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An omics-based machine learning approach to predict diabetes progression: a RHAPSODY study.
Slieker, Roderick C; Münch, Magnus; Donnelly, Louise A; Bouland, Gerard A; Dragan, Iulian; Kuznetsov, Dmitry; Elders, Petra J M; Rutter, Guy A; Ibberson, Mark; Pearson, Ewan R; 't Hart, Leen M; van de Wiel, Mark A; Beulens, Joline W J.
Affiliation
  • Slieker RC; Department of Epidemiology and Data Science, Amsterdam UMC, Vrije Universiteit, Amsterdam, the Netherlands.
  • Münch M; Amsterdam Public Health, Amsterdam, the Netherlands.
  • Donnelly LA; Amsterdam Cardiovascular Sciences, Amsterdam, the Netherlands.
  • Bouland GA; Department of Cell and Chemical Biology, Leiden University Medical Center, Leiden, the Netherlands.
  • Dragan I; Department of Epidemiology and Data Science, Amsterdam UMC, Vrije Universiteit, Amsterdam, the Netherlands.
  • Kuznetsov D; Population Health & Genomics, School of Medicine, University of Dundee, Dundee, UK.
  • Elders PJM; Department of Cell and Chemical Biology, Leiden University Medical Center, Leiden, the Netherlands.
  • Rutter GA; Delft Bioinformatics Lab, Delft University of Technology, Delft, the Netherlands.
  • Ibberson M; Vital-IT Group, SIB Swiss Institute of Bioinformatics, Lausanne, Switzerland.
  • Pearson ER; Vital-IT Group, SIB Swiss Institute of Bioinformatics, Lausanne, Switzerland.
  • 't Hart LM; Amsterdam Public Health, Amsterdam, the Netherlands.
  • van de Wiel MA; Amsterdam Cardiovascular Sciences, Amsterdam, the Netherlands.
  • Beulens JWJ; Department of General Practice, Amsterdam UMC, Vrije Universiteit, Amsterdam, the Netherlands.
Diabetologia ; 67(5): 885-894, 2024 May.
Article de En | MEDLINE | ID: mdl-38374450
ABSTRACT
AIMS/

HYPOTHESIS:

People with type 2 diabetes are heterogeneous in their disease trajectory, with some progressing more quickly to insulin initiation than others. Although classical biomarkers such as age, HbA1c and diabetes duration are associated with glycaemic progression, it is unclear how well such variables predict insulin initiation or requirement and whether newly identified markers have added predictive value.

METHODS:

In two prospective cohort studies as part of IMI-RHAPSODY, we investigated whether clinical variables and three types of molecular markers (metabolites, lipids, proteins) can predict time to insulin requirement using different machine learning approaches (lasso, ridge, GRridge, random forest). Clinical variables included age, sex, HbA1c, HDL-cholesterol and C-peptide. Models were run with unpenalised clinical variables (i.e. always included in the model without weights) or penalised clinical variables, or without clinical variables. Model development was performed in one cohort and the model was applied in a second cohort. Model performance was evaluated using Harrel's C statistic.

RESULTS:

Of the 585 individuals from the Hoorn Diabetes Care System (DCS) cohort, 69 required insulin during follow-up (1.0-11.4 years); of the 571 individuals in the Genetics of Diabetes Audit and Research in Tayside Scotland (GoDARTS) cohort, 175 required insulin during follow-up (0.3-11.8 years). Overall, the clinical variables and proteins were selected in the different models most often, followed by the metabolites. The most frequently selected clinical variables were HbA1c (18 of the 36 models, 50%), age (15 models, 41.2%) and C-peptide (15 models, 41.2%). Base models (age, sex, BMI, HbA1c) including only clinical variables performed moderately in both the DCS discovery cohort (C statistic 0.71 [95% CI 0.64, 0.79]) and the GoDARTS replication cohort (C 0.71 [95% CI 0.69, 0.75]). A more extensive model including HDL-cholesterol and C-peptide performed better in both cohorts (DCS, C 0.74 [95% CI 0.67, 0.81]; GoDARTS, C 0.73 [95% CI 0.69, 0.77]). Two proteins, lactadherin and proto-oncogene tyrosine-protein kinase receptor, were most consistently selected and slightly improved model performance. CONCLUSIONS/

INTERPRETATION:

Using machine learning approaches, we show that insulin requirement risk can be modestly well predicted by predominantly clinical variables. Inclusion of molecular markers improves the prognostic performance beyond that of clinical variables by up to 5%. Such prognostic models could be useful for identifying people with diabetes at high risk of progressing quickly to treatment intensification. DATA

AVAILABILITY:

Summary statistics of lipidomic, proteomic and metabolomic data are available from a Shiny dashboard at https//rhapdata-app.vital-it.ch .
Sujet(s)
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Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Diabète de type 2 Limites: Humans Langue: En Journal: Diabetologia Année: 2024 Type de document: Article Pays d'affiliation: Pays-Bas

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Diabète de type 2 Limites: Humans Langue: En Journal: Diabetologia Année: 2024 Type de document: Article Pays d'affiliation: Pays-Bas