CaMutQC
github.com/likelet/camutqcCaMutQC is able to filter false positive mutations generated due to technical issues, as well as to select candidate cancer mutations through a series of well-structured functions by labeling mutations with various flags. And a detailed and vivid filter report will be offered after completing a whole filtration or selection section. Also, CaMutQC integrates serveral methods and gene panels for Tumor Mutational Burden (TMB) estimation.
Sourced from
- GitHub — github.com/likelet/camutqc
- Bioconductor — CaMutQC
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