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A network analysis framework of genetic and nongenetic risks for type 2 diabetes

Both genetic and nongenetic factors have been found to be associated with type 2 diabetes, however, the correlation between them is still unclear. In the present study, we aimed to fully decipher the nongenetic and genetic factor association network for type 2 diabetes. We identified risk factors fo...

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Published in:Reviews in endocrine & metabolic disorders 2021-06, Vol.22 (2), p.461-469
Main Authors: Zhang, Yuan, Li, Shu, Cao, Zhi, Cheng, Yangyang, Xu, Chenjie, Yang, Hongxi, Sun, Li, Jiao, Hongxiao, Wang, Ju, Li, Wei-Dong, Wang, Yaogang
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container_title Reviews in endocrine & metabolic disorders
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creator Zhang, Yuan
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Wang, Yaogang
description Both genetic and nongenetic factors have been found to be associated with type 2 diabetes, however, the correlation between them is still unclear. In the present study, we aimed to fully decipher the nongenetic and genetic factor association network for type 2 diabetes. We identified risk factors for type 2 diabetes by systematically searching for related meta-analyses and genome-wide association studies (GWAS) database. Among a total of 27,822 studies screened, 202 articles were eligible, from which 174 nongenetic factors and 210 genetic factors associated with type 2 diabetes were identified. Then, we obtained 584 associations between the nongenetic and genetic factors of type 2 diabetes, based on which a risk factor association network was conducted. The nongenetic factors could be classified into seven categories according to the Global Burden of Diseases (GBD). Of these seven categories of nongenetic factors, five were found to be correlated with genes associated with type 2 diabetes, including environmental risks, behavioral risks, metabolic risks, related disease of type 2 diabetes, and treatments. Specifically, air pollutants of environmental risks, alcohol using of behavioral risks, obesity of metabolic risks, rheumatoid arthritis of related disease risk, and simvastatin of treatment was correlated with the largest number of genes. In summary, the correlation between genetic factors and nongenetic factors identified in this study indicates that there is a common phenotype-genotype association in type 2 diabetes, with the combinations of genotypes (“genetic signature”) clustering in phenotypes related to type 2 diabetes. Thus, we should take a systematic approach to explore the relationship of various factors for type 2 diabetes, as well as other noncommunicable diseases.
doi_str_mv 10.1007/s11154-020-09585-2
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Specifically, air pollutants of environmental risks, alcohol using of behavioral risks, obesity of metabolic risks, rheumatoid arthritis of related disease risk, and simvastatin of treatment was correlated with the largest number of genes. In summary, the correlation between genetic factors and nongenetic factors identified in this study indicates that there is a common phenotype-genotype association in type 2 diabetes, with the combinations of genotypes (“genetic signature”) clustering in phenotypes related to type 2 diabetes. 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subjects Diabetes
Diabetes mellitus (non-insulin dependent)
Endocrinology
Genetic analysis
Genetic factors
Genome-wide association studies
Genomes
Genotypes
Internal Medicine
Medicine
Medicine & Public Health
Metabolism
Phenotypes
Pollutants
Rheumatoid arthritis
Risk factors
Simvastatin
title A network analysis framework of genetic and nongenetic risks for type 2 diabetes
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