FitHiC

https://bioconductor.org/packages/FitHiC

Fit-Hi-C is a tool for assigning statistical confidence estimates to intra-chromosomal contact maps produced by genome-wide genome architecture assays such as Hi-C.

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  • BioconductorFitHiC

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