推论
熵(时间箭头)
效力
计算生物学
细胞
基因调控网络
计算机科学
最大熵原理
细胞分化
生物
人工智能
基因
基因表达
遗传学
体外
物理
量子力学
作者
Ruiqing Zheng,Ziwei Xu,Yanping Zeng,Edwin Wang,Min Li
出处
期刊:Methods
[Elsevier]
日期:2023-11-10
卷期号:220: 90-97
被引量:1
标识
DOI:10.1016/j.ymeth.2023.11.006
摘要
For a given single cell RNA-seq data, it is critical to pinpoint key cellular stages and quantify cells’ differentiation potency along a differentiation pathway in a time course manner. Currently, several methods based on the entropy of gene functions or PPI network have been proposed to solve the problem. Nevertheless, these methods still suffer from the inaccurate interactions and noises originating from scRNA-seq profile. In this study, we proposed a cell potency inference method based on cell-specific network entropy, called SPIDE. SPIDE introduces the local weighted cell-specific network for each cell to maintain cell heterogeneity and calculates the entropy by incorporating gene expression with network structure. In this study, we compared three cell entropy estimation models on eight scRNA-Seq datasets. The results show that SPIDE obtains consistent conclusions with real cell differentiation potency on most datasets. Moreover, SPIDE accurately recovers the continuous changes of potency during cell differentiation and significantly correlates with the stemness of tumor cells in Colorectal cancer. To conclude, our study provides a universal and accurate framework for cell entropy estimation, which deepens our understanding of cell differentiation, the development of diseases and other related biological research.
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