Literature DB >> 35041021

Characterising the age-dependent effects of risk factors on type 1 diabetes progression.

Michelle So1,2, Colin O'Rourke3, Alyssa Ylescupidez3, Henry T Bahnson3, Andrea K Steck4, John M Wentworth5, Brittany S Bruggeman6, Sandra Lord3, Carla J Greenbaum3, Cate Speake3.   

Abstract

AIMS/HYPOTHESIS: Age is known to be one of the most important stratifiers of disease progression in type 1 diabetes. However, what drives the difference in rate of progression between adults and children is poorly understood. Evidence suggests that many type 1 diabetes disease predictors do not have the same effect across the age spectrum. Without a comprehensive analysis describing the varying risk profiles of predictors over the age continuum, researchers and clinicians are susceptible to inappropriate assessment of risk when examining populations of differing ages. We aimed to systematically assess and characterise how the effect of key type 1 diabetes risk predictors changes with age.
METHODS: Using longitudinal data from single- and multiple-autoantibody-positive at-risk individuals recruited between the ages of 1 and 45 years in TrialNet's Pathway to Prevention Study, we assessed and visually characterised the age-varying effect of key demographic, immune and metabolic predictors of type 1 diabetes by employing a flexible spline model. Two progression outcomes were defined: participants with single autoantibodies (n=4893) were analysed for progression to multiple autoantibodies or type 1 diabetes, and participants with multiple autoantibodies were analysed (n=3856) for progression to type 1 diabetes.
RESULTS: Several predictors exhibited significant age-varying effects on disease progression. Amongst single-autoantibody participants, HLA-DR3 (p=0.007), GAD65 autoantibody positivity (p=0.008), elevated BMI (p=0.007) and HOMA-IR (p=0.002) showed a significant increase in effect on disease progression with increasing age. Insulin autoantibody positivity had a diminishing effect with older age in single-autoantibody-positive participants (p<0.001). Amongst multiple-autoantibody-positive participants, male sex (p=0.002) was associated with an increase in risk for progression, and HLA DR3/4 (p=0.05) showed a decreased effect on disease progression with older age. In both single- and multiple-autoantibody-positive individuals, significant changes in HR with age were seen for multiple measures of islet function. Risk estimation using prediction risk score Index60 was found to be better at a younger age for both single- and multiple-autoantibody-positive individuals (p=0.007 and p<0.001, respectively). No age-varying effect was seen for prediction risk score DPTRS (p=0.861 and p=0.178, respectively). Multivariable analyses suggested that incorporating the age-varying effect of the individual components of these validated risk scores has the potential to enhance the risk estimate. CONCLUSIONS/
INTERPRETATION: Analysing the age-varying effect of disease predictors improves understanding and prediction of type 1 diabetes disease progression, and should be leveraged to refine prediction models and guide mechanistic studies.
© 2022. Crown.

Entities:  

Keywords:  Age; Disease progression; Prediction; Risk factors; Type 1 diabetes

Mesh:

Substances:

Year:  2022        PMID: 35041021     DOI: 10.1007/s00125-021-05647-5

Source DB:  PubMed          Journal:  Diabetologia        ISSN: 0012-186X            Impact factor:   10.122


  37 in total

1.  Age-related islet autoantibody incidence in offspring of patients with type 1 diabetes.

Authors:  A-G Ziegler; E Bonifacio
Journal:  Diabetologia       Date:  2012-07       Impact factor: 10.122

2.  The TrialNet Natural History Study of the Development of Type 1 Diabetes: objectives, design, and initial results.

Authors:  Jeffrey L Mahon; Jay M Sosenko; Lisa Rafkin-Mervis; Heidi Krause-Steinrauf; John M Lachin; Clinton Thompson; Polly J Bingley; Ezio Bonifacio; Jerry P Palmer; George S Eisenbarth; Joseph Wolfsdorf; Jay S Skyler
Journal:  Pediatr Diabetes       Date:  2008-09-24       Impact factor: 4.866

3.  Impact of Age and Antibody Type on Progression From Single to Multiple Autoantibodies in Type 1 Diabetes Relatives.

Authors:  Emanuele Bosi; David C Boulware; Dorothy J Becker; Jane H Buckner; Susan Geyer; Peter A Gottlieb; Courtney Henderson; Amanda Kinderman; Jay M Sosenko; Andrea K Steck; Polly J Bingley
Journal:  J Clin Endocrinol Metab       Date:  2017-08-01       Impact factor: 5.958

4.  Islet cell antibody-positive relatives with human leukocyte antigen DQA1*0102, DQB1*0602: identification by the Diabetes Prevention Trial-type 1.

Authors:  C J Greenbaum; D A Schatz; D Cuthbertson; A Zeidler; G S Eisenbarth; J P Krischer
Journal:  J Clin Endocrinol Metab       Date:  2000-03       Impact factor: 5.958

5.  A risk score for type 1 diabetes derived from autoantibody-positive participants in the diabetes prevention trial-type 1.

Authors:  Jay M Sosenko; Jeffrey P Krischer; Jerry P Palmer; Jeffrey Mahon; Catherine Cowie; Carla J Greenbaum; David Cuthbertson; John M Lachin; Jay S Skyler
Journal:  Diabetes Care       Date:  2007-11-13       Impact factor: 19.112

Review 6.  Advances in Type 1 Diabetes Prediction Using Islet Autoantibodies: Beyond a Simple Count.

Authors:  Michelle So; Cate Speake; Andrea K Steck; Markus Lundgren; Peter G Colman; Jerry P Palmer; Kevan C Herold; Carla J Greenbaum
Journal:  Endocr Rev       Date:  2021-09-28       Impact factor: 19.871

7.  A new approach for diagnosing type 1 diabetes in autoantibody-positive individuals based on prediction and natural history.

Authors:  Jay M Sosenko; Jay S Skyler; Linda A DiMeglio; Craig A Beam; Jeffrey P Krischer; Carla J Greenbaum; David Boulware; Lisa E Rafkin; Della Matheson; Kevan C Herold; Jeffrey Mahon; Jerry P Palmer
Journal:  Diabetes Care       Date:  2014-12-17       Impact factor: 19.112

8.  Time-Resolved Autoantibody Profiling Facilitates Stratification of Preclinical Type 1 Diabetes in Children.

Authors:  David Endesfelder; Wolfgang Zu Castell; Ezio Bonifacio; Marian Rewers; William A Hagopian; Jin-Xiong She; Åke Lernmark; Jorma Toppari; Kendra Vehik; Alistair J K Williams; Liping Yu; Beena Akolkar; Jeffrey P Krischer; Anette-G Ziegler; Peter Achenbach
Journal:  Diabetes       Date:  2018-10-10       Impact factor: 9.337

9.  The chromosome 6q22.33 region is associated with age at diagnosis of type 1 diabetes and disease risk in those diagnosed under 5 years of age.

Authors:  Jamie R J Inshaw; Neil M Walker; Chris Wallace; Leonardo Bottolo; John A Todd
Journal:  Diabetologia       Date:  2017-10-05       Impact factor: 10.122

10.  The Influence of Type 1 Diabetes Genetic Susceptibility Regions, Age, Sex, and Family History on the Progression From Multiple Autoantibodies to Type 1 Diabetes: A TEDDY Study Report.

Authors:  Jeffrey P Krischer; Xiang Liu; Åke Lernmark; William A Hagopian; Marian J Rewers; Jin-Xiong She; Jorma Toppari; Anette-G Ziegler; Beena Akolkar
Journal:  Diabetes       Date:  2017-09-13       Impact factor: 9.461

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  1 in total

1.  Standard Operating Procedures for Biospecimen Collection, Processing, and Storage: From the Type 1 Diabetes in Acute Pancreatitis Consortium.

Authors:  Clive Wasserfall; Anne-Marie Dyer; Cate Speake; Dana K Andersen; Kendall Thomas Baab; Melena D Bellin; James R Broach; Martha Campbell-Thompson; Vernon M Chinchilli; Peter J Lee; Walter G Park; Richard E Pratley; Jami L Saloman; Emily K Sims; Gong Tang; Dhiraj Yadav; Cemal Yazici; Darwin L Conwell
Journal:  Pancreas       Date:  2022-07-01       Impact factor: 3.243

  1 in total

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