PURPOSE: We present an approach to prioritize single nucleotide polymorphisms for further follow-up in genome-wide association studies of type 2 diabetes. METHOD: The proposed method combines both the use of open data access from two type 2 diabetes-genome-wide association studies (granted by the Diabetes Genetics Initiative and the Welcome Trust Case Control Consortium) and the comprehensive analysis of candidate regions generated by the freely accessible ENDEAVOUR software. RESULTS: The algorithm prioritized all genes of the whole genome in relation to type 2 diabetes. There were six of 1096 single nucleotide polymorphisms in five genes potentially associated with type 2 diabetes: tachykinin receptor 3 (rs1384401), anaplastic lymphoma receptor tyrosine kinase (rs4319896), calcium channel, voltage-dependent, L type, alpha 1D subunit (rs12487452), FOXO1A (rs10507486 and rs7323267), and v-akt murine thymoma viral oncogene homolog 3 (rs897959). We estimated the fixed effect and P values of each single nucleotide polymorphism in the combined dataset by Mantel-Haenszel meta-analysis and we observed significant P values for all single nucleotide polymorphisms except for rs897959 at v-akt murine thymoma viral oncogene homolog 3. CONCLUSION: The proposed strategy may be used as an alternative tool for optimizing the information of the nearly 500,000 gene variants in which markers with modest significant P value for disease association are currently disregarded. Additionally, the said single nucleotide polymorphisms may be incorporated into the replication of the multistage design involved in the genome-wide association studies.
PURPOSE: We present an approach to prioritize single nucleotide polymorphisms for further follow-up in genome-wide association studies of type 2 diabetes. METHOD: The proposed method combines both the use of open data access from two type 2 diabetes-genome-wide association studies (granted by the Diabetes Genetics Initiative and the Welcome Trust Case Control Consortium) and the comprehensive analysis of candidate regions generated by the freely accessible ENDEAVOUR software. RESULTS: The algorithm prioritized all genes of the whole genome in relation to type 2 diabetes. There were six of 1096 single nucleotide polymorphisms in five genes potentially associated with type 2 diabetes: tachykinin receptor 3 (rs1384401), anaplastic lymphoma receptor tyrosine kinase (rs4319896), calcium channel, voltage-dependent, L type, alpha 1D subunit (rs12487452), FOXO1A (rs10507486 and rs7323267), and v-akt murine thymoma viral oncogene homolog 3 (rs897959). We estimated the fixed effect and P values of each single nucleotide polymorphism in the combined dataset by Mantel-Haenszel meta-analysis and we observed significant P values for all single nucleotide polymorphisms except for rs897959 at v-akt murine thymoma viral oncogene homolog 3. CONCLUSION: The proposed strategy may be used as an alternative tool for optimizing the information of the nearly 500,000 gene variants in which markers with modest significant P value for disease association are currently disregarded. Additionally, the said single nucleotide polymorphisms may be incorporated into the replication of the multistage design involved in the genome-wide association studies.
Authors: Santosh S Atanur; Inanç Birol; Victor Guryev; Martin Hirst; Oliver Hummel; Catherine Morrissey; Jacques Behmoaras; Xose M Fernandez-Suarez; Michelle D Johnson; William M McLaren; Giannino Patone; Enrico Petretto; Charles Plessy; Kathleen S Rockland; Charles Rockland; Kathrin Saar; Yongjun Zhao; Piero Carninci; Paul Flicek; Ted Kurtz; Edwin Cuppen; Michal Pravenec; Norbert Hubner; Steven J M Jones; Ewan Birney; Timothy J Aitman Journal: Genome Res Date: 2010-04-29 Impact factor: 9.043
Authors: Ariadne Letra; Renato Menezes; Manika Govil; Renata F Fonseca; Toby McHenry; José M Granjeiro; Eduardo E Castilla; Iêda M Orioli; Mary L Marazita; Alexandre R Vieira Journal: Am J Med Genet A Date: 2010-07 Impact factor: 2.802
Authors: Cosetta Minelli; Alessandro De Grandi; Christian X Weichenberger; Martin Gögele; Mirko Modenese; John Attia; Jennifer H Barrett; Michael Boehnke; Giuseppe Borsani; Giorgio Casari; Caroline S Fox; Thomas Freina; Andrew A Hicks; Fabio Marroni; Giovanni Parmigiani; Andrea Pastore; Cristian Pattaro; Arne Pfeufer; Fabrizio Ruggeri; Christine Schwienbacher; Daniel Taliun; Peter P Pramstaller; Francisco S Domingues; John R Thompson Journal: Genet Epidemiol Date: 2013-02 Impact factor: 2.135
Authors: Wang Baocheng; Yang Zhao; Wei Meng; Yipeng Han; Jiajia Wang; Feili Liu; Shengying Qin; Jie Ma Journal: Nagoya J Med Sci Date: 2017-02 Impact factor: 1.131