RAREMETAL METHOD

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INTRODUCTION

The key idea behind meta-analysis with RAREMETAL is that various gene-level test statistics can be reconstructed from single variant score statistics and that, when the linkage disequilibrium relationships between variants are known, the distribution of these gene-level statistics can be derived and used to evaluate signifi-cance. Single variant statistics are calculated using the Cochran-Mantel-Haenszel method. The main formulae are tabulated in the following:

KEY FORMULAE

NOTATIONS

We denote the following to describe our methods:

  is the score statistic for the   variant from the   study

  is the covariance of the score statistics between the   and the   variant from the   study

  and   are described in detail in RAREMETALWORKER method.

  is the vector of score statistics of rare variants in a gene from the   study.

  is the variance-covariance matrix of score statistics of rare variants in a gene from the   study, or  

  is the number of studies

  is the vector of weights for   rare variants in a gene.

SINGLE VARIANT META ANALYSIS

Single variant meta-analysis score statistic can be reconstructed from score statistics and their variances generate by each study, assuming that samples are unrelated across studies. Define meta-analysis score statistics as

 

and its variance

 

Then the score test statistics for the   variant   asymptotically follows standard normal distribution

 

BURDEN META ANALYSIS

Once single variant meta analysis statistics are constructed, burden test score statistic can be reconstructed from these

 

VT META ANALYSIS

SKAT META ANALYSIS

Formulae for RAREMETAL
Test Statistics Null Distribution Notation
Single Variant       
un-weighted Burden          
Weighted Burden      
VT           
SKAT