Litcius/Paper detail

Seven myths of how transcription factors read the cis-regulatory code

Julia Zeitlinger

2020Current Opinion in Systems Biology122 citationsDOIOpen Access PDF

Abstract

Genomics data are now being generated at large quantities, of exquisite high resolution and from single cells. They offer a unique opportunity to develop powerful machine learning algorithms, including neural networks, to uncover the rules of the cis-regulatory code. However, current modeling assumptions are often not based on state-of-the-art knowledge of the cis-regulatory code from transcription, developmental genetics, imaging and structural studies. Here I aim to fill this gap by giving a brief historical overview of the field, describing common misconceptions and providing knowledge that might help to guide computational approaches. I will describe the principles and mechanisms involved in the combinatorial requirement of transcription factor binding motifs for enhancer activity, including the role of chromatin accessibility, repressors and low-affinity motifs in the cis-regulatory code. Deciphering the cis-regulatory code would unlock an enormous amount of regulatory information in the genome and would allow us to locate cis-regulatory genetic variants involved in development and disease.

Topics & Concepts

EnhancerComputational biologyChromatinComputer scienceTranscription factorBiologyGeneticsGeneGenomics and Chromatin DynamicsRNA Research and SplicingPlant Molecular Biology Research