Composite interval mapping to identify quantitative trait loci for point-mass mixture phenotypes

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Abstract

Summary Increasingly researchers are conducting quantitative trait locus (QTL) mapping in metabolomics and proteomics studies. These data often are distributed as a point-mass mixture, consisting of a spike at zero in combination with continuous non-negative measurements. Composite interval mapping (CIM) is a common method used to map QTL that has been developed only for normally distributed or binary data. Here we propose a two-part CIM method for identifying QTLs when the phenotype is distributed as a point-mass mixture. We compare our new method with existing normal and binary CIM methods through an analysis of metabolomics data from Arabidopsis thaliana. We then conduct a simulation study to further understand the power and error rate of our two-part CIM method relative to normal and binary CIM methods. Our results show that the two-part CIM has greater power and a lower false positive rate than the other methods when a continuous phenotype is measured with many zero observations. Copyright © 2010 Cambridge University Press.

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APA

Taylor, S. L., & Pollard, K. S. (2010). Composite interval mapping to identify quantitative trait loci for point-mass mixture phenotypes. Genetics Research, 92(1), 39–53. https://doi.org/10.1017/S0016672310000042

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