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Journal article

Disease-modifying therapies and features linked to treatment response in type 1 diabetes prevention: a systematic review

Abstract

BackgroundType 1 diabetes (T1D) results from immune-mediated destruction of insulin-producing beta cells. Prevention efforts have focused on immune modulation and supporting beta cell health before or around diagnosis; however, heterogeneity in disease progression and therapy response has limited translation to clinical practice, highlighting the need for precision medicine approaches to T1D disease modification.MethodsTo understand the state of knowledge in this area, we performed a systematic review of randomized-controlled trials with ≥$$\ge$$50 participants cataloged in PubMed or Embase from the past 25 years testing T1D disease-modifying therapies and/or identifying features linked to treatment response, analyzing bias using a Cochrane-risk-of-bias instrument.ResultsWe identify and summarize 75 manuscripts, 15 describing 11 prevention trials for individuals with increased risk for T1D, and 60 describing treatments aimed at preventing beta cell loss at disease onset. Seventeen interventions, mostly immunotherapies, show benefit compared to placebo (only two prior to T1D onset). Fifty-seven studies employ precision analyses to assess features linked to treatment response. Age, beta cell function measures, and immune phenotypes are most frequently tested. However, analyses are typically not prespecified, with inconsistent methods of reporting, and tend to report positive findings.ConclusionsWhile the quality of prevention and intervention trials is overall high, the low quality of precision analyses makes it difficult to draw meaningful conclusions that inform clinical practice. To facilitate precision medicine approaches to T1D prevention, considerations for future precision studies include the incorporation of uniform outcome measures, reproducible biomarkers, and prespecified, fully powered precision analyses into future trial design.

Authors

Felton JL; Griffin KJ; Oram RA; Speake C; Long SA; Onengut-Gumuscu S; Rich SS; Monaco GSF; Evans-Molina C; DiMeglio LA

Journal

Communications Medicine, Vol. 3, No. 1,

Publisher

Springer Nature

Publication Date

December 1, 2023

DOI

10.1038/s43856-023-00357-y

ISSN

2730-664X

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