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Diabetes mellitus exhibits significant heterogeneity in clinical presentation, progression, and treatment response, rendering the traditional binary classification into type 1 and type 2 diabetes increasingly inadequate. The All New Diabetics in Scania (ANDIS) framework, introduced in 2018, proposed a novel data-driven classification system that stratifies adult-onset diabetes into five distinct subgroups based on clinical and biochemical characteristics. This manuscript critically examines the scientific rationale, methodology, and clinical implications of the ANDIS classification, while evaluating its utility through evidence drawn from Indian (INSPIRED and WellGen) and global validation studies (DEVOTE, LEADER, DD2, NHANES, and FoCus cohorts). Findings from these cohorts affirm the biological relevance of clusters like severe insulin-deficient diabetes (SIDD) and severe insulin-resistant diabetes (SIRD). However, their prevalence varies across ethnic and regional populations. Despite its theoretical strengths, the ANDIS model faces major implementation barriers, including diagnostic complexity, high costs, and limited therapeutic differentiation over existing guidelines. Furthermore, access to required diagnostics such as glutamic acid decarboxylase (GAD) antibody testing and homeostatic model assessment 2 (HOMA2) indices is limited even in high-income countries (HICs). The framework's real-world applicability can be simplified using accessible markers such as hemoglobin A1C (HbA1c), body mass index (BMI), and abdominal circumference. The manuscript emphasizes the need for dynamic, low-cost, and population-specific adaptations to make stratified diabetes care feasible and impactful globally.
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http://dx.doi.org/10.59556/japi.73.1010 | DOI Listing |
J Assoc Physicians India
June 2025
Consultant, Department of Endocrinology, Joshi Clinic, Mumbai, Maharashtra, India, Orcid: https://orcid.org/0000-0003-2741-5022.
Diabetes mellitus exhibits significant heterogeneity in clinical presentation, progression, and treatment response, rendering the traditional binary classification into type 1 and type 2 diabetes increasingly inadequate. The All New Diabetics in Scania (ANDIS) framework, introduced in 2018, proposed a novel data-driven classification system that stratifies adult-onset diabetes into five distinct subgroups based on clinical and biochemical characteristics. This manuscript critically examines the scientific rationale, methodology, and clinical implications of the ANDIS classification, while evaluating its utility through evidence drawn from Indian (INSPIRED and WellGen) and global validation studies (DEVOTE, LEADER, DD2, NHANES, and FoCus cohorts).
View Article and Find Full Text PDFCardiovasc Diabetol
February 2025
Institute of Diabetes and Clinical Metabolic Research, University Medical Center Schleswig-Holstein (UKSH) - Campus Kiel, Düsternbrooker Weg 17, 24105, Kiel, Germany.
Background: The traditional binary classification of diabetes into Type 1 and Type 2 fails to capture the heterogeneity among diabetes patients. This study aims to identify and characterize diabetes subtypes within the German FoCus cohort, using the ANDIS cohort's classification framework, and to explore subtype-specific variations in metabolic markers, gut microbiota, lifestyle, social factors, and comorbidities.
Methods: We utilized data from 416 participants (208 with diabetes and 208 matched metabolically healthy controls) from the German FoCus cohort.
Int J Biometeorol
February 2015
Faculty of Science and Technology, Institute of Ecology and Earth Sciences, University of Tartu, Ravila 14a, Tartu, 50411, Estonia,
A historical phenological record and meteorological data of the period 1960-2009 are used to analyse the ability of seven phenological models to predict leaf unfolding and beginning of flowering for two tree species-silver birch Betula pendula and bird cherry Padus racemosa-in Latvia. Model stability is estimated performing multiple model fitting runs using half of the data for model training and the other half for evaluation. Correlation coefficient, mean absolute error and mean squared error are used to evaluate model performance.
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