Output files

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Default output files

General output files

lmt.log

General log file always generated. Provides information of the current state of operation.

Operation dependent output files

Solving the mixed model equation system

results.csv

The file contains the solutions for the mixed model equation system. The file has four columns:

  • factor name,
  • sub-factor name,
  • factor level id, and
  • solution.

Note that factor name s are derived according to the lmt factor naming convention, and sub-factor name s are user-defined and are extracted from the equation system. Further, the factor level id is the original as provided by the data, pedigree, etc. For variables undergoing polynomial expansions, e.g. sub-factor c in

 y=x*b+age(t(co(p(1,2))))*c+id*u(v(my_var(1)))

the sub-factor name will be expanded as well to sub-factor name_id , where "id" is the polynomial id. For the above example c would be expanded to c_1 and c_2 .

The file has as many records the system has equations. Fixed factor levels which have been omitted due to rank deficiencies are not printed.

PCG solver output files
so_conv.csv

Contains the iteration statistics with columns

  • iteration number
  • alpha
  • beta
  • $$||r_i M r_i||$$, where $$M$$ is the preconditioner matrix and $$r_i=Cx_i-b$$ for a system $$Cx=b$$
  • convergence criterion CD
  • convergence criterion CR
  • second per iteration

Variance component estimation using AI-REML-C

aic_conv.csv

Contains the iteration statistic with one parameter vector per iteration. The parameter vector contains the following elements:

  • iteration number
  • convergence criterion ng
  • convergence criterion cd
  • convergence criterion ll
  • log-likelihood
  • Newton over-relaxation parameter
  • number of Newton over-relaxation iterations
  • seconds for the last AI-REML iteration
<u.d. variance name>_sigma_UPDATE.csv

The file contains the column-wise upper-triangular elements of the respective $$\Sigma$$ matrix estimated in each round. The file contains as many rows as AI-REML-C iterations plus one. The row before the last contains the co-variance estimates at convergence. The last row contains the approximate standard errors of the parameter estimates. Estimates at convergence for a $$\Sigma$$ matrix being part of variance structure named g maybe read into R by

d<-fread("g_sigma_UPDATE.csv"))
n<-floor(sqrt(ncol(d)*2))
g<-matrix(0,n,n);g[upper.tri(g,diag=TRUE)]<-d[nrow(d)-1,];

Intermediate output files

Files from processing pedigrees

"u.d. pedigree name"_sorted.csv

File contains a 3(ordinary pedigree) or 4(probabilistic pedigree) column matrix containing the sorted and renumbered pedigree generated from the original pedigree.

"u.d. pedigree name"_crossref.csv

File contains a vector of original ids of individuals in "u.d. pedigree name"_sorted.csv. That is, the original id of individual #1 in "u.d. pedigree name"_sorted.csv is located in record 1 of this file, etc.

"u.d. pedigree name".bin

Block file in binary format containing for blocks:

  • a: real vector of diagonal elements of $$A$$
  • ai: real vector of diagonal elements of $$A^{-1}$$
  • m: real vector of mendelian sampling terms
  • pe: 3 column integer matrix of the sorted and renumbered pedigree underlying $$A$$

Requested output files

Files from processing pedigrees

Genetic group regression matrix

lmt can write the genetic group regression matrix of a pedigree containing phantom parents to a user-defined file. For the necessary key string see here.

A $$Q$$ matrix written to Q.coocsv format maybe read into R

dim<-scan("Q.coocsv",n=2,sep=",")
Q<-matrix(0,d[1],d[2])
dat<-fread("Q.coocsv",skip=1)
Q[cbind(d$V1,d$V2)]<-d$V3

Files from running AI-REML jobs

AI matrix and Gradient vector

Upon provision of the respective switch in the instruction file lmt write the AI matrix and gradient vector to files ai_ai.csv and ai_ja.csv , respectively. Both files contain as many records as AI-REML iterations. Each row of file ai_ai.csv contains the upper-triangular of the AI in column-major order. The AI matrix of say iteration 2 can be reconstructed by

d<-fread("ai_ai.csv"))
n<-floor(sqrt(ncol(d)*2))
ai<-matrix(0,n,n);ai[upper.tri(ai,diag=TRUE)]<-d[2,];