In epidemiology studies, identification of diabetes type (type 1 vs. type 2) among study participants with diabetes is important; however, conventional diabetes type identification approaches that include age at diabetes diagnosis as an initial criterion introduces biases. Using data from the National Health and Nutrition Examination Survey, we have developed a novel algorithm which does not include age at diagnosis to identify participants with self-reported diagnosed diabetes as having type 1 vs. type 2 diabetes.MethodsA total of 5457 National Health and Nutrition Examination Survey participants between cycles 1999-2000 and 2015-2016 reported that a health professional had diagnosed them as having diabetes at a time other than during preg...
Introduction We aimed to develop algorithms distinguishing type 1 diabetes (T1D) from type 2 diabete...
The aim of the study: Evaluate the effectiveness of forms 089-2 / a \"Report on newly detected diabe...
OBJECTIVES:UK Biobank is a UK-wide cohort of 502,655 people aged 40-69, recruited from National Heal...
ObjectivesSurveys for U.S. diabetes surveillance do not reliably distinguish between type 1 and type...
Background Diabetes mellitus is a disease of high public health relevance. To estimate the temporal ...
Background: Research into diabetes mellitus (DM) often requires a reproducible method for identifyin...
Abstract Background Validated algorithms to classify type 1 and 2 diabetes (T1D, T2D) are mostly li...
OBJECTIVE:To classify individuals with diabetes mellitus (DM) into DM subtypes using population-base...
Big data sources represent an opportunity for diabetes research. One example is the French national ...
To classify individuals with diabetes mellitus (DM) into DM subtypes using population-based studies....
OBJECTIVE: Clinicians predominantly use clinical features to differentiate type 1 from type 2 diabet...
OBJECTIVE: We aimed to compare the performance of approaches for classifying insulin treated diabete...
Abstract Background Disease surveillance of diabetes among youth has relied mainly upon manual chart...
The performance of automated algorithms for childhood diabetes case ascertainment and type classific...
The pathogenesis, treatment, and outcomes of type 1 and type 2 diabetes differ. Current surveys deri...
Introduction We aimed to develop algorithms distinguishing type 1 diabetes (T1D) from type 2 diabete...
The aim of the study: Evaluate the effectiveness of forms 089-2 / a \"Report on newly detected diabe...
OBJECTIVES:UK Biobank is a UK-wide cohort of 502,655 people aged 40-69, recruited from National Heal...
ObjectivesSurveys for U.S. diabetes surveillance do not reliably distinguish between type 1 and type...
Background Diabetes mellitus is a disease of high public health relevance. To estimate the temporal ...
Background: Research into diabetes mellitus (DM) often requires a reproducible method for identifyin...
Abstract Background Validated algorithms to classify type 1 and 2 diabetes (T1D, T2D) are mostly li...
OBJECTIVE:To classify individuals with diabetes mellitus (DM) into DM subtypes using population-base...
Big data sources represent an opportunity for diabetes research. One example is the French national ...
To classify individuals with diabetes mellitus (DM) into DM subtypes using population-based studies....
OBJECTIVE: Clinicians predominantly use clinical features to differentiate type 1 from type 2 diabet...
OBJECTIVE: We aimed to compare the performance of approaches for classifying insulin treated diabete...
Abstract Background Disease surveillance of diabetes among youth has relied mainly upon manual chart...
The performance of automated algorithms for childhood diabetes case ascertainment and type classific...
The pathogenesis, treatment, and outcomes of type 1 and type 2 diabetes differ. Current surveys deri...
Introduction We aimed to develop algorithms distinguishing type 1 diabetes (T1D) from type 2 diabete...
The aim of the study: Evaluate the effectiveness of forms 089-2 / a \"Report on newly detected diabe...
OBJECTIVES:UK Biobank is a UK-wide cohort of 502,655 people aged 40-69, recruited from National Heal...