This study proposes a new diagnostic approach based on application of machine learning techniques to anthropometric patient features in order to create a predictive model capable of diagnosing insulin resistance (HOMA-IR). As part of the study, a dataset was built using existing paediatric patient data containing subjects with and without insulin resistance. A novel machine learning model was then developed to predict the presence of insulin resistance based on dependent biometric variables with an optimal level of accuracy. This model is made publicly available through the implementation of a clinical decision support system (CDSS) prototype. The model classifies insulin resistant individuals with 81% accuracy and 75% of individuals with...
Two approaches to building models for prediction of the onset of Type 1 diabetes mellitus in juvenil...
Objective: IR is a pathological condition strongly associated with obesity and involved in the patho...
Prediabetes and diabetes are becoming alarmingly prevalent among adolescents over the past decade. H...
This study proposes a new diagnostic approach based on application of machine learning techniques to...
Background: Insulin resistance is a common etiology of metabolic syndrome, but receiver operating ch...
Objectives: This study describes an unsupervised machine learning approach used to estimate the home...
Diabetes is a complicated chronic disease, and it is categorized into type 1 diabetes (T1D) and type...
Childhood obesity has followed, during the last two decades, an ascending trend. Insulin resistance ...
Insulin resistance is a treatable precursor of diabetes and potentially of cardiovascular disease as...
Aims: To study if machine learning methodology can be used to detect persons with increased type 2 d...
Insulin resistance is a treatable precursor of diabetes and potentially of cardiovascular disease as...
Abstract Background Diabetes Mellitus is an increasin...
Diabetes is a chronic, metabolic disease characterized by high blood sugar levels. Among the main ty...
Diabetes comes under chronic disease, in which cells are not able to use blood sugar (glucose) effic...
AbstractBackgroundObesity and/or insulin resistance have gained increasing attention as the core man...
Two approaches to building models for prediction of the onset of Type 1 diabetes mellitus in juvenil...
Objective: IR is a pathological condition strongly associated with obesity and involved in the patho...
Prediabetes and diabetes are becoming alarmingly prevalent among adolescents over the past decade. H...
This study proposes a new diagnostic approach based on application of machine learning techniques to...
Background: Insulin resistance is a common etiology of metabolic syndrome, but receiver operating ch...
Objectives: This study describes an unsupervised machine learning approach used to estimate the home...
Diabetes is a complicated chronic disease, and it is categorized into type 1 diabetes (T1D) and type...
Childhood obesity has followed, during the last two decades, an ascending trend. Insulin resistance ...
Insulin resistance is a treatable precursor of diabetes and potentially of cardiovascular disease as...
Aims: To study if machine learning methodology can be used to detect persons with increased type 2 d...
Insulin resistance is a treatable precursor of diabetes and potentially of cardiovascular disease as...
Abstract Background Diabetes Mellitus is an increasin...
Diabetes is a chronic, metabolic disease characterized by high blood sugar levels. Among the main ty...
Diabetes comes under chronic disease, in which cells are not able to use blood sugar (glucose) effic...
AbstractBackgroundObesity and/or insulin resistance have gained increasing attention as the core man...
Two approaches to building models for prediction of the onset of Type 1 diabetes mellitus in juvenil...
Objective: IR is a pathological condition strongly associated with obesity and involved in the patho...
Prediabetes and diabetes are becoming alarmingly prevalent among adolescents over the past decade. H...