Trajectories of clinical characteristics, complications and treatment choices in data-driven subgroups of type 2 diabetes

Xinyu Li*, Louise A. Donnelly, Roderick C. Slieker, Joline W.J. Beulens, Leen M. ‘t Hart, Petra J.M. Elders, Ewan R. Pearson, Anoukh van Giessen, Jose Leal, Talitha Feenstra

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

2 Downloads (Pure)

Abstract

Aims/hypothesis: This study aimed to explore the added value of subgroups that categorise individuals with type 2 diabetes by k-means clustering for two primary care registries (the Netherlands and Scotland), inspired by Ahlqvist’s novel diabetes subgroups and previously analysed by Slieker et al. Methods: We used two Dutch and Scottish diabetes cohorts (N=3054 and 6145; median follow-up=11.2 and 12.3 years, respectively) and defined five subgroups by k-means clustering with age at baseline, BMI, HbA1c, HDL-cholesterol and C-peptide. We investigated differences between subgroups by trajectories of risk factor values (random intercept models), time to diabetes-related complications (logrank tests and Cox models) and medication patterns (multinomial logistic models). We also compared directly using the clustering indicators as predictors of progression vs the k-means discrete subgroups. Cluster consistency over follow-up was assessed. Results: Subgroups’ risk factors were significantly different, and these differences remained generally consistent over follow-up. Among all subgroups, individuals with severe insulin resistance faced a significantly higher risk of myocardial infarction both before (HR 1.65; 95% CI 1.40, 1.94) and after adjusting for age effect (HR 1.72; 95% CI 1.46, 2.02) compared with mild diabetes with high HDL-cholesterol. Individuals with severe insulin-deficient diabetes were most intensively treated, with more than 25% prescribed insulin at 10 years of diagnosis. For severe insulin-deficient diabetes relative to mild diabetes, the relative risks for using insulin relative to no common treatment would be expected to increase by a factor of 3.07 (95% CI 2.73, 3.44), holding other factors constant. Clustering indicators were better predictors of progression variation relative to subgroups, but prediction accuracy may improve after combining both. Clusters were consistent over 8 years with an accuracy ranging from 59% to 72%. Conclusions/interpretation: Data-driven subgroup allocations were generally consistent over follow-up and captured significant differences in risk factor trajectories, medication patterns and complication risks. Subgroups serve better as a complement rather than as a basis for compressing clustering indicators. Graphical Abstract: (Figure presented.).

Original languageEnglish
Article number10.1007/s00125-024-06147-y
Pages (from-to)1343-1355
Number of pages13
JournalDiabetologia
Volume67
Issue number7
DOIs
Publication statusPublished - Jul 2024

Keywords

  • Data-driven subgroups
  • Longitudinal analysis
  • Real-world data
  • Routine care
  • Stratification of diabetes

Fingerprint

Dive into the research topics of 'Trajectories of clinical characteristics, complications and treatment choices in data-driven subgroups of type 2 diabetes'. Together they form a unique fingerprint.

Cite this