2024
DOI: 10.1101/2024.06.14.599076
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Iterative deep learning-design of human enhancers exploits condensed sequence grammar to achieve cell type-specificity

Christopher Yin,
Sebastian Castillo Hair,
Gun Woo Byeon
et al.

Abstract: SummaryAn important and largely unsolved problem in synthetic biology is how to target gene expression to specific cell types. Here, we apply iterative deep learning to design synthetic enhancers with strong differential activity between two human cell lines. We initially train models on published datasets of enhancer activity and chromatin accessibility and use them to guide the design of synthetic enhancers that maximize predicted specificity. We experimentally validate these sequences, use the measurements … Show more

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