Objective: To develop a prognostic model for the thirty-day mortality risk after adult heart transplantation. Methods: In this report we developed a prediction model for the 30-day mortality risk after adult heart transplantation. Logistic regression analysis was used to develop the model in 1,262 adult patients undergoing primary heart transplantation. We evaluated the accuracy of the prediction model; the agreement between the predicted probability and the observed mortality (calibration); and the ability of the model to correctly discriminate between the discordant survival pairs (discrimination). The internal validity of the prediction model was evaluated using the bootstrapping procedures. Results: Recipients age and sex, pre-transplan...
Heart transplantation (HT) is a life saving procedure, but a limited donor supply forces the surgeon...
With a rising demand for kidney transplantation, reliable pre-transplant assessment of organ quality...
OBJECTIVE: To identify and critically appraise risk prediction models for living donor solid organ t...
Objective: To develop a prognostic model for the thirty-day mortality risk after adult heart transpl...
Heart transplantation has become the treatment of choice for patients with end-stage heart diseases....
<div><p>Background</p><p>Heart transplantation is life saving for patients with end-stage heart dise...
Heart transplantation is life saving for patients with end-stage heart disease. However, a number of...
Background: Machine learning (ML) is increasingly being applied in Cardiology to predict outcomes an...
Heart transplantation is life saving for patients with end-stage heart disease. However, a number of...
Objective: We retrospectively analyzed case records to identify risk factors for mortality in heart ...
The primary objective of this study is to compare the accuracy of two risk models, International Hea...
Background: Primary graft dysfunction (PGD) is a major cause of morbidity and mor...
Background: Primary graft failure (PGF) remains the most common cause of short-term mortality after ...
Selection of heart donors is the most important stage on which the success of heart transplantation ...
Objectives: A heart transplant (Htx) remains the gold standard treatment for patients with advanced ...
Heart transplantation (HT) is a life saving procedure, but a limited donor supply forces the surgeon...
With a rising demand for kidney transplantation, reliable pre-transplant assessment of organ quality...
OBJECTIVE: To identify and critically appraise risk prediction models for living donor solid organ t...
Objective: To develop a prognostic model for the thirty-day mortality risk after adult heart transpl...
Heart transplantation has become the treatment of choice for patients with end-stage heart diseases....
<div><p>Background</p><p>Heart transplantation is life saving for patients with end-stage heart dise...
Heart transplantation is life saving for patients with end-stage heart disease. However, a number of...
Background: Machine learning (ML) is increasingly being applied in Cardiology to predict outcomes an...
Heart transplantation is life saving for patients with end-stage heart disease. However, a number of...
Objective: We retrospectively analyzed case records to identify risk factors for mortality in heart ...
The primary objective of this study is to compare the accuracy of two risk models, International Hea...
Background: Primary graft dysfunction (PGD) is a major cause of morbidity and mor...
Background: Primary graft failure (PGF) remains the most common cause of short-term mortality after ...
Selection of heart donors is the most important stage on which the success of heart transplantation ...
Objectives: A heart transplant (Htx) remains the gold standard treatment for patients with advanced ...
Heart transplantation (HT) is a life saving procedure, but a limited donor supply forces the surgeon...
With a rising demand for kidney transplantation, reliable pre-transplant assessment of organ quality...
OBJECTIVE: To identify and critically appraise risk prediction models for living donor solid organ t...