Genome-wide cis-decoding for expression designing in tomato using cistrome data and explainable deep learning
Source: NCBI BioProject (ID PRJDB12795)

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Project name: Solanum lycopersicum
Description: In the evolutionary paths of plants, variations of the cis-regulatory elements (CREs) resulting in expression diversification have played a central role in driving the establishment of lineage-specific traits. We used cistrome datasets and explainable convolutional neural network (CNN) frameworks to predict genome-wide expression patterns in tomato fruits from the DNA sequences in gene regulatory regions. This cis-decoding framework will not only contribute to understanding the regulatory networks derived from CREs and transcription factor interactions, but also provide a flexible way of designing alleles with optimized expression. This project includes six cistrome datasets of tomato transcription factors potentially involving fruit ripening processes.
Data type: Other
Sample scope: Multiisolate
Organization: Graduate School of Environmental and Life Science, Okayama University
Release date: 2022-04-01
Last updated: 2021-12-26
Statistics: 7 samples; 7 experiments; 7 runs