Applicability of a microRNA-based Dynamic Risk Score (DRS) for type 1 diabetes

  • Hrishikesh Hardikar (Creator)
  • Vinod Thorat (Creator)
  • Pooja Kunte (Creator)
  • Reshmi Kulkarni (Creator)
  • Aniruddha Pant (Creator)
  • Wilson Wong (Creator)
  • Mugdha Joglekar (Creator)
  • Anand Hardikar (Creator)

Dataset

Description

Identifying biomarkers of functional β-cell loss is critical in risk stratification for Type 1 Diabetes (T1D). We report a microRNA-based dynamic (responsive to environment) risk score developed using multi-center, multi-ethnic/country (“multi-context”) cohorts. Discovery (wet-lab and dry-lab) analysis identified 50 microRNAs that were measured across n=2,204 individuals from four contexts (4C=AUS/Australia, DNK/Denmark, HKG/Hong Kong SAR China, IND/India). A 4-context, microRNA-based dynamic risk score (DRS4C) was generated, which effectively stratified individuals with/without T1D. Generative artificial intelligence (GAI) was used to create an enhanced (e)DRS4C, that offered high AUC (0.84) on an independent multi-context Validation-set (n=662) and most accurately predicted future exogenous-insulin requirement at one-hour of islet transplantation in Canada (CAN) recipients. In a clinical trial assessing an emerging T1D therapy, baseline microRNA signature, but not the clinical characteristics, stratified 1-year response to Imatinib. This study harnessed ML and GAI approaches, identifying and validating a microRNA-based DRS for T1D stratification and treatment efficacy prediction. This capsule presents the code for stratifying controls and T1D study participants as well as for predicting outcomes of T1D therapy.
Date made available11 Jun 2025
PublisherCode Ocean

UN SDGs

This dataset contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being
  • A microRNA-based dynamic risk score for type 1 diabetes

    Joglekar, M. V., Wong, W. K. M., Kunte, P. S., Hardikar, H. P., Kulkarni, R. A., Farr, R. J., Pham, H. T. N., Coles, M., Maynard, C. L., Hayward, R., Piya, M. K., Hardikar, A. A., Chimoriya, R., Taylor, C. J., Pereira E Cotta, M. V., Sachithanandan, N., Dong, C. X., Ema, F. K., Perera, S. & Satoor, S. N. & 2 others, et al. & PREDICT T1D Study Group, Aug 2025, In: Nature Medicine. 31, 8, p. 2622-2631 10 p.

    Research output: Contribution to journalArticlepeer-review

    Open Access
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