ANGSD: Analysis of next generation Sequencing Data
Latest tar.gz version is (0.938/0.939 on github), see Change_log for changes, and download it here.
SFS Estimation
This method will estimate the site frequency spectrum, the method is described in Nielsen2012.
This is a 2 step procedure first generate a ".sfs" file, followed by an optimization of the .sfs file which will estimate the Site frequency spectrum.
For the optimization we have implemented 2 different approaches both found in the misc subdir of the root subdir.This is shown in the diagram below.
NB the ancestral state needs to be supplied for this method, the information on this page relates to versions 0.551 or higher.
<classdiagram type="dir:LR">
[sequence data{bg:orange}]->GL[genotype likelihoods|SAMtools;GATK;SOAPsnp;Kim et.al]
[genotype likelihoods|SAMtools;GATK;SOAPsnp;Kim et.al]->realSFS[.sfs file{bg:blue}] [.sfs file{bg:blue}]->optimize('emOptim2')[.sfs.ml file{bg:red}]
</classdiagram>
Brief Overview
-------------- angsd_realSFS.cpp: -realSFS 0 1: perform multisample GL estimation 2: use an inbreeding version -doThetas 0 (calculate thetas) -underFlowProtect 0 -fold 0 (deprecated) -anc (null) (ancestral fasta) -noTrans 0 (remove transitions) -doSFS 0 (Using genotype posteriors (untested)) -pest (null) (prior SFS)
options
- -realSFS 1
- an sfs file will be generated.
- -realSFS 2
- (version above 0.503) Taking into account perIndividual inbreeding coefficients. This is the work of Filipe G. Vieira
- -realSFS 4
- snpcalling (not implemented, in this angsd)
- -realSFS 8
- genotypecalling (not implemented, int this angsd)
For the inbreeding version you need to supply a file containing all the inbreeding coefficients. -indF
- -underFlowProtect [INT]
a very basic underflowprotection
Example
A full example is shown below, here we use GATK genotype likelihoods and hg19.fa as the ancestral. The emOptim2 can be found in the misc subfolder.
#first generate .sfs file ./angsd -bam smallBam.filelist -realSFS 1 -out small -anc hg19.fa -GL 2 [options] #now try the EM optimization with 4 threads ./emOptim2 small.sfs 20 -maxIter 100 -P 4 >small.sfs.em.ml
We always recommend that you filter out the bad qscore bases and meaningless mapQ reads. eg -minMapQ 1 -minQ 20 NB
If you have say 10 diploid samples, then you should do -nChr 20 if you have say 12 diploid samples, then you should do -nChr 24.
The outpiles are then called small.em.ml. This will be the SFS in logscale. This is to be interpreted as:
column1 := probabilty of sampling zero derived alleles
column2 := probabilty of sampling one derived allele
column3 := probabilty of sampling two derived allele
column4 := probabilty of sampling three derived allele
etc
NB
The generation of the .sfs file is done on a persite basis, whereas the optimization requires information for a region of the genome. The optimization will therefore use large amounts of memory. The program defaults to 50megabase regions, and will loop over the genome using 50 megebase chunks. You can increase this adding -nSites 500000000. Which will then use 500megabase regions.