IgGeneUsage
github.com/snaketron/iggeneusageDetection of biases in the usage of immunoglobulin (Ig) genes is an important task in immune repertoire profiling. IgGeneUsage detects aberrant Ig gene usage between biological conditions using a probabilistic model which is analyzed computationally by Bayes inference. With this IgGeneUsage also avoids some common problems related to the current practice of null-hypothesis significance testing.
Sourced from
- Bioconductor — IgGeneUsage
- GitHub — github.com/snaketron/iggeneusage
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