ANGSD: Analysis of next generation Sequencing Data
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Allele Frequencies: Difference between revisions
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<div class="keywords"> -domaf,-domaf,-domaf,-domaf,-domaf, domaf, domaf, domaf, domaf, domaf, domaf, dopost, SNP_pval </div> | |||
The allele frequency is the relative frequency of an allele for a site. This can be polarized according to the major/minor, reference/non-refernce or ancestral/derived. .Therefore the choice of allele frequency estimator is closely related to choosing which alleles are segregating (see [[Inferring_Major_and_Minor_alleles]]). | The allele frequency is the relative frequency of an allele for a site. This can be polarized according to the major/minor, reference/non-refernce or ancestral/derived. .Therefore the choice of allele frequency estimator is closely related to choosing which alleles are segregating (see [[Inferring_Major_and_Minor_alleles]]). | ||
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<pre> | <pre> | ||
./angsd -doMaf | |||
./angsd -doMaf | abcFreq.cpp: | ||
-doMaf 0 (Calculate persite frequencies '.mafs.gz') | -doMaf 0 (Calculate persite frequencies '.mafs.gz') | ||
1: Frequency (fixed major and minor) | 1: Frequency (fixed major and minor) | ||
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1: Using frequency as prior | 1: Using frequency as prior | ||
2: Using uniform prior | 2: Using uniform prior | ||
3: Using SFS as prior (still in development) | |||
4: Using reference panel as prior (still in development), requires a site file with chr pos major minor af ac an | |||
Filters: | Filters: | ||
-minMaf | -minMaf -1.000000 (Remove sites with MAF below) | ||
-SNP_pval | -SNP_pval 0.317311 (Remove sites with a pvalue larger) | ||
-rmSNPs 0 (Remove infered SNPs instead of keeping them (pval > SNP_pval) | |||
-rmTriallelic 0.000000 (Remove sites with a pvalue lower) | |||
-forceMaf 0 (Write .mafs file when running -doAsso (by default does not output .mafs file with -doAsso)) | |||
-skipMissing 1 (Set post to 0.33 if missing (do not use freq as prior)) | |||
Extras: | Extras: | ||
-ref (null) (Filename for fasta reference) | -ref (null) (Filename for fasta reference) | ||
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-beagleProb 0 (Dump beagle style postprobs) | -beagleProb 0 (Dump beagle style postprobs) | ||
-indFname (null) (file containing individual inbreedcoeficients) | -indFname (null) (file containing individual inbreedcoeficients) | ||
-underFlowProtect 0 (file containing individual inbreedcoeficients) | |||
NB These frequency estimators requires major/minor -doMajorMinor | NB These frequency estimators requires major/minor -doMajorMinor | ||
</pre> | </pre> | ||
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1: Known major, and Known minor. Here both the major and minor allele is assumed to be known (inferred or given by user). The allele frequency is the obtained using based on the genotype likelihoods. The allele frequency estimator from genotype likelihoods are from this [[suYeon | publication]] but using the EM algorithm and is briefly described [[SYKmaf|here]]. | 1: Known major, and Known minor. Here both the major and minor allele is assumed to be known (inferred or given by user). The allele frequency is the obtained using based on the genotype likelihoods. The allele frequency estimator from genotype likelihoods are from this [[suYeon | publication]] but using the EM algorithm and is briefly described [[SYKmaf|here]]. | ||
2: Known major, Unknown minor. Here the major allele is assumed to be known (inferred or given by user) however the minor allele is not determined. Instead we sum over the 3 possible minor alleles weighted by their probabilities. The allele frequency estimator from genotype likelihoods are from this [[suYeon | publication]] but using the EM algorithm. | 2: Known major, Unknown minor. Here the major allele is assumed to be known (inferred or given by user) however the minor allele is not determined. Instead we sum over the 3 possible minor alleles weighted by their probabilities. The allele frequency estimator from genotype likelihoods are from this [[suYeon | publication]] but using the EM algorithm and is briefly described [[SYKmaf|here]]. | ||
. | |||
4: frequency based on genotype posterior probabilities. If genotype probabilities are used as input to ANGSD the allele frequency is estimated directly on these by [[postFreq|summing over the probabitlies]]. | 4: frequency based on genotype posterior probabilities. If genotype probabilities are used as input to ANGSD the allele frequency is estimated directly on these by [[postFreq|summing over the probabitlies]]. | ||
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Multiple estimators can be used simultaniusly be summing up the above numbers. Thus -doMaf 7 (1+2+4) will use the first three estimators. If the allele frequencies are estimated from the genotype likelihoods then you need to infer the major and minor allele (-doMajorMinor) | Multiple estimators can be used simultaniusly be summing up the above numbers. Thus -doMaf 7 (1+2+4) will use the first three estimators. If the allele frequencies are estimated from the genotype likelihoods then you need to infer the major and minor allele (-doMajorMinor) | ||
;NB using -doMaf 4 is only supported if the posteriors are supplied as external files. Since the estimation of genotype posteriors in itself requires a maf estimator. | |||
=Example= | =Example= | ||
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<pre> | <pre> | ||
./angsd -out out -doMajorMinor 1 -doMaf 3 -bam bam.filelist -GL | ./angsd -out out -doMajorMinor 1 -doMaf 3 -bam bam.filelist -GL 2 | ||
</pre> | </pre> | ||
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=Output data= | =Output data= | ||
==.mafs== | ==.mafs.gz== | ||
<pre> | <pre> | ||
chromo position major minor ref knownEM unknownEM nInd | chromo position major minor ref knownEM unknownEM nInd | ||
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</pre> | </pre> | ||
;chromo | |||
chromosome name | |||
;position | |||
position | |||
;major | |||
major allele | |||
;minor | |||
minor allele | |||
;knownEM | |||
frequency using -doMaf 1 | |||
;unknownEM | |||
frequency using -doMaf 2 | |||
;phat | |||
frequency using -doMaf 8 | |||
;nInd | |||
is the number of individuals with data | |||
;pK-EM | |||
p-value for the frequency of (known) minor allele (-doSNPStat 1 -doMaf 1) | |||
;pu-EM | |||
p-value for the frequency of (unknown) minor allele (-doSNPStat 1 -doMaf 2) |
Latest revision as of 11:16, 8 June 2023
The allele frequency is the relative frequency of an allele for a site. This can be polarized according to the major/minor, reference/non-refernce or ancestral/derived. .Therefore the choice of allele frequency estimator is closely related to choosing which alleles are segregating (see Inferring_Major_and_Minor_alleles).
We allow for frequency estimation from different input data:
- Genotype Likelihoods
- Genotype posterior probabilities
- Counts of bases
The allele frequency estimator from genotype likelihoods are from this publication, and the base counts method is from this publication.
For the case of the genotype likelihood based methods we allow for deviations from Hardy-Weinberg, namely we allow for users to supply a file containing inbreeding coefficients for each individual.
Brief Overview
./angsd -doMaf abcFreq.cpp: -doMaf 0 (Calculate persite frequencies '.mafs.gz') 1: Frequency (fixed major and minor) 2: Frequency (fixed major unknown minor) 4: Frequency from genotype probabilities 8: AlleleCounts based method (known major minor) NB. Filedumping is supressed if value is negative -doPost 0 (Calculate posterior prob 3xgprob) 1: Using frequency as prior 2: Using uniform prior 3: Using SFS as prior (still in development) 4: Using reference panel as prior (still in development), requires a site file with chr pos major minor af ac an Filters: -minMaf -1.000000 (Remove sites with MAF below) -SNP_pval 0.317311 (Remove sites with a pvalue larger) -rmSNPs 0 (Remove infered SNPs instead of keeping them (pval > SNP_pval) -rmTriallelic 0.000000 (Remove sites with a pvalue lower) -forceMaf 0 (Write .mafs file when running -doAsso (by default does not output .mafs file with -doAsso)) -skipMissing 1 (Set post to 0.33 if missing (do not use freq as prior)) Extras: -ref (null) (Filename for fasta reference) -anc (null) (Filename for fasta ancestral) -eps 0.001000 [Only used for -doMaf &8] -beagleProb 0 (Dump beagle style postprobs) -indFname (null) (file containing individual inbreedcoeficients) -underFlowProtect 0 (file containing individual inbreedcoeficients) NB These frequency estimators requires major/minor -doMajorMinor
Allele Frequency estimation
The major and minor allele is first inferred from the data or given by the user (see Inferring_Major_and_Minor_alleles). This includes information from both major and minor allele, a reference genome (for major) or an ancestral genome.
- -doMaf [int]
1: Known major, and Known minor. Here both the major and minor allele is assumed to be known (inferred or given by user). The allele frequency is the obtained using based on the genotype likelihoods. The allele frequency estimator from genotype likelihoods are from this publication but using the EM algorithm and is briefly described here.
2: Known major, Unknown minor. Here the major allele is assumed to be known (inferred or given by user) however the minor allele is not determined. Instead we sum over the 3 possible minor alleles weighted by their probabilities. The allele frequency estimator from genotype likelihoods are from this publication but using the EM algorithm and is briefly described here. .
4: frequency based on genotype posterior probabilities. If genotype probabilities are used as input to ANGSD the allele frequency is estimated directly on these by summing over the probabitlies.
8: frequency based on base counts. This method does not rely on genotype likelihood or probabilities but instead infers the allele frequency directly on the base counts. The base counts method is from this publication.
Multiple estimators can be used simultaniusly be summing up the above numbers. Thus -doMaf 7 (1+2+4) will use the first three estimators. If the allele frequencies are estimated from the genotype likelihoods then you need to infer the major and minor allele (-doMajorMinor)
- NB using -doMaf 4 is only supported if the posteriors are supplied as external files. Since the estimation of genotype posteriors in itself requires a maf estimator.
Example
From genotype likelihood
Example for estimating the allele frequencies both while assuming known major and minor allele but also while taking the uncertaincy of the minor allele inference into account. The inference of the major and minor allele is done directly from the genotype likelihood
./angsd -out out -doMajorMinor 1 -doMaf 3 -bam bam.filelist -GL 2
From genotype probabilities
Example of the use of a genotype probability file for example from the output from beagle.
./angsd -out out -doMaf 4 -beagle beagle.file.gz
Estimator from base counts
The allele frequencies can be infered directy from the sequencing data citation. This works by using "counts" of alleles, and should be invoked like
./angsd -out out -doMajorMinor 2 -doMaf 8 -bam bam.filelist -doCounts 1
Output data
.mafs.gz
chromo position major minor ref knownEM unknownEM nInd 21 9719788 T A 0.000001 -0.000012 3 21 9719789 G A 0.000000 -0.000001 3 21 9719790 A C 0.000000 -0.000004 3 21 9719791 G A 0.000000 -0.000001 3 21 9719792 G A 0.000000 -0.000002 3 21 9719793 G T 0.498277 41.932766 3 21 9719794 T A 0.000000 -0.000001 3 21 9719795 T A 0.000000 -0.000001 3
- chromo
chromosome name
- position
position
- major
major allele
- minor
minor allele
- knownEM
frequency using -doMaf 1
- unknownEM
frequency using -doMaf 2
- phat
frequency using -doMaf 8
- nInd
is the number of individuals with data
- pK-EM
p-value for the frequency of (known) minor allele (-doSNPStat 1 -doMaf 1)
- pu-EM
p-value for the frequency of (unknown) minor allele (-doSNPStat 1 -doMaf 2)