Background: Insulin resistance is a common etiology of metabolic syndrome, but receiver operating characteristic (ROC) curve analysis shows a weak association in Koreans. Using a machine learning (ML) approach, we aimed to generate the best model for predicting insulin resistance in Korean adults aged > 40 of the Ansan/Ansung cohort using a machine learning (ML) approach. Methods: The demographic, anthropometric, biochemical, genetic, nutrient, and lifestyle variables of 8842 participants were included. The polygenetic risk scores (PRS) generated by a genome-wide association study were added to represent the genetic impact of insulin resistance. They were divided randomly into the training (n = 7037) and test (n = 1769) sets. Potentially im...
Diabetes is one of the fatal diseases that play a vital role in the growth of other diseases in the ...
Contains fulltext : 235311.pdf (Publisher’s version ) (Open Access)BACKGROUND: Clo...
Background Previously developed prediction models for type 2 diabetes mellitus (T2DM) have limited p...
This study proposes a new diagnostic approach based on application of machine learning techniques to...
Abstract We compared the prediction performance of machine learning-based undiagnosed diabetes predi...
OBJECTIVE:The current methods available for determining insulin resistance are complicated; hence, t...
ObjectiveThe current methods available for determining insulin resistance are complicated; hence, th...
Aims: To study if machine learning methodology can be used to detect persons with increased type 2 d...
AIM: To assess the potential of supervised machine learning techniques to identify clinical variable...
BackgroundInsulin resistance is a major pathogenic hallmark of impaired glucose metabolism. We asses...
Background. This research is aimed at establishing and internally validating the risk nomogram of in...
Objectives: This study describes an unsupervised machine learning approach used to estimate the home...
Abstract In this study, we aimed to propose a novel diabetes index for the risk classification based...
We aimed to identify the glucose metabolism statuses of nondiabetic Japanese adults using a machine ...
BackgroundPrevention and treatment of liver fibrosis at an early stage is of great prognostic import...
Diabetes is one of the fatal diseases that play a vital role in the growth of other diseases in the ...
Contains fulltext : 235311.pdf (Publisher’s version ) (Open Access)BACKGROUND: Clo...
Background Previously developed prediction models for type 2 diabetes mellitus (T2DM) have limited p...
This study proposes a new diagnostic approach based on application of machine learning techniques to...
Abstract We compared the prediction performance of machine learning-based undiagnosed diabetes predi...
OBJECTIVE:The current methods available for determining insulin resistance are complicated; hence, t...
ObjectiveThe current methods available for determining insulin resistance are complicated; hence, th...
Aims: To study if machine learning methodology can be used to detect persons with increased type 2 d...
AIM: To assess the potential of supervised machine learning techniques to identify clinical variable...
BackgroundInsulin resistance is a major pathogenic hallmark of impaired glucose metabolism. We asses...
Background. This research is aimed at establishing and internally validating the risk nomogram of in...
Objectives: This study describes an unsupervised machine learning approach used to estimate the home...
Abstract In this study, we aimed to propose a novel diabetes index for the risk classification based...
We aimed to identify the glucose metabolism statuses of nondiabetic Japanese adults using a machine ...
BackgroundPrevention and treatment of liver fibrosis at an early stage is of great prognostic import...
Diabetes is one of the fatal diseases that play a vital role in the growth of other diseases in the ...
Contains fulltext : 235311.pdf (Publisher’s version ) (Open Access)BACKGROUND: Clo...
Background Previously developed prediction models for type 2 diabetes mellitus (T2DM) have limited p...