Data-Driven Phenotyping of Presymptomatic Type 1 Diabetes Using Longitudinal Autoantibody Profiles
Author:
Ghalwash Mohamed12, Anand Vibha3ORCID, Ng Kenney1ORCID, Dunne Jessica L.4, Lou Olivia4, Lundgren Markus5, Hagopian William A.6, Rewers Marian7, Ziegler Anette-G.8ORCID, Veijola Riitta9ORCID, , Ziegler Anette G., Bonifacio Ezio, Achenbach Peter, Winkler Christiane, Rewers Marian, Frohnert Brigitte I., Norris Jill, Steck Andrea, Waugh Kathleen, Yu Liping, Hagopian William A., Killian Michael, Wolf Angela, Meyer Jocelyn, Crouch Claire, Radtke Jared, Lernmark Åke, Larsson Helena Elding, Lundgren Markus, Maziarz Marlena, Spiliopoulos Lampros, Jönsson Josefin, Veijola Riitta, Toppari Jorma, Ilonen Jorma, Knip Mikael, Anand Vibha, Ghalwash Mohamed, Ng Kenney, Li Zhiguo, Kwon B.C., Stravopolous Harry, Koski Eileen, Malhotra Ashwani, Moore Shelley, Hu Jianying, Dunne Jessica, Liu Bin, Li Ying, Lou Olivia, Martin Frank
Affiliation:
1. 1T.J. Watson Research Center, IBM, Yorktown Heights, NY 2. 2Faculty of Science, Ain Shams University, Cairo, Egypt 3. 3T.J. Watson Research Center, IBM, Cambridge, MA 4. 4JDRF, New York, NY 5. 5Department of Clinical Sciences, Lund University/Clinical Research Centre, Skåne University Hospital, Malmö, Sweden 6. 6Pacific Northwest Research Institute, Seattle, WA 7. 7Department of Pediatrics, Barbara Davis Center for Diabetes, Denver, CO 8. 8Institute of Diabetes Research, German Research Center for Environmental Health, Helmholtz Zentrum München, Munich-Neuherberg, Germany 9. 9Research Unit of Clinical Medicine, Medical Research Center, Department of Pediatrics, University of Oulu and Oulu University Hospital, Oulu, Finland
Abstract
OBJECTIVE
To characterize distinct islet autoantibody profiles preceding stage 3 type 1 diabetes
RESEARCH DESIGN AND METHODS
The T1DI (Type 1 Diabetes Intelligence) study combined data from 1,845 genetically susceptible prospectively observed children who were positive for at least one islet autoantibody: insulin autoantibody (IAA), GAD antibody (GADA), or islet antigen 2 antibody (IA-2A). Using a novel similarity algorithm that considers an individual’s temporal autoantibody profile, age at autoantibody appearance, and variation in the positivity of autoantibody types, we performed an unsupervised hierarchical clustering analysis. Progression rates to diabetes were analyzed via survival analysis.
RESULTS
We identified five main clusters of individuals with distinct autoantibody profiles characterized by seroconversion age and sequence of appearance of the three autoantibodies. The highest 5-year risk from first positive autoantibody to type 1 diabetes (69.9%; 95% CI 60.0–79.2) was observed in children who first developed IAA in early life (median age 1.6 years) followed by GADA (1.9 years) and then IA-2A (2.1 years). Their 10-year risk was 89.9% (95% CI 81.9–95.4). A high 5-year risk was also found in children with persistent IAA and GADA (39.1%) and children with persistent GADA and IA-2A (30.9%). A lower 5-year risk (10.5%) was observed in children with a late appearance of persistent GADA (6.1 years). The lowest 5-year diabetes risk (1.6%) was associated with positivity for a single, often reverting, autoantibody.
CONCLUSIONS
The novel clustering algorithm identified children with distinct islet autoantibody profiles and progression rates to diabetes. These results are useful for prediction, selection of individuals for prevention trials, and studies investigating various pathways to type 1 diabetes.
Publisher
American Diabetes Association
Reference24 articles.
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