Background: There is much interest in the use of prognostic and diagnostic prediction models in all areas of clinical medicine. The use of machine learning to improve prognostic and diagnostic accuracy in this area has been increasing at the expense of classic statistical models. Previous studies have compared performance between these two approaches but their findings are inconsistent and many have limitations. We aimed to compare the discrimination and calibration of seven models built using logistic regression and optimised machine learning algorithms in a clinical setting, where the number of potential predictors is often limited, and externally validate the models. Methods: We trained models using logistic regression and six commonly ...
(1) Background: Diabetes is a common chronic disease and a leading cause of death. Early diagnosis g...
Type II Diabetes Mellitus is one of the silent killer diseases worldwide. According to the World Hea...
Diabetes is a very serious problem that needs to be solved, the cure has not been found yet, but we ...
Background: There is much interest in the use of prognostic and diagnostic prediction models in all ...
Background and Objectives: Diabetes is a chronic and common metabolic disease which has no curative ...
ABSTRACT CONTEXT AND OBJECTIVE: Type 2 diabetes is a chronic disease associated with a wide range ...
OBJECTIVE: To compare performance of logistic regression (LR) with machine learning (ML) for clinica...
The early prediction of diabetes can facilitate interventions to prevent or delay it. This study pro...
Objective Machine learning involves the use of algorithms without explicit instructions. Of late, ma...
Purpose: to build an effective prediction model based on machine learning (ML) algorithms for the ri...
Abstract We compared the prediction performance of machine learning-based undiagnosed diabetes predi...
Detection and management of diabetes at an early stage is essential since it is rapidly becoming a g...
Background & Aim: Diabetes is one of the chronic diseases with no curative treatment; also, it is th...
© 2018 Elsevier B.V. Background: The present study aims to identify the patients at risk of type 2 d...
Abstract Background Diabetes Mellitus is an increasin...
(1) Background: Diabetes is a common chronic disease and a leading cause of death. Early diagnosis g...
Type II Diabetes Mellitus is one of the silent killer diseases worldwide. According to the World Hea...
Diabetes is a very serious problem that needs to be solved, the cure has not been found yet, but we ...
Background: There is much interest in the use of prognostic and diagnostic prediction models in all ...
Background and Objectives: Diabetes is a chronic and common metabolic disease which has no curative ...
ABSTRACT CONTEXT AND OBJECTIVE: Type 2 diabetes is a chronic disease associated with a wide range ...
OBJECTIVE: To compare performance of logistic regression (LR) with machine learning (ML) for clinica...
The early prediction of diabetes can facilitate interventions to prevent or delay it. This study pro...
Objective Machine learning involves the use of algorithms without explicit instructions. Of late, ma...
Purpose: to build an effective prediction model based on machine learning (ML) algorithms for the ri...
Abstract We compared the prediction performance of machine learning-based undiagnosed diabetes predi...
Detection and management of diabetes at an early stage is essential since it is rapidly becoming a g...
Background & Aim: Diabetes is one of the chronic diseases with no curative treatment; also, it is th...
© 2018 Elsevier B.V. Background: The present study aims to identify the patients at risk of type 2 d...
Abstract Background Diabetes Mellitus is an increasin...
(1) Background: Diabetes is a common chronic disease and a leading cause of death. Early diagnosis g...
Type II Diabetes Mellitus is one of the silent killer diseases worldwide. According to the World Hea...
Diabetes is a very serious problem that needs to be solved, the cure has not been found yet, but we ...