ClustIRR
github.com/snaketron/clustirrClustIRR analyzes repertoires of B- and T-cell receptors. It starts by identifying communities of immune receptors with similar specificities, based on the sequences of their complementarity-determining regions (CDRs). Next, it employs a Bayesian probabilistic models to quantify differential community occupancy (DCO) between repertoires, allowing the identification of expanding or contracting communities in response to e.g. infection or cancer treatment.
Sourced from
- Bioconductor — ClustIRR
- GitHub — github.com/snaketron/clustirr
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