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Combinatorial gene control is the synergistic action of several transcriptional factors to regulate the expression of a single gene. The absence of one or more of these factors may lead to a significant difference in the level of gene expression or repression.
The expression of more than 30,000 genes is controlled by approximately 2000-3000 transcription factors. This is possible because a single transcription factor can recognize more than one regulatory sequence. The specificity in gene...
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Updated: Jun 6, 2025

Dissection of Enhancer Function Using Multiplex CRISPR-based Enhancer Interference in Cell Lines
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Mapping enhancer-gene regulatory interactions from single-cell data.

Maya U Sheth, Wei-Lin Qiu, X Rosa Ma

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    |November 28, 2024
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    Summary
    This summary is machine-generated.

    We developed scE2G, a novel machine learning model to predict enhancer-gene interactions using single-cell data. This tool accurately maps gene regulation and aids in understanding complex traits and diseases.

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    Area of Science:

    • Genomics
    • Computational Biology
    • Epigenetics

    Background:

    • Mapping enhancer-gene interactions is vital for understanding gene regulation and disease genetics.
    • Accurate prediction of these interactions from single-cell data remains a significant challenge.

    Purpose of the Study:

    • To introduce scE2G, a new family of classification models for predicting enhancer-gene regulatory interactions.
    • To leverage single-cell ATAC-seq and multiomic data for enhanced prediction accuracy.

    Main Methods:

    • Developed scE2G, a classification model trained on a large CRISPR perturbation dataset (>10,000 element-gene pairs).
    • Utilized features from single-cell ATAC-seq and multiomic RNA and ATAC-seq data.
    • Benchmarked scE2G against CRISPR perturbations, fine-mapped eQTLs, and GWAS variant-gene associations.

    Main Results:

    • scE2G demonstrated state-of-the-art performance in predicting enhancer-gene interactions across diverse cell types and perturbation categories.
    • Applied scE2G to map regulatory interactions in heterogeneous tissues.
    • Identified potential regulatory links between genes like INPP4B and IL15 and lymphocyte counts.

    Conclusions:

    • scE2G models provide a powerful tool for accurate enhancer-gene interaction mapping.
    • This approach facilitates the interpretation of noncoding variants associated with complex human traits.
    • The models enable the construction of regulatory maps across thousands of human cell types.