Targeted design of synthetic enhancers for selected tissues in the Drosophila embryo

Bernardo P. de Almeida(Research Institute of Molecular Pathology), Christoph Schaub(European Molecular Biology Laboratory), Michaela Pagani(Research Institute of Molecular Pathology), Stefano Secchia(European Molecular Biology Laboratory), Eileen E. M. Furlong(European Molecular Biology Laboratory), Alexander Stark(Research Institute of Molecular Pathology)
Nature
December 12, 2023
Cited by 90Open Access
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Abstract

. However, the targeted de novo design of enhancers with tissue-specific activities has remained challenging. Here we combine deep learning and transfer learning to design tissue-specific enhancers for five tissues in the Drosophila melanogaster embryo: the central nervous system, epidermis, gut, muscle and brain. We first train convolutional neural networks using genome-wide single-cell assay for transposase-accessible chromatin with sequencing (ATAC-seq) datasets and then fine-tune the convolutional neural networks with smaller-scale data from in vivo enhancer activity assays, yielding models with 13% to 76% positive predictive value according to cross-validation. We designed and experimentally assessed 40 synthetic enhancers (8 per tissue) in vivo, of which 31 (78%) were active and 27 (68%) functioned in the target tissue (100% for central nervous system and muscle). The strategy of combining genome-wide and small-scale functional datasets by transfer learning is generally applicable and should enable the design of tissue-, cell type- and cell state-specific enhancers in any system.


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