Deciphering transcription factors and their corresponding regulatory elements during inhibitory interneuron differentiation using deep neural networks

Rawan Alatawneh, Yahel Salomon, Reut Eshel, Yaron Orenstein, Ramon Y. Birnbaum

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Abstract

During neurogenesis, the generation and differentiation of neuronal progenitors into inhibitory gamma-aminobutyric acid-containing interneurons is dependent on the combinatorial activity of transcription factors (TFs) and their corresponding regulatory elements (REs). However, the roles of neuronal TFs and their target REs in inhibitory interneuron progenitors are not fully elucidated. Here, we developed a deep-learning-based framework to identify enriched TF motifs in gene REs (eMotif-RE), such as poised/repressed enhancers and putative silencers. Using epigenetic datasets (e.g., ATAC-seq and H3K27ac/me3 ChIP-seq) from cultured interneuron-like progenitors, we distinguished between active enhancer sequences (open chromatin with H3K27ac) and non-active enhancer sequences (open chromatin without H3K27ac). Using our eMotif-RE framework, we discovered enriched motifs of TFs such as ASCL1, SOX4, and SOX11 in the active enhancer set suggesting a cooperativity function for ASCL1 and SOX4/11 in active enhancers of neuronal progenitors. In addition, we found enriched ZEB1 and CTCF motifs in the non-active set. Using an in vivo enhancer assay, we showed that most of the tested putative REs from the non-active enhancer set have no enhancer activity. Two of the eight REs (25%) showed function as poised enhancers in the neuronal system. Moreover, mutated REs for ZEB1 and CTCF motifs increased their in vivo activity as enhancers indicating a repressive effect of ZEB1 and CTCF on these REs that likely function as repressed enhancers or silencers. Overall, our work integrates a novel framework based on deep learning together with a functional assay that elucidated novel functions of TFs and their corresponding REs. Our approach can be applied to better understand gene regulation not only in inhibitory interneuron differentiation but in other tissue and cell types.

Original languageEnglish
Article number1034604
JournalFrontiers in Cell and Developmental Biology
Volume11
DOIs
StatePublished - 2023

Bibliographical note

Publisher Copyright:
Copyright © 2023 Alatawneh, Salomon, Eshel, Orenstein and Birnbaum.

Funding

This research was supported by the CURE epilepsy and the Israeli ministry of technology and space (project 878251) to RYB; The Israel Science foundation (grant no. 358/21) to YO; and the multidisciplinary research funds of the Ben-Gurion University of the Negev to YO and RYB.

FundersFunder number
CURE Childhood Cancer
Ministry of Science, Technology and Space878251
Israel Science Foundation358/21
Ben-Gurion University of the Negev

    Keywords

    • convolution neuronal networks
    • deep-learning
    • inhibitory interneuron progenitors
    • non-active enhancers
    • predicted TF motifs
    • repressed enhancers

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