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arxiv: 1409.2448 · v3 · pith:ONP55IVJnew · submitted 2014-09-08 · 🧬 q-bio.GN · stat.AP

Accurate Liability Estimation Improves Power in Ascertained Case Control Studies

classification 🧬 q-bio.GN stat.AP
keywords studiesascertainedassociationleapliabilitylmmsphenotypepower
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Linear mixed models (LMMs) have emerged as the method of choice for confounded genome-wide association studies. However, the performance of LMMs in non-randomly ascertained case-control studies deteriorates with increasing sample size. We propose a framework called LEAP (Liability Estimator As a Phenotype, https://github.com/omerwe/LEAP) that tests for association with estimated latent values corresponding to severity of phenotype, and demonstrate that this can lead to a substantial power increase.

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