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Building and validating a prediction model for paediatric type 1 diabetes risk using next generation targeted sequencing of class II HLA genes

Authors :
Ping Zhao, Lue
Carlsson, Annelie
Elding Larsson, Helena
Forsander, Gun
Ivarsson, Sten A.
Kockum, Ingrid
Ludvigsson, Johnny
Marcus, Claude
Persson, Martina
Samuelsson, Ulf
Ortqvist, Eva
Pyo, Chul-Woo
Bolouri, Hamid
Zhao, Michael
Nelson, Wyatt C.
Geraghty, Daniel E.
Lernmark, Ake
Ping Zhao, Lue
Carlsson, Annelie
Elding Larsson, Helena
Forsander, Gun
Ivarsson, Sten A.
Kockum, Ingrid
Ludvigsson, Johnny
Marcus, Claude
Persson, Martina
Samuelsson, Ulf
Ortqvist, Eva
Pyo, Chul-Woo
Bolouri, Hamid
Zhao, Michael
Nelson, Wyatt C.
Geraghty, Daniel E.
Lernmark, Ake
Publication Year :
2017

Abstract

AimIt is of interest to predict possible lifetime risk of type 1 diabetes (T1D) in young children for recruiting high-risk subjects into longitudinal studies of effective prevention strategies. MethodsUtilizing a case-control study in Sweden, we applied a recently developed next generation targeted sequencing technology to genotype class II genes and applied an object-oriented regression to build and validate a prediction model for T1D. ResultsIn the training set, estimated risk scores were significantly different between patients and controls (P=8.12x10(-92)), and the area under the curve (AUC) from the receiver operating characteristic (ROC) analysis was 0.917. Using the validation data set, we validated the result with AUC of 0.886. Combining both training and validation data resulted in a predictive model with AUC of 0.903. Further, we performed a biological validation by correlating risk scores with 6 islet autoantibodies, and found that the risk score was significantly correlated with IA-2A (Z-score=3.628, Pamp;lt;0.001). When applying this prediction model to the Swedish population, where the lifetime T1D risk ranges from 0.5% to 2%, we anticipate identifying approximately 20 000 high-risk subjects after testing all newborns, and this calculation would identify approximately 80% of all patients expected to develop T1D in their lifetime. ConclusionThrough both empirical and biological validation, we have established a prediction model for estimating lifetime T1D risk, using class II HLA. This prediction model should prove useful for future investigations to identify high-risk subjects for prevention research in high-risk populations.<br />Funding Agencies|European Foundation for the Study of Diabetes (EFSD); Swedish Child Diabetes Foundation (Barndiabetesfonden); National Institutes of Health [DK26190, DK63861]; Swedish Research Council; Skane County Council; Swedish Association of Local Authorities and Regions (SKL); National Institute of Diabetes and Digestive and Kidney Diseases [16-05-MH]; Fred Hutchinson Cancer Research Center

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1233398238
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1002.dmrr.2921