RAREMETALWORKER METHOD

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Brief Introduction

RAREMETALWORKER(RMW) generates single variant association results from score test, together with summary statistics and covariance matrices of the score statistics.

In the following sections, we will go through the methods behind RWM including statistic model, handling sample relatedness, and definitions of statistics in the output.

Modeling Relatedness

we use a variance component model to handle familial relationships. In a sample of n individuals, we model the observed phenotype vector ( ) as a sum of covariate effects (specified by a design matrix   and a vector of covariate effects  ), additive genetic effects (modeled in vector  ) and non-shared environmental effects (modeled in vector ε). Thus the null model is:

 

We assume that genetic effects are normally distributed, with mean   and covariance   where the matrix   summarizes kinship coefficients between sampled individuals and   is a positive scalar describing the genetic contribution to the overall variance. We assume that non-shared environmental effects are normally distributed with mean   and covariance  , where   is the identity matrix.

To estimate  , we either use known pedigree structure to define   or else use the empirical estimator  , where   is the count of variants,   and   are the genotype vector and estimated allele frequency for the   variant, respectively. Each element in   encodes the minor allele count for one individual. Model parameters  ,   and  , are estimated using maximum likelihood and the efficient algorithm described in Lippert et. al. For convenience, let the estimated covariance matrix of   be  .

Single Variant Score Tests

Summary Statistics

Covariance Matrices

Chromosome X