Call variants on a haploid genome with the UnifiedGenotyper, producing a raw (unfiltered) VCF.
If you do not specify these parameters yourself, the program will use default values. However we recommend that you set them explicitly because it will help you understand how the results are bounded and how you can modify the program's behavior.
In its basic use, this is the ploidy (number of chromosomes) per sample. By default it is set to 2, to process diploid organisms' genomes, but it can be set to any other desired value, starting at 1 for haploid organisms, and up for polyploids. This argument can also be used to handle pooled data. For that purpose, you'll need to set
Number of samples in each pool * Sample Ploidy. There is no fixed upper limit, but keep in mind that high-level ploidy will increase processing times since the calculations involved are more complex. For full details on how to process pooled data, see Eran et al. (in preparation).
This is the model that the program will use to calculate the genotype likelihoods. By default, it is set to
SNP, but it can also be set to
BOTH. If set to
BOTH, both SNPs and Indels will be called in the same run and be output to the same variants file.
This is the minimum confidence threshold (phred-scaled) at which the program should emit sites that appear to be possibly variant.
This is the minimum confidence threshold (phred-scaled) at which the program should emit variant sites as called. If a site's associated genotype has a confidence score lower than the calling threshold, the program will emit the site as filtered and will annotate it as LowQual. This threshold separates high confidence calls from low confidence calls.
The terms called and filtered are tricky because they can mean different things depending on context. In ordinary language, people often say a site was called if it was emitted as variant. But in the GATK's technical language, saying a site was called means that that site passed the confidence threshold test. For filtered, it's even more confusing, because in ordinary language, when people say that sites were filtered, they usually mean that those sites successfully passed a filtering test. However, in the GATK's technical language, the same phrase (saying that sites were filtered) means that those sites failed the filtering test. In effect, it means that those would be filtered out if the filter was used to actually remove low-confidence calls from the callset, instead of just tagging them. In both cases, both usages are valid depending on the point of view of the person who is reporting the results. So it's always important to check what is the context when interpreting results that include these terms.
Run the following GATK command:
java -jar GenomeAnalysisTK.jar \ -T UnifiedGenotyper \ -R haploid_reference.fa \ -I haploid_reads.bam \ -L 20 \ -ploidy 1 --glm BOTH \ --stand\_call\_conf 30 \ --stand\_emit\_conf 10 \ -o raw_haploid_variants.vcf
This creates a VCF file called
raw_haploid_variants.vcf, containing all the sites that the UnifiedGenotyper evaluated to be potentially variant.
Although you now have a nice fresh set of variant calls, the variant discovery stage is not over. The distinctions made by the caller itself between low-confidence calls and the rest is very primitive, and should not be taken as a definitive guide for filtering. The GATK callers are designed to be very lenient in calling variants, so it is extremely important to apply one of the recommended filtering methods (variant recalibration or hard-filtering), in order to move on to downstream analyses with the highest-quality call set possible.
I am using GATK UnifiedGenotyper 2.3-9 for a set of pooled samples. I am uncertain about the order of PL values in polyploid samples, as it wasn't defined in VCF v4.1 specifications. The ordering formula described in VCF v4.1: F(j/k) = (k*(k+1)/2)+j only applies to diploid case. May I know how GATK extended the ordering formula to handle polypoid samples?
Example VCF line: GT:AD:DP:GQ:MLPSAC:MLPSAF:PL 0/0/1/1/1/1/1/1:71,177:249:17:6:0.750:5685,995,510,254,101,17,0,92,32767
Thank you very much!
Best regards, Allen
Hello, I have 454 reads of loci on polyploid individuals. I am able to produce assemblies containing the different copies of one locus per individual. But I want to extract the reads corresponding to each copies, to then be able to produce phylogenies. Does the GATK can do something like this?