Table of Contents

Power for Quantitative Traits

Model

The key to power and sample size calculation for quantitative traits is on the comparison of quantitative trait values between groups. Consider a two-sample \(t\) test framework with unequal sample size, where one group of sample consists of wildtype (wt) haplotype, and the other group none-wildtype (nwt) haplotypes. The probability of falling into the nwt group is \[Pr(G=2) = 1 - \prod_i^M(1-p_i)\] The shift of the mean of quantitative trait value, \(\delta\), under our current modeling, is the expected effect size of the nwt group, which I calculate numerically using the algorithm described below:

INPUT

ITERATION

For each out of the total \(Q\) possible subset of locus combination

OUTPUT

Low-order approximation

The method described above is exact, but can be very slow for long genomic regions due to the huge number of possible subset of locus combination. A low-order approximation is used in this program to only consider a maximum of up to 2 or 3 loci in a genotype combination, ignoring the contributions from all other high order possibilities. For genes having variant sites smaller than 8, 3 order approximation is applied; for larger genes 2 order approximation is applied. \(Pr(Q_i|G=2)\) will be adjusted accordingly such that they still sum up to \(1\).

Power and Sample Size Calculation

Power and sample size estimations can be performed under a two-sample \(t\) test framework \[z_\beta = \frac{|\delta|}{\sqrt{\frac{1}{mp}+\frac{1}{m(1-p)}}}+z_{\alpha/2}\] Notice that “samples” in this setting means haplotypes and the final sample size should be \[N_{samples} = \frac{N_{haplotypes}}{2}\]

Example

Please find more details in this tutorial on analytic power calculation for quantitative traits.