Comparisons of Metabolic Measures to Predict T1D vs Detect a Preventive Treatment Effect in High-Risk Individuals

Author:

Sims Emily K1ORCID,Cuthbertson David2,Jacobsen Laura3,Ismail Heba M1ORCID,Nathan Brandon M4,Herold Kevan C56,Redondo Maria J7,Sosenko Jay89

Affiliation:

1. Department of Pediatrics, Wells Center for Pediatric Research, Pediatric Endocrinology and Diabetology, and the Center for Diabetes and Metabolic Diseases, Indiana University School of Medicine , Indianapolis, IN 46202 , USA

2. Department of Pediatrics, Pediatrics Epidemiology Center, Morsani College of Medicine, University of South Florida , Tampa, FL 33606 , USA

3. Department of Pediatrics, University of Florida College of Medicine , Gainesville, FL 32610 , USA

4. Department of Pediatrics, University of Minnesota , Minneapolis, MN 55455 , USA

5. Division of Diabetes and Endocrinology, Yale University , New Haven, CT 06520 , USA

6. Departments of Immunobiology and Internal Medicine, Yale University , New Haven, CT 06520 , USA

7. Texas Children's Hospital, Baylor College of Medicine , Houston, TX 77030 , USA

8. Department of Medicine, Division of Diabetes, Metabolism, and Endocrinology, University of Miami , Miami, FL 33136 , USA

9. Diabetes Research Institute, University of Miami , Miami, FL 33136 , USA

Abstract

Abstract Context Metabolic measures are frequently used to predict type 1 diabetes (T1D) and to understand effects of disease-modifying therapies. Objective Compare metabolic endpoints for their ability to detect preventive treatment effects and predict T1D. Methods Six-month changes in metabolic endpoints were assessed for (1) detecting treatment effects by comparing placebo and treatment arms from the randomized controlled teplizumab prevention trial, a multicenter clinical trial investigating 14-day intravenous teplizumab infusion and (2) predicting T1D in the TrialNet Pathway to Prevention natural history study. For each metabolic measure, t-Values from t tests for detecting a treatment effect were compared with chi-square values from proportional hazards regression for predicting T1D. Participants in the teplizumab prevention trial and participants in the Pathway to Prevention study selected with the same inclusion criteria used for the teplizumab trial were studied. Results Six-month changes in glucose-based endpoints predicted diabetes better than C-peptide–based endpoints, yet the latter were better at detecting a teplizumab effect. Combined measures of glucose and C-peptide were more balanced than measures of glucose alone or C-peptide alone for predicting diabetes and detecting a teplizumab effect. Conclusion The capacity of a metabolic endpoint to detect a treatment effect does not necessarily correspond to its accuracy for predicting T1D. However, combined glucose and C-peptide endpoints appear to be effective for both predicting diabetes and detecting a response to immunotherapy. These findings suggest that combined glucose and C-peptide endpoints should be incorporated into the design of future T1D prevention trials.

Funder

National Institutes of Health

National Institute of Diabetes and Digestive and Kidney Diseases

National Institute of Allergy and Infectious Diseases

Eunice Kennedy Shriver National Institute of Child Health and Human Development

Doris Duke Charitable Foundation

John Templeton Foundation

Publisher

The Endocrine Society

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1. Endpoints for clinical trials in type 1 diabetes drug development;The Lancet Diabetes & Endocrinology;2024-05

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