| Literature DB >> 30305370 |
David Endesfelder1, Wolfgang Zu Castell2,3, Ezio Bonifacio4,5, Marian Rewers6, William A Hagopian7, Jin-Xiong She8, Åke Lernmark9, Jorma Toppari10,11, Kendra Vehik12, Alistair J K Williams13, Liping Yu6, Beena Akolkar14, Jeffrey P Krischer12, Anette-G Ziegler5,15,16,17, Peter Achenbach18,15,16,17.
Abstract
Progression to clinical type 1 diabetes varies among children who develop β-cell autoantibodies. Differences in autoantibody patterns could relate to disease progression and etiology. Here we modeled complex longitudinal autoantibody profiles by using a novel wavelet-based algorithm. We identified clusters of similar profiles associated with various types of progression among 600 children from The Environmental Determinants of Diabetes in the Young (TEDDY) birth cohort study; these children developed persistent insulin autoantibodies (IAA), GAD autoantibodies (GADA), insulinoma-associated antigen 2 autoantibodies (IA-2A), or a combination of these, and they were followed up prospectively at 3- to 6-month intervals (median follow-up 6.5 years). Children who developed multiple autoantibody types (n = 370) were clustered, and progression from seroconversion to clinical diabetes within 5 years ranged between clusters from 6% (95% CI 0, 17.4) to 84% (59.2, 93.6). Children who seroconverted early in life (median age <2 years) and developed IAA and IA-2A that were stable-positive on follow-up had the highest risk of diabetes, and this risk was unaffected by GADA status. Clusters of children who lacked stable-positive GADA responses contained more boys and lower frequencies of the HLA-DR3 allele. Our novel algorithm allows refined grouping of β-cell autoantibody-positive children who distinctly progressed to clinical type 1 diabetes, and it provides new opportunities in searching for etiological factors and elucidating complex disease mechanisms.Entities:
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Year: 2018 PMID: 30305370 PMCID: PMC6302536 DOI: 10.2337/db18-0594
Source DB: PubMed Journal: Diabetes ISSN: 0012-1797 Impact factor: 9.337