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Title: CINS: Cell Interaction Network inference from Single cell expression data
Studies comparing single cell RNA-Seq (scRNA-Seq) data between conditions mainly focus on differences in the proportion of cell types or on differentially expressed genes. In many cases these differences are driven by changes in cell interactions which are challenging to infer without spatial information. To determine cell-cell interactions that differ between conditions we developed the Cell Interaction Network Inference (CINS) pipeline. CINS combines Bayesian network analysis with regression-based modeling to identify differential cell type interactions and the proteins that underlie them. We tested CINS on a disease case control and on an aging mouse dataset. In both cases CINS correctly identifies cell type interactions and the ligands involved in these interactions improving on prior methods suggested for cell interaction predictions. We performed additional mouse aging scRNA-Seq experiments which further support the interactions identified by CINS.  more » « less
Award ID(s):
2134998
NSF-PAR ID:
10388950
Author(s) / Creator(s):
; ; ; ; ; ; ; ; ;
Editor(s):
Hawrylycz, Michael
Date Published:
Journal Name:
PLOS Computational Biology
Volume:
18
Issue:
9
ISSN:
1553-7358
Page Range / eLocation ID:
e1010468
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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