ILoReg

github.com/elolab/iloreg
Stale5updated 4 years ago
R
GPL-3.0

ILoReg is a tool for identification of cell populations from scRNA-seq data. In particular, ILoReg is useful for finding cell populations with subtle transcriptomic differences. The method utilizes a self-supervised learning method, called Iteratitive Clustering Projection (ICP), to find cluster probabilities, which are used in noise reduction prior to PCA and the subsequent hierarchical clustering and t-SNE steps. Additionally, functions for differential expression analysis to find gene markers for the populations and gene expression visualization are provided.

Sourced from

  • GitHubgithub.com/elolab/iloreg
  • BioconductorILoReg

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