4.4 Article

MODIFYING THE CHI-SQUARE AND THE CMH TEST FOR POPULATION GENETIC INFERENCE: ADAPTING TO OVERDISPERSION

Journal

ANNALS OF APPLIED STATISTICS
Volume 14, Issue 1, Pages 202-220

Publisher

INST MATHEMATICAL STATISTICS
DOI: 10.1214/19-AOAS1301

Keywords

Chi-square test; CMH test; overdispersion; experimental evolution; evolve and resequence; genetic drift; pool sequencing

Funding

  1. Austrian Science Fund (FWF Doctoral Program Vienna Graduate School of Population Genetics) [DKW1225-B20]

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Evolve and resequence studies provide a popular approach to simulate evolution in the lab and explore its genetic basis. In this context, Pearson's chi-square test, Fisher's exact test as well as the Cochran-Mantel-Haenszel test are commonly used to infer genomic positions affected by selection from temporal changes in allele frequency. However, the null model associated with these tests does not match the null hypothesis of actual interest. Indeed, due to genetic drift and possibly other additional noise components such as pool sequencing, the null variance in the data can be substantially larger than accounted for by these common test statistics. This leads to p-values that are systematically too small and, therefore, a huge number of false positive results. Even, if the ranking rather than the actual p-values is of interest, a naive application of the mentioned tests will give misleading results, as the amount of overdispersion varies from locus to locus. We therefore propose adjusted statistics that take the overdispersion into account while keeping the formulas simple. This is particularly useful in genome-wide applications, where millions of SNPs can be handled with little computational effort. We then apply the adapted test statistics to real data from Drosophila and investigate how information from intermediate generations can be included when available. We also discuss further applications such as genome-wide association studies based on pool sequencing data and tests for local adaptation.

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