for Scientific Information (ISI) Web of Knowledge databases to find articles published in 2009 and 2010 about intelligent tech...
Background. The purpose of this review is to depict current research and impact of artificial intell...
Health care industry has always benefited from technological advancement in the field of information...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...
AbstractThe replacement of defective organs with healthy ones is an old problem, but only a few year...
The replacement of defective organs with healthy ones is an old problem, but only a few years ago wa...
Management of solid organ recipients requires a significant amount of research and observation throu...
A key issue in the field of kidney transplants is the analysis of transplant recipients’ survival. B...
Artificial intelligence (AI) refers to computer algorithms used to complete tasks that usually requi...
The demand for liver transplantation far outstrips the supply of deceased donor organs, and so, list...
Abstract Solid-organ transplantation is a life-saving treatment for end-stage organ disease in highl...
The complexity of transplant medicine pushes the boundaries of innate, human reasoning. From network...
BACKGROUND: This review aims to systematically evaluate the currently available evidence investigati...
BACKGROUND: This review aims to systematically evaluate the currently available evidence investigati...
Objective: The aim of this study was to predict graft survival using machine learning prediction tec...
The gold standard for nephrotoxicity and acute cellular rejection (ACR) is a biopsy, an invasive and...
Background. The purpose of this review is to depict current research and impact of artificial intell...
Health care industry has always benefited from technological advancement in the field of information...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...
AbstractThe replacement of defective organs with healthy ones is an old problem, but only a few year...
The replacement of defective organs with healthy ones is an old problem, but only a few years ago wa...
Management of solid organ recipients requires a significant amount of research and observation throu...
A key issue in the field of kidney transplants is the analysis of transplant recipients’ survival. B...
Artificial intelligence (AI) refers to computer algorithms used to complete tasks that usually requi...
The demand for liver transplantation far outstrips the supply of deceased donor organs, and so, list...
Abstract Solid-organ transplantation is a life-saving treatment for end-stage organ disease in highl...
The complexity of transplant medicine pushes the boundaries of innate, human reasoning. From network...
BACKGROUND: This review aims to systematically evaluate the currently available evidence investigati...
BACKGROUND: This review aims to systematically evaluate the currently available evidence investigati...
Objective: The aim of this study was to predict graft survival using machine learning prediction tec...
The gold standard for nephrotoxicity and acute cellular rejection (ACR) is a biopsy, an invasive and...
Background. The purpose of this review is to depict current research and impact of artificial intell...
Health care industry has always benefited from technological advancement in the field of information...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...