dictys
Gene network reconstructor
Reconstructs dynamic gene regulatory networks from single-cell RNA and ATAC-seq data to understand cell-type specific transcription factor regulation.
Context specific and dynamic gene regulatory network reconstruction and analysis
111 stars
5 watching
14 forks
Language: Python
last commit: 6 months ago
Linked from 1 awesome list
dynamic-networkgene-regulatory-networknetwork-analysisnetwork-inferencenetwork-visualizationsingle-cell-analysissingle-cell-multiomicssingle-cell-network
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