Abstract
Renal proximal tubule epithelial cells have considerable intrinsic repair capacity following injury. However, a fraction of injured proximal tubule cells fails to undergo normal repair and assumes a proinflammatory and profibrotic phenotype that may promote fibrosis and chronic kidney disease. The healthy to failed repair change is marked by cell state-specific transcriptomic and epigenomic changes. Single nucleus joint RNA- and ATAC-seq sequencing offers an opportunity to study the gene regulatory networks underpinning these changes in order to identify key regulatory drivers. We develop a regularized regression approach to construct genome-wide parametric gene regulatory networks using multiomic datasets. We generate a single nucleus multiomic dataset from seven adult human kidney samples and apply our method to study drivers of a failed injury response associated with kidney disease. We demonstrate that our approach is a highly effective tool for predicting key cis- and trans-regulatory elements underpinning the healthy to failed repair transition and use it to identify NFAT5 as a driver of the maladaptive proximal tubule state.
Cite
CITATION STYLE
Ledru, N., Wilson, P. C., Muto, Y., Yoshimura, Y., Wu, H., Li, D., … Humphreys, B. D. (2024). Predicting proximal tubule failed repair drivers through regularized regression analysis of single cell multiomic sequencing. Nature Communications, 15(1). https://doi.org/10.1038/s41467-024-45706-0
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.