Last updated: 2021-08-20

Checks: 2 0

Knit directory: SCENIC_pipeline/

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File Version Author Date Message
Rmd 728c832 lily123920 2021-08-18 diyici
html 728c832 lily123920 2021-08-18 diyici
Rmd 8e02d7f lily123920 2021-08-18 Start workflowr project.

Welcome to my research website.

该流程参考自WGCNA官网。

  1. SCENIC工作流程概览.

  2. 0.数据和分析环境准备.

  3. 1.基于GENIE3识别潜在的TF-targets网络.

  4. 2.基于motif的直接TF-targets确定.

  5. 3.细胞的regulon活性评分.

  6. 4.细胞聚类及数据探索.

  7. 相关概念集合.