that uses radiologic and laboratory data to predict the outcome in patients with acute pancreatitis. Materials and Methods. An ANN was constructed with data from 92 patients with acute pancreatitis who underwent computed tomography (CT). Input nodes included clinical, laboratory, and CT data. The ANN was trained and tested by using a round-robin technique, and the performance of the ANN was compared with that of linear discriminant analysis and Ranson and Balthazar grading systems by using receiver operating characteristic analysis. The length of hospital stay was used as an outcome measure. Results. Hospital stay ranged from 0 to 45 days, with a mean of 8.4 days. The hospital stay was shorter than the mean for 62 patients and longer than t...
Artificial neural networks (ANNs) is a nonlinear pattern recognition technique inspired by the funct...
Background: Acute pancreatitis (AP) has a variable course. Accurate early prediction of severity is ...
Artificial neural networks (ANNs) are nonlinear pattern recognition techniques that can be used as a...
RATIONALE AND OBJECTIVES: The authors performed this study to evaluate the ability of an artificial ...
RATIONALE AND OBJECTIVES: The authors performed this study to evaluate the ability of an artificial ...
RATIONALE AND OBJECTIVES: The authors performed this study to evaluate the ability of an artificial ...
Background/Aims: Artificial neural networks (ANNs) are non-linear pattern recognition techniques, wh...
Length of stay (LOS) predictions in acute pancreatitis could be used to stratify patients with sever...
Length of stay (LOS) predictions in acute pancreatitis could be used to stratify patients with sever...
Length of stay (LOS) predictions in acute pancreatitis could be used to stratify patients with sever...
Background. Early and accurate evaluation of severity and prognosis in acute pancreatitis (AP), espe...
BACKGROUND: An artificial neural network (ANNs) is a non-linear pattern recognition technique that i...
Background. In the social and hygienic study, to develop an artificial neural network designed to di...
The clinical course of acute pancreatitis (AP) can be variable depending on the severity of the dise...
The clinical course of acute pancreatitis (AP) can be variable depending on the severity of the dise...
Artificial neural networks (ANNs) is a nonlinear pattern recognition technique inspired by the funct...
Background: Acute pancreatitis (AP) has a variable course. Accurate early prediction of severity is ...
Artificial neural networks (ANNs) are nonlinear pattern recognition techniques that can be used as a...
RATIONALE AND OBJECTIVES: The authors performed this study to evaluate the ability of an artificial ...
RATIONALE AND OBJECTIVES: The authors performed this study to evaluate the ability of an artificial ...
RATIONALE AND OBJECTIVES: The authors performed this study to evaluate the ability of an artificial ...
Background/Aims: Artificial neural networks (ANNs) are non-linear pattern recognition techniques, wh...
Length of stay (LOS) predictions in acute pancreatitis could be used to stratify patients with sever...
Length of stay (LOS) predictions in acute pancreatitis could be used to stratify patients with sever...
Length of stay (LOS) predictions in acute pancreatitis could be used to stratify patients with sever...
Background. Early and accurate evaluation of severity and prognosis in acute pancreatitis (AP), espe...
BACKGROUND: An artificial neural network (ANNs) is a non-linear pattern recognition technique that i...
Background. In the social and hygienic study, to develop an artificial neural network designed to di...
The clinical course of acute pancreatitis (AP) can be variable depending on the severity of the dise...
The clinical course of acute pancreatitis (AP) can be variable depending on the severity of the dise...
Artificial neural networks (ANNs) is a nonlinear pattern recognition technique inspired by the funct...
Background: Acute pancreatitis (AP) has a variable course. Accurate early prediction of severity is ...
Artificial neural networks (ANNs) are nonlinear pattern recognition techniques that can be used as a...