GeneExpressionSignature
github.com/yiluheihei/geneexpressionsignatureThis package gives the implementations of the gene expression signature and its distance to each. Gene expression signature is represented as a list of genes whose expression is correlated with a biological state of interest. And its distance is defined using a nonparametric, rank-based pattern-matching strategy based on the Kolmogorov-Smirnov statistic. Gene expression signature and its distance can be used to detect similarities among the signatures of drugs, diseases, and biological states of interest.
Sourced from
- GitHub — github.com/yiluheihei/geneexpressionsignature
- Bioconductor — GeneExpressionSignature
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