Literature DB >> 30341086

Two Novel Candidate Genes for Insulin Secretion Identified by Comparative Genomics of Multiple Backcross Mouse Populations.

Tanja Schallschmidt1,2, Sandra Lebek1,2, Delsi Altenhofen1,2, Mareike Damen1,2, Yvonne Schulte1,2, Birgit Knebel1,2, Ralf Herwig3, Axel Rasche3, Torben Stermann1,2, Anne Kamitz2,4, Nicole Hallahan2,4, Markus Jähnert2,4, Heike Vogel2,4, Annette Schürmann2,4, Alexandra Chadt5,2, Hadi Al-Hasani5,2.   

Abstract

To identify novel disease genes for type 2 diabetes (T2D) we generated two backcross populations of obese and diabetes-susceptible New Zealand Obese (NZO/HI) mice with the two lean mouse strains 129P2/OlaHsd and C3HeB/FeJ. Subsequent whole-genome linkage scans revealed 30 novel quantitative trait loci (QTL) for T2D-associated traits. The strongest association with blood glucose [12 cM, logarithm of the odds (LOD) 13.3] and plasma insulin (17 cM, LOD 4.8) was detected on proximal chromosome 7 (designated Nbg7p, NZO blood glucose on proximal chromosome 7) exclusively in the NZOxC3H crossbreeding, suggesting that the causal gene is contributed by the C3H genome. Introgression of the critical C3H fragment into the genetic NZO background by generating recombinant congenic strains and metabolic phenotyping validated the phenotype. For the detection of candidate genes in the critical region (30-46 Mb), we used a combined approach of haplotype and gene expression analysis to search for C3H-specific gene variants in the pancreatic islets, which appeared to be the most likely target tissue for the QTL. Two genes, Atp4a and Pop4, fulfilled the criteria from our candidate gene approaches. The knockdown of both genes in MIN6 cells led to decreased glucose-stimulated insulin secretion, indicating a regulatory role of both genes in insulin secretion, thereby possibly contributing to the phenotype linked to Nbg7p In conclusion, our combined- and comparative-cross analysis approach has successfully led to the identification of two novel diabetes susceptibility candidate genes, and thus has been proven to be a valuable tool for the discovery of novel disease genes.
Copyright © 2018 by the Genetics Society of America.

Entities:  

Keywords:  candidate disease genes; diabetes; haplotypes; positional cloning; quantitative trait loci

Mesh:

Substances:

Year:  2018        PMID: 30341086      PMCID: PMC6283180          DOI: 10.1534/genetics.118.301578

Source DB:  PubMed          Journal:  Genetics        ISSN: 0016-6731            Impact factor:   4.562


  59 in total

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