Τρίτη 14 Νοεμβρίου 2017

Genetic prediction of type 2 diabetes using deep neural network

Type 2 diabetes (T2DM) has strong heritability but genetic models to explain heritability have been challenging. We tested deep neural network (DNN) to predict T2DM using the nested case-control study of Nurses' Health Study (3,326 females, 45.6% T2DM) and Health Professionals Follow-up Study (2,502 males, 46.5% T2DM). We selected 96, 214, 399, and 678 SNPs through Fisher's exact test and L1-penalized logistic regression. We split each dataset randomly in 4:1 to train prediction models and test their performance. DNN and logistic regressions showed better AUC of ROC curves than the clinical model when 399 or more SNPs included. DNN was superior to logistic regressions in AUC with 399 or more SNPs in male and 678 SNPs in female. Addition of clinical factors consistently increased AUC of DNN but failed to improve logistic regressions with 214 or more SNPs. In conclusion, we show that DNN can be a versatile tool to predict T2DM incorporating large numbers of SNPs and clinical information. Limitations include a relatively small number of the subjects mostly of European ethnicity. Further studies are warranted to confirm and improve performance of genetic prediction models using DNN in different ethnic groups.

Thumbnail image of graphical abstract

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