Abstract

Abstract Saturated genetic marker maps are being used to map individual genes affecting quantitative traits. Controlling the “experimentwise” type-I error severely lowers power to detect segregating loci. For preliminary genome scans, we propose controlling the “false discovery rate,” that is, the expected proportion of true null hypotheses within the class of rejected null hypotheses. Examples are given based on a granddaughter design analysis of dairy cattle and simulated backcross populations. By controlling the false discovery rate, power to detect true effects is not dependent on the number of tests performed. If no detectable genes are segregating, controlling the false discovery rate is equivalent to controlling the experimentwise error rate. If quantitative loci are segregating in the population, statistical power is increased as compared to control of the experimentwise type-I error. The difference between the two criteria increases with the increase in the number of false null hypotheses. The false discovery rate can be controlled at the same level whether the complete genome or only part of it has been analyzed. Additional levels of contrasts, such as multiple traits or pedigrees, can be handled without the necessity of a proportional decrease in the critical test probability.

Keywords

False discovery rateType I and type II errorsBiologyMultiple comparisons problemNull hypothesisStatistical powerGeneticsNull (SQL)Pedigree chartQuantitative trait locusGenomeStatistical hypothesis testingStatisticsPopulationFalse positive rateGeneMathematicsComputer scienceData mining

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Publication Info

Year
1998
Type
article
Volume
150
Issue
4
Pages
1699-1706
Citations
184
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Closed

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J.I. Weller, Jiu Zhou Song, D.W. Heyen et al. (1998). A New Approach to the Problem of Multiple Comparisons in the Genetic Dissection of Complex Traits. Genetics , 150 (4) , 1699-1706. https://doi.org/10.1093/genetics/150.4.1699

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DOI
10.1093/genetics/150.4.1699