Literature DB >> 20959861

A general method for controlling the genome-wide type I error rate in linkage and association mapping experiments in plants.

B U Müller1, B Stich, H-P Piepho.   

Abstract

Control of the genome-wide type I error rate (GWER) is an important issue in association mapping and linkage mapping experiments. For the latter, different approaches, such as permutation procedures or Bonferroni correction, were proposed. The permutation test, however, cannot account for population structure present in most association mapping populations. This can lead to false positive associations. The Bonferroni correction is applicable, but usually on the conservative side, because correlation of tests cannot be exploited. Therefore, a new approach is proposed, which controls the genome-wide error rate, while accounting for population structure. This approach is based on a simulation procedure that is equally applicable in a linkage and an association-mapping context. Using the parameter settings of three real data sets, it is shown that the procedure provides control of the GWER and the generalized genome-wide type I error rate (GWER(k)).

Mesh:

Year:  2010        PMID: 20959861      PMCID: PMC3186238          DOI: 10.1038/hdy.2010.125

Source DB:  PubMed          Journal:  Heredity (Edinb)        ISSN: 0018-067X            Impact factor:   3.821


  28 in total

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5.  Controlling type 1 error rates in genome-wide association studies in plants.

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6.  Response to 'controlling type 1 error rates in genome-wide association studies in plants' by Andrew W George.

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