A single gene may have multiple enhancers, but how they work in concert to regulate transcription is poorly understood. To analyze enhancer interactions throughout the genome, we developed a generalized linear modeling framework, GLiMMIRS, for interrogating enhancer effects from single-cell CRISPR experiments. We applied GLiMMIRS to a published dataset and tested for interactions between 46,166 enhancer pairs and corresponding genes, including 264 "high-confidence" enhancer pairs. We found that enhancer effects combine multiplicatively but with limited evidence for further interactions. Only 31 enhancer pairs exhibited significant interactions (false discovery rate <0.1), none of which came from the high-confidence set, and 20 were driven by outlier expression values. Additional analyses of a second CRISPR dataset and in silico enhancer perturbations with Enformer both support a multiplicative model of enhancer effects without interactions. Altogether, our results indicate that enhancer interactions are uncommon or have small effects that are difficult to detect.
Analysis of single-cell CRISPR perturbations indicates that enhancers predominantly act multiplicatively.
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作者:Zhou Jessica L, Guruvayurappan Karthik, Toneyan Shushan, Chen Hsiuyi V, Chen Aaron R, Koo Peter, McVicker Graham
| 期刊: | Cell Genomics | 影响因子: | 9.000 |
| 时间: | 2024 | 起止号: | 2024 Nov 13; 4(11):100672 |
| doi: | 10.1016/j.xgen.2024.100672 | ||
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